SlideShare a Scribd company logo
1 of 39
Download to read offline
Hyperspectral Remote Sensing in
Mineral Mapping
Presented by
J S S Vani
1
Contents:
• Introduction
• Hyperspectral Image Analysis for Mineral Mapping
• Literature review
• Case Study 1
• Case Study 2
• Summary
• References
2
Introduction:
• Classical mineral mapping utilize physical characteristics of rocks such
as mineralogy, weathering characteristics, geochemical signatures, to
determine the nature and distribution of geologic units.
• Subtle mineralogical differences, often important for making
distinctions between rock formations, are difficult to map.
• Hyperspectral remote sensing provides a unique means of remotely
mapping mineralogy.
3
Co ti ued…
• The asi o ept is all su sta es depe di g o their ole ular
composition scatter electromagnetic energy at specific wavelengths
i disti tive patter
• Minerals and rocks display certain analytic spectral characteristics
throughout the electromagnetic spectrum.
• These spectral characteristics allow their chemical composition and
relative abundance to be mapped.
4
Hyperspectral image analysis for
mineral mapping:
• A hyperspectral image is an image cube with spatial information in
X,Y and spectral in Z direction.
• A radiant energy value is recorded for each data point(pixel) in the
image for every wavelength sampled.
• As a result, data volume to be processed is generally huge and
computationally complex.
• In order to solve this problem, several approaches have been
developed for image processing and analysis.
5
6
Fig 1: Concept of Hyperspectral imagery
• The processing of hyperspectral imagery involves various
steps like:
– Data reduction techniques
• Radiometric corrections using algorithms like FLAASH, ARTEM,
HATCH etc.
• Minimum Noise Fraction (MNF)
• Pixel Purity Index (PPI)
– Image classification techniques
• Spectral Angle Mapper (SAM)
• n-Dimensional Visualizer
• Mixture Tuned Matched Filtering(MTMF)
7
• Minimum noise fraction transformation:
– Used to segregate noise in the data, and to reduce the computational
requirements for subsequent processing.
– This is a two step process:
• The first step results in transformed data in which the noise has unit
variance and no band-to-band correlations.
• The second step is a standard Principal Components Analysis.
• Pixel Purity Index:
– It is a ea s of fi di g the ost spe trall pure or e tre e pi els.
– A PPI image is created where each pixel value corresponds to the number
of times that pixel was recorded as extreme.
– The PPI is run on an MNF transform result, excluding the noise bands.
– The results of the PPI are used as input into n-D Visualiser.
8
• N-Dimensional visualiser:
– Used to further refine the selection of the most spectrally pure end
members from PPI result.
– Extreme pixels which ultimately correspond to end members can be
determined by rotating the scatter plot in n-dimensions.
– The selected classes will be exported to Region of Interest(ROI) and used
as input for further spectral processing.
• Spectral angle Mappper:
– It determines the similarity between
a pixel and each of the reference
spectra based on the calculation of
the spe tral a gle between them.
– Smaller angle means a closer match
between the two spectra and the
pixel is identified as the fixed class
Fig 2 Showing the SAM algorithm
9
• Mixture Tuned Matched Filtering:
– It is a special classification and unmixing technique for
identification of end members.
– Is a hybrid method based on the combination of the matched
filter method (no requirement to know all the endmembers)
and linear mixture theory.
10
Literature Review:
• Kruse(1998) suggested the measurement of the Earth’s
surface in hundreds of spectral bands, provides a unique
means of remotely mapping mineralogy.
• Perez,et.al (2000) used SAM Spectral Angle Mapper, MF
Matched Filtering, SFF Spectral Feature Fitting, MNF Minimum
Noise Fraction techniques for Mineral Mapping for Los
Menucos region.
11
• Sanjeevi (2008) analysed that spectral unmixing of
hyperspectral data may be combined with the terrain
parameters to identify mineral deposits and also to estimate
the quality of these deposits.
• Srivastav,et.al(2012) illustrated mineral abundance mapping
using MTMF Mixture-Tuned Matched Filtering technique.
Minerals identified were in accordance with the ground
lithology.
• Jibran Khan (2013),presented a preliminary methodology for
extraction of minerals by analysis of Hyerion data using ERDAS
Imagine software(Intergraph).
12
Case Study 1:
• Mineral Abundance mapping using Hyperion dataset in
Udaipur
• Author: Dr.S.K.Srivastav, Dr.Prabhakaran.
• Journal: 14th International Geospatial Conference,2012.
• Objective: (a)To understand EO-1 hyperion data processing
and spectral analysis for mineral abundance mapping in
the study area. (b)The study attempts to map the various
minerals present in the exposed rock surface in the study
area.
13
Study Area:
• The area is located southwest of Udaipur City, Rajasthan.
• The extent of the study area is from 73° 33’ 25 E to 73° 42’
53 E and 24° 09’ 34 N to 24° 31’ 40 N covering 303.43 sq
km.
• Udaipur District is bounded on the northwest by the Aravalli
Range.
14
Figure 3- Study area (Udaipur), Hyperion (FCC 47 28 15)
15
Geological Setting:
• The study area has two main stratigraphic units :
– Rocks of Aravali Supergroup (show a high degree of structural
complexity and deformation)
– Pre-Aravali Formations.
• Aravali Supergroup is divided into two groups- Delwara and
Debrai Groups.
• At some places the graywacke and phyllite rocks are not
deformed and display some typical sedimentary characters
like ripple marks, mud cracks, rain prints etc.
16
17Figure 4-Geological map of Udaipur study area
Data Used & Methodology:
• The following data was used for the study:
– Hyperion Level 1R and Level 1Gst images
– Geological Map of the Study Area
– Spectral Library (USGS)
• Level 1R (L1R) - Radiometrically corrected only. No geometric
corrections are applied.
• Level 1Gst (L1Gst) - Radiometrically corrected and resampled for
geometric correction and registration to a geographic map
projection. The data image is ortho-corrected using (DEM) .
18
Hyperion L1Gst Data Hyperion L1R Data Geological Map
Preprocessing
Atmospheric Corrections using
FLAASH
Geometric Correction
MNF Transformation
Pixel Purity Index(PPI)
n-D visualizer
Spectral Library(USGS)
Resampling
Spectral Analyst (Endmember
Identification)
Interpretation of
Geological units
Mapping (SAM,MTMF)
Mineralogical Mapping
Flow chart 1: The Flow Diagram of Methodology
19
Data Preprocessing:
• The Hyperion dataset has to be corrected for abnormal pixels,
striping prior to the atmospheric correction.
• Pre-processing is required not only for removing sensor errors
but also for display, band selection (to reduce the data
dimensionality) and to reduce computational complexity.
• A spatial subset was taken to focus on the study area
containing 198 bands(after removing bands containing errors
due to stripping)
20
Atmospheric corrections: (FLAASH)
• An algorithm called FLAASH ( Fast Line-of-sight Atmospheric
Analysis of Spectral Hypercubes) is used.
• FLAASH handles data from a variety of HSI and MSI sensors
and incorporates algorithms for water vapour and aerosol
retrieval and adjacency effect correction .
21
FLAASH input parameters
Sensor type
Pixel Size
Ground elevation
Scene centre Latitude/longitude
Sensor altitude
Visibility
Flight date and flight line
Atmospheric Model
Aerosol model
Water vapour retrieval
Spectral Polishing
Wavelength calibertion
Output reflectance scale parameter
22Table 1: FLAASH Input Parametes
23
Fig 5: Analysis of Hyperspectral data
Observations:
• 144 bands were used for MNF trnsformation and the frist 8 eigen bands
containing most spectral information are used in PPI.
• PPI was calculated with 10000 iterations and a threshold factor of 2.5 for
extreme pixel selection.
• A total of 460 pixels were shortlisted and converted to Region of Interest.
• These pixel were plot into n-dimensional scatter plot to determine the
endmembers.
• The resampled USGS mineral library is used to identify the material of the
endmembers. The SAM and MTMF were used for the identification.
• Finally four minerals were identified through the process and they are
Grossularite, Pyrite, Calcite and Andradite.
24
Figure-6 Spectral profiles of Endmembers
25
Fig-7 Mineral abundance maps for Grossularite, Calcite.
26
27
Figure 8:
Case Study 2:
• Hyperspectral Image Analysis for Dolomite Identification in Tarbela
Dam Region of Pakistan.
• Author: Jibran Khan
• Journal:International Journal of Innovative Technology and
Exploring Engineering
• Objective: Indentification of dolomite using target idenfication
technique from EO-1 (Hyperion) satellite data.
• Study Area: Tarbela Dam on the Indus River in Pakistan is located in
Haripur District, Hazara Divisionabout 50 kilometres northwest of
Islamabad.
28
Fig 9 - Left: Red box showing Area of Interest (Image Source: USGS Earth explorer); Right:
Satellite Image of the Tarbela Dam on the Indus River of Pakistan (Source: NASA Astronaut
Photography Database
29
Geology of the Area:
• The notable minerals in Haripur district are sandstone,
limestone and dolomite.
• Hazara district Hills comprise crystalline and metamorphic
rocks with sedimentary deposits and gabbroic intrusions.
• The present geologic structure is the result of extensive
folding, shearing and faulting associated with regional crustal
deformation.
• The dolomite unit of Tarbela area consists of dark-weathering
interlayered brown and grey micro-crystalline dolomite.
30
EO-1 Hyperion:
• EO-1/Hyperion provides the highest available spectral resolution in
the field of satellite-borne remote sensing systems.
• Detailed classification of land assets through the Hyperion will
enable more accurate mineral exploration
Table 2: EO-1 Satellite Sensors Overview (Source: Satellite Imaging
Corporation, US) 31
Data processing and Analysis:
• Atmospheric correction is performed using the haze reduction
function of Erdas IMAGINE software (Intergraph Corporation).
• The de-hazing algorithm can turn a hazy data set into a crisp
and neat image.
• The second step in hyperspectral image processing is the
measurement of signal-to-noise ratio (SNR).
• In order to measure the SNR of haze-reduced Signal-to-Noise
function of Erdas IMAGINE software is used.
32
Fig 10: Left: Long narrow strip of EO-1 showing hyperspectral imagery of Tarbela
Dam region of Pakistan, Center: Haze reduced image, Right: In this image S/N
ratio model has been applied using Erdas IMAGINE
33
Contd…
• The next step involves the spectral profile analysis of imagery
with the spectral signature of dolomite.
• Erdas IMAGINE software contain spectral libraries (developed
by JPL,USGS) which contain spectral signature for a wide
variety of materials ranging from minerals, vegetation etc.
• Some specific points in the imagery were identified and their
spectral profiles are generted using the software.
• Then, this spectral profile was compared with the reference
spectral signature of dolomite available in spectral library.
34
Figure 11: Spectral profile of a selected point in the processed image
35
Figure 12: Image showing comparison of spectral profile of a selected
point in the processed image with the spectral signature of dolomite
36
Observations:
• The steps followed can be referred to as the preliminary steps
for the identification analysis of minerals.
• There was some uncertainty observe in the image processing
due to the presence of vegetation cover and noises.
• Some statistical tools such as statistical filtering and using bi-
variety regression analysis were suggested to get reliable
results.
37
Summary:
• Hyperspectral image analysis can be a very powerful tool for
cost effective analysis of minerals, identifying mineral
abundances and mapping the geological characteristics of an
area.
• Detection of minerals is dependent on the spectral coverage,
spectral resolution and signal to noise ratio of the
spectrometer, the abundance of the mineral.
• It can be said that the low signal to noise ratio and use of
laboratory spectra of the minerals from the standard spectral
libraries as the reference affect the classification results and
their accuracies. 38
References:
• Khan.J.,(2013),Hyperspectral Image Analysis for Dolomite Identification in
Tarbela Dam Region of Pakistan, International Journal of Innovative
Technology and Exploring Engineering, Vol.2(3):pp 30-34
• Kruse, F.A.,(1998),Advances in Hyperspectral Remote Sensing for
Geological Mapping and Exploration, Proceedings 9th Australian Remote
Sensing Conference, Sydney, Australia, 23-24 July 1998.
• Sanjeevi.S.,(2008),Targeting Limestone and Bauxite deposits in Southern
India by spectral unmixing of hyperspectral image data, The International
A rchives of th Photogrammetry, Vol.XXXVII.PartB8.
• Singh.B, Dowerah.J.,(2010),Hyperspectral Imaging: New Generation
Remote Sensing, e-Journal Earth Science,Vol.3(3)
• Srivasthav. S.K, Prabhakaran.,(2012), Mineral Abundance Mapping Using
Hyperion Dataset in part of Udaipur, Rajasthan, 14th International
Conference on Geospatial Information Technology and Applications,
Gurgaon, India, 7-9 Feb 2012.
39

More Related Content

What's hot

What's hot (20)

Radar remote sensing, P K MANI
Radar remote sensing, P K MANIRadar remote sensing, P K MANI
Radar remote sensing, P K MANI
 
Microwave remote sensing
Microwave remote sensingMicrowave remote sensing
Microwave remote sensing
 
Digital image processing 1
Digital  image processing 1Digital  image processing 1
Digital image processing 1
 
Digital Elevation Model (DEM)
Digital Elevation Model (DEM)Digital Elevation Model (DEM)
Digital Elevation Model (DEM)
 
Stereoscopic vision
Stereoscopic visionStereoscopic vision
Stereoscopic vision
 
Intro to GIS and Remote Sensing
Intro to GIS and Remote SensingIntro to GIS and Remote Sensing
Intro to GIS and Remote Sensing
 
Sensors for remote sensing
Sensors for remote sensingSensors for remote sensing
Sensors for remote sensing
 
Spot satellite
Spot satelliteSpot satellite
Spot satellite
 
Image enhancement technique digital image analysis, in remote sensing ,P K MANI
Image enhancement technique  digital image analysis, in remote sensing ,P K MANIImage enhancement technique  digital image analysis, in remote sensing ,P K MANI
Image enhancement technique digital image analysis, in remote sensing ,P K MANI
 
Fundamentals of Remote Sensing
Fundamentals of Remote SensingFundamentals of Remote Sensing
Fundamentals of Remote Sensing
 
Basics of Remote Sensing
Basics of Remote SensingBasics of Remote Sensing
Basics of Remote Sensing
 
Thermal remote sensing and its applications
Thermal remote sensing and its applicationsThermal remote sensing and its applications
Thermal remote sensing and its applications
 
Image interpretation keys & image resolution
Image interpretation keys & image resolutionImage interpretation keys & image resolution
Image interpretation keys & image resolution
 
Spectral signatures
Spectral signaturesSpectral signatures
Spectral signatures
 
Remote Sensing Platforms and Its types
Remote Sensing Platforms and Its typesRemote Sensing Platforms and Its types
Remote Sensing Platforms and Its types
 
Band ratioing presentation
Band ratioing presentationBand ratioing presentation
Band ratioing presentation
 
raster data model
raster data modelraster data model
raster data model
 
Remote sensing for mineral exploration
Remote sensing for mineral explorationRemote sensing for mineral exploration
Remote sensing for mineral exploration
 
Microwave remote sensing
Microwave remote sensingMicrowave remote sensing
Microwave remote sensing
 
Chapter 5: Remote sensing
Chapter 5: Remote sensingChapter 5: Remote sensing
Chapter 5: Remote sensing
 

Viewers also liked

Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
Swetha A
 
MINERAL EXPLORATION USING ASTER IMAGE
MINERAL EXPLORATION USING ASTER IMAGE MINERAL EXPLORATION USING ASTER IMAGE
MINERAL EXPLORATION USING ASTER IMAGE
Abhiram Kanigolla
 
thenkabail-uav-germany-final1b
thenkabail-uav-germany-final1bthenkabail-uav-germany-final1b
thenkabail-uav-germany-final1b
Prasad Thenkabail
 
IGARSS_LIU_XU_2011.ppt
IGARSS_LIU_XU_2011.pptIGARSS_LIU_XU_2011.ppt
IGARSS_LIU_XU_2011.ppt
grssieee
 
Polly use of remote sensing products for local water
Polly use of remote sensing products for local waterPolly use of remote sensing products for local water
Polly use of remote sensing products for local water
GeCo in the Rockies
 
Overview of hyperspectral remote sensing of impervious surfaces
Overview of hyperspectral remote sensing of impervious surfacesOverview of hyperspectral remote sensing of impervious surfaces
Overview of hyperspectral remote sensing of impervious surfaces
zhengspace
 

Viewers also liked (20)

hyperspectral remote sensing and its geological applications
hyperspectral remote sensing and its geological applicationshyperspectral remote sensing and its geological applications
hyperspectral remote sensing and its geological applications
 
Hyperspectral remote sensing for oil exploration
Hyperspectral remote sensing for oil explorationHyperspectral remote sensing for oil exploration
Hyperspectral remote sensing for oil exploration
 
Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
Remote Sensing And GIS Application In Mineral , Oil , Ground Water MappingMin...
 
MINERAL EXPLORATION USING ASTER IMAGE
MINERAL EXPLORATION USING ASTER IMAGE MINERAL EXPLORATION USING ASTER IMAGE
MINERAL EXPLORATION USING ASTER IMAGE
 
The use of geoinformatics in mineral exploration and exploitation
The use of geoinformatics in mineral exploration and exploitationThe use of geoinformatics in mineral exploration and exploitation
The use of geoinformatics in mineral exploration and exploitation
 
Hyperspectral Imagery for Environmental Mapping and Monitoring
Hyperspectral Imagery for Environmental Mapping and MonitoringHyperspectral Imagery for Environmental Mapping and Monitoring
Hyperspectral Imagery for Environmental Mapping and Monitoring
 
Remote Sensing PPT
Remote Sensing PPTRemote Sensing PPT
Remote Sensing PPT
 
Structural Geology and Geomorphology through Remote Sensing
Structural Geology and Geomorphology through Remote SensingStructural Geology and Geomorphology through Remote Sensing
Structural Geology and Geomorphology through Remote Sensing
 
thenkabail-uav-germany-final1b
thenkabail-uav-germany-final1bthenkabail-uav-germany-final1b
thenkabail-uav-germany-final1b
 
Hyperspectral Remote Sensing of Planetary Surfaces: Inner composition of the ...
Hyperspectral Remote Sensing of Planetary Surfaces: Inner composition of the ...Hyperspectral Remote Sensing of Planetary Surfaces: Inner composition of the ...
Hyperspectral Remote Sensing of Planetary Surfaces: Inner composition of the ...
 
Structural Mapping using GIS/RS
Structural Mapping using GIS/RSStructural Mapping using GIS/RS
Structural Mapping using GIS/RS
 
Hyperspectral imaging for forensic examination
Hyperspectral imaging for forensic examinationHyperspectral imaging for forensic examination
Hyperspectral imaging for forensic examination
 
IGARSS_LIU_XU_2011.ppt
IGARSS_LIU_XU_2011.pptIGARSS_LIU_XU_2011.ppt
IGARSS_LIU_XU_2011.ppt
 
Soil and EM monitoring presentation 110110
Soil and EM monitoring presentation 110110Soil and EM monitoring presentation 110110
Soil and EM monitoring presentation 110110
 
Spatial variation of soil constraints and its implications for site-specific ...
Spatial variation of soil constraints and its implications for site-specific ...Spatial variation of soil constraints and its implications for site-specific ...
Spatial variation of soil constraints and its implications for site-specific ...
 
Archaeological applications of multi/hyper-spectral data: challenges and pote...
Archaeological applications of multi/hyper-spectral data: challenges and pote...Archaeological applications of multi/hyper-spectral data: challenges and pote...
Archaeological applications of multi/hyper-spectral data: challenges and pote...
 
Polly use of remote sensing products for local water
Polly use of remote sensing products for local waterPolly use of remote sensing products for local water
Polly use of remote sensing products for local water
 
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
 
Overview of hyperspectral remote sensing of impervious surfaces
Overview of hyperspectral remote sensing of impervious surfacesOverview of hyperspectral remote sensing of impervious surfaces
Overview of hyperspectral remote sensing of impervious surfaces
 
PSO.ppt
PSO.pptPSO.ppt
PSO.ppt
 

Similar to HYPERSPECTRAL RS IN MINERAL MAPPING

110727Oshigami.pdf
110727Oshigami.pdf110727Oshigami.pdf
110727Oshigami.pdf
grssieee
 

Similar to HYPERSPECTRAL RS IN MINERAL MAPPING (20)

110727Oshigami.pdf
110727Oshigami.pdf110727Oshigami.pdf
110727Oshigami.pdf
 
Water quality and land cover change analysis in East Tennessee watersheds
Water quality and land cover change analysis in East Tennessee watershedsWater quality and land cover change analysis in East Tennessee watersheds
Water quality and land cover change analysis in East Tennessee watersheds
 
Mapping Hydrothermal Mineral Deposits Using PCA and BR Methods in Baft 1:1000...
Mapping Hydrothermal Mineral Deposits Using PCA and BR Methods in Baft 1:1000...Mapping Hydrothermal Mineral Deposits Using PCA and BR Methods in Baft 1:1000...
Mapping Hydrothermal Mineral Deposits Using PCA and BR Methods in Baft 1:1000...
 
Optical sensing of soil macronutrient
Optical sensing of soil macronutrientOptical sensing of soil macronutrient
Optical sensing of soil macronutrient
 
IRJET-Mapping of Mineral Zones using the Spectral Feature Fitting Method in J...
IRJET-Mapping of Mineral Zones using the Spectral Feature Fitting Method in J...IRJET-Mapping of Mineral Zones using the Spectral Feature Fitting Method in J...
IRJET-Mapping of Mineral Zones using the Spectral Feature Fitting Method in J...
 
class_EXPLOR_TECH.ppt
class_EXPLOR_TECH.pptclass_EXPLOR_TECH.ppt
class_EXPLOR_TECH.ppt
 
General ideas About NMR technology
General ideas About NMR technologyGeneral ideas About NMR technology
General ideas About NMR technology
 
The general idea of technology.pdf
The general idea of technology.pdfThe general idea of technology.pdf
The general idea of technology.pdf
 
Minning Application and Remote Sensing Using Aster Imagery
Minning Application and Remote Sensing Using Aster ImageryMinning Application and Remote Sensing Using Aster Imagery
Minning Application and Remote Sensing Using Aster Imagery
 
Spectroscopic sensing of soil nutrients
Spectroscopic sensing of soil nutrientsSpectroscopic sensing of soil nutrients
Spectroscopic sensing of soil nutrients
 
1
11
1
 
Remote sensing
Remote sensingRemote sensing
Remote sensing
 
study and analysis of hy si data in 400 to 500
study and analysis of hy si data in 400 to 500study and analysis of hy si data in 400 to 500
study and analysis of hy si data in 400 to 500
 
ndx_odumade
ndx_odumadendx_odumade
ndx_odumade
 
tech-uk-02-RSS simple explications.pdf
tech-uk-02-RSS simple explications.pdftech-uk-02-RSS simple explications.pdf
tech-uk-02-RSS simple explications.pdf
 
Application of Seismic Reflection Surveys to Detect Massive Sulphide Deposits...
Application of Seismic Reflection Surveys to Detect Massive Sulphide Deposits...Application of Seismic Reflection Surveys to Detect Massive Sulphide Deposits...
Application of Seismic Reflection Surveys to Detect Massive Sulphide Deposits...
 
Mineral potential mapping
Mineral potential mappingMineral potential mapping
Mineral potential mapping
 
lithological discrimination of anorthosite using aster data in oddanchatram area
lithological discrimination of anorthosite using aster data in oddanchatram arealithological discrimination of anorthosite using aster data in oddanchatram area
lithological discrimination of anorthosite using aster data in oddanchatram area
 
D41037045
D41037045D41037045
D41037045
 
Land use cover pptx.
Land use cover pptx.Land use cover pptx.
Land use cover pptx.
 

More from Abhiram Kanigolla

APPLICATION OF KRIGING IN GROUND WATER STUDIES
APPLICATION OF KRIGING IN GROUND WATER STUDIESAPPLICATION OF KRIGING IN GROUND WATER STUDIES
APPLICATION OF KRIGING IN GROUND WATER STUDIES
Abhiram Kanigolla
 
AIR POLLUTION MONITORING USING RS
AIR POLLUTION MONITORING USING RSAIR POLLUTION MONITORING USING RS
AIR POLLUTION MONITORING USING RS
Abhiram Kanigolla
 
REMOTE SENSING IN ARCHAEOLOGY
REMOTE SENSING IN ARCHAEOLOGYREMOTE SENSING IN ARCHAEOLOGY
REMOTE SENSING IN ARCHAEOLOGY
Abhiram Kanigolla
 
PRECISE AGRICULTURE USING GPS
PRECISE AGRICULTURE USING GPSPRECISE AGRICULTURE USING GPS
PRECISE AGRICULTURE USING GPS
Abhiram Kanigolla
 
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRYLIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
Abhiram Kanigolla
 
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLINGAPPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
Abhiram Kanigolla
 
WETLAND MAPPING USING RS AND GIS
WETLAND MAPPING USING RS AND GISWETLAND MAPPING USING RS AND GIS
WETLAND MAPPING USING RS AND GIS
Abhiram Kanigolla
 
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GISCLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
Abhiram Kanigolla
 
APPLICATIONS OF RS AND GIS FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
APPLICATIONS OF RS AND GIS  FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)APPLICATIONS OF RS AND GIS  FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
APPLICATIONS OF RS AND GIS FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
Abhiram Kanigolla
 
Climate change impact assessment on hydrology on river basins
Climate change impact assessment on hydrology on river basinsClimate change impact assessment on hydrology on river basins
Climate change impact assessment on hydrology on river basins
Abhiram Kanigolla
 
Applications of Remote Sensing
Applications of Remote SensingApplications of Remote Sensing
Applications of Remote Sensing
Abhiram Kanigolla
 
R programming language in spatial analysis
R programming language in spatial analysisR programming language in spatial analysis
R programming language in spatial analysis
Abhiram Kanigolla
 
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
Abhiram Kanigolla
 

More from Abhiram Kanigolla (20)

ASSESSMENT OF SOIL SALINITY USING REMOTE SENSING
ASSESSMENT OF SOIL SALINITY USING REMOTE SENSINGASSESSMENT OF SOIL SALINITY USING REMOTE SENSING
ASSESSMENT OF SOIL SALINITY USING REMOTE SENSING
 
GIS IN DISASTER MANAGEMENT
GIS IN DISASTER MANAGEMENTGIS IN DISASTER MANAGEMENT
GIS IN DISASTER MANAGEMENT
 
APPLICATION OF KRIGING IN GROUND WATER STUDIES
APPLICATION OF KRIGING IN GROUND WATER STUDIESAPPLICATION OF KRIGING IN GROUND WATER STUDIES
APPLICATION OF KRIGING IN GROUND WATER STUDIES
 
AIR POLLUTION MONITORING USING RS
AIR POLLUTION MONITORING USING RSAIR POLLUTION MONITORING USING RS
AIR POLLUTION MONITORING USING RS
 
REMOTE SENSING IN ARCHAEOLOGY
REMOTE SENSING IN ARCHAEOLOGYREMOTE SENSING IN ARCHAEOLOGY
REMOTE SENSING IN ARCHAEOLOGY
 
PRECISE AGRICULTURE USING GPS
PRECISE AGRICULTURE USING GPSPRECISE AGRICULTURE USING GPS
PRECISE AGRICULTURE USING GPS
 
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRYLIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
LIDAR TECHNOLOGY AND ITS APPLICATION ON FORESTRY
 
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLINGAPPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
APPLICATIONS OF ARC SWAT MODEL FOR HYDROLOGICAL MODELLING
 
WETLAND MAPPING USING RS AND GIS
WETLAND MAPPING USING RS AND GISWETLAND MAPPING USING RS AND GIS
WETLAND MAPPING USING RS AND GIS
 
3D CITY MODELS
3D CITY MODELS3D CITY MODELS
3D CITY MODELS
 
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GISCLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
CLIMATE CHANGE IMPACT ASSESSMENT ON MELTING GLACIERS USING RS & GIS
 
APPLICATIONS OF RS AND GIS FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
APPLICATIONS OF RS AND GIS  FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)APPLICATIONS OF RS AND GIS  FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
APPLICATIONS OF RS AND GIS FOR DEVELOPMENT OF SMALL HYDROPOWER PLANTS (SHP)
 
GRID COMPUTING
GRID COMPUTINGGRID COMPUTING
GRID COMPUTING
 
Climate change impact assessment on hydrology on river basins
Climate change impact assessment on hydrology on river basinsClimate change impact assessment on hydrology on river basins
Climate change impact assessment on hydrology on river basins
 
Applications of Remote Sensing
Applications of Remote SensingApplications of Remote Sensing
Applications of Remote Sensing
 
R programming language in spatial analysis
R programming language in spatial analysisR programming language in spatial analysis
R programming language in spatial analysis
 
GPS IN AVIATION SYSTEM
GPS IN AVIATION SYSTEMGPS IN AVIATION SYSTEM
GPS IN AVIATION SYSTEM
 
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
IMPACT OF COAL MINING ON LAND USE/LAND COVER USING REMOTE SENSING AND GIS TEC...
 
application of gis
application of gisapplication of gis
application of gis
 
70.mobile gis
70.mobile gis70.mobile gis
70.mobile gis
 

Recently uploaded

Seal of Good Local Governance (SGLG) 2024Final.pptx
Seal of Good Local Governance (SGLG) 2024Final.pptxSeal of Good Local Governance (SGLG) 2024Final.pptx
Seal of Good Local Governance (SGLG) 2024Final.pptx
negromaestrong
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
heathfieldcps1
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
heathfieldcps1
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
kauryashika82
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
ciinovamais
 

Recently uploaded (20)

Seal of Good Local Governance (SGLG) 2024Final.pptx
Seal of Good Local Governance (SGLG) 2024Final.pptxSeal of Good Local Governance (SGLG) 2024Final.pptx
Seal of Good Local Governance (SGLG) 2024Final.pptx
 
Food Chain and Food Web (Ecosystem) EVS, B. Pharmacy 1st Year, Sem-II
Food Chain and Food Web (Ecosystem) EVS, B. Pharmacy 1st Year, Sem-IIFood Chain and Food Web (Ecosystem) EVS, B. Pharmacy 1st Year, Sem-II
Food Chain and Food Web (Ecosystem) EVS, B. Pharmacy 1st Year, Sem-II
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docx
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
 
ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 

HYPERSPECTRAL RS IN MINERAL MAPPING

  • 1. Hyperspectral Remote Sensing in Mineral Mapping Presented by J S S Vani 1
  • 2. Contents: • Introduction • Hyperspectral Image Analysis for Mineral Mapping • Literature review • Case Study 1 • Case Study 2 • Summary • References 2
  • 3. Introduction: • Classical mineral mapping utilize physical characteristics of rocks such as mineralogy, weathering characteristics, geochemical signatures, to determine the nature and distribution of geologic units. • Subtle mineralogical differences, often important for making distinctions between rock formations, are difficult to map. • Hyperspectral remote sensing provides a unique means of remotely mapping mineralogy. 3
  • 4. Co ti ued… • The asi o ept is all su sta es depe di g o their ole ular composition scatter electromagnetic energy at specific wavelengths i disti tive patter • Minerals and rocks display certain analytic spectral characteristics throughout the electromagnetic spectrum. • These spectral characteristics allow their chemical composition and relative abundance to be mapped. 4
  • 5. Hyperspectral image analysis for mineral mapping: • A hyperspectral image is an image cube with spatial information in X,Y and spectral in Z direction. • A radiant energy value is recorded for each data point(pixel) in the image for every wavelength sampled. • As a result, data volume to be processed is generally huge and computationally complex. • In order to solve this problem, several approaches have been developed for image processing and analysis. 5
  • 6. 6 Fig 1: Concept of Hyperspectral imagery
  • 7. • The processing of hyperspectral imagery involves various steps like: – Data reduction techniques • Radiometric corrections using algorithms like FLAASH, ARTEM, HATCH etc. • Minimum Noise Fraction (MNF) • Pixel Purity Index (PPI) – Image classification techniques • Spectral Angle Mapper (SAM) • n-Dimensional Visualizer • Mixture Tuned Matched Filtering(MTMF) 7
  • 8. • Minimum noise fraction transformation: – Used to segregate noise in the data, and to reduce the computational requirements for subsequent processing. – This is a two step process: • The first step results in transformed data in which the noise has unit variance and no band-to-band correlations. • The second step is a standard Principal Components Analysis. • Pixel Purity Index: – It is a ea s of fi di g the ost spe trall pure or e tre e pi els. – A PPI image is created where each pixel value corresponds to the number of times that pixel was recorded as extreme. – The PPI is run on an MNF transform result, excluding the noise bands. – The results of the PPI are used as input into n-D Visualiser. 8
  • 9. • N-Dimensional visualiser: – Used to further refine the selection of the most spectrally pure end members from PPI result. – Extreme pixels which ultimately correspond to end members can be determined by rotating the scatter plot in n-dimensions. – The selected classes will be exported to Region of Interest(ROI) and used as input for further spectral processing. • Spectral angle Mappper: – It determines the similarity between a pixel and each of the reference spectra based on the calculation of the spe tral a gle between them. – Smaller angle means a closer match between the two spectra and the pixel is identified as the fixed class Fig 2 Showing the SAM algorithm 9
  • 10. • Mixture Tuned Matched Filtering: – It is a special classification and unmixing technique for identification of end members. – Is a hybrid method based on the combination of the matched filter method (no requirement to know all the endmembers) and linear mixture theory. 10
  • 11. Literature Review: • Kruse(1998) suggested the measurement of the Earth’s surface in hundreds of spectral bands, provides a unique means of remotely mapping mineralogy. • Perez,et.al (2000) used SAM Spectral Angle Mapper, MF Matched Filtering, SFF Spectral Feature Fitting, MNF Minimum Noise Fraction techniques for Mineral Mapping for Los Menucos region. 11
  • 12. • Sanjeevi (2008) analysed that spectral unmixing of hyperspectral data may be combined with the terrain parameters to identify mineral deposits and also to estimate the quality of these deposits. • Srivastav,et.al(2012) illustrated mineral abundance mapping using MTMF Mixture-Tuned Matched Filtering technique. Minerals identified were in accordance with the ground lithology. • Jibran Khan (2013),presented a preliminary methodology for extraction of minerals by analysis of Hyerion data using ERDAS Imagine software(Intergraph). 12
  • 13. Case Study 1: • Mineral Abundance mapping using Hyperion dataset in Udaipur • Author: Dr.S.K.Srivastav, Dr.Prabhakaran. • Journal: 14th International Geospatial Conference,2012. • Objective: (a)To understand EO-1 hyperion data processing and spectral analysis for mineral abundance mapping in the study area. (b)The study attempts to map the various minerals present in the exposed rock surface in the study area. 13
  • 14. Study Area: • The area is located southwest of Udaipur City, Rajasthan. • The extent of the study area is from 73° 33’ 25 E to 73° 42’ 53 E and 24° 09’ 34 N to 24° 31’ 40 N covering 303.43 sq km. • Udaipur District is bounded on the northwest by the Aravalli Range. 14
  • 15. Figure 3- Study area (Udaipur), Hyperion (FCC 47 28 15) 15
  • 16. Geological Setting: • The study area has two main stratigraphic units : – Rocks of Aravali Supergroup (show a high degree of structural complexity and deformation) – Pre-Aravali Formations. • Aravali Supergroup is divided into two groups- Delwara and Debrai Groups. • At some places the graywacke and phyllite rocks are not deformed and display some typical sedimentary characters like ripple marks, mud cracks, rain prints etc. 16
  • 17. 17Figure 4-Geological map of Udaipur study area
  • 18. Data Used & Methodology: • The following data was used for the study: – Hyperion Level 1R and Level 1Gst images – Geological Map of the Study Area – Spectral Library (USGS) • Level 1R (L1R) - Radiometrically corrected only. No geometric corrections are applied. • Level 1Gst (L1Gst) - Radiometrically corrected and resampled for geometric correction and registration to a geographic map projection. The data image is ortho-corrected using (DEM) . 18
  • 19. Hyperion L1Gst Data Hyperion L1R Data Geological Map Preprocessing Atmospheric Corrections using FLAASH Geometric Correction MNF Transformation Pixel Purity Index(PPI) n-D visualizer Spectral Library(USGS) Resampling Spectral Analyst (Endmember Identification) Interpretation of Geological units Mapping (SAM,MTMF) Mineralogical Mapping Flow chart 1: The Flow Diagram of Methodology 19
  • 20. Data Preprocessing: • The Hyperion dataset has to be corrected for abnormal pixels, striping prior to the atmospheric correction. • Pre-processing is required not only for removing sensor errors but also for display, band selection (to reduce the data dimensionality) and to reduce computational complexity. • A spatial subset was taken to focus on the study area containing 198 bands(after removing bands containing errors due to stripping) 20
  • 21. Atmospheric corrections: (FLAASH) • An algorithm called FLAASH ( Fast Line-of-sight Atmospheric Analysis of Spectral Hypercubes) is used. • FLAASH handles data from a variety of HSI and MSI sensors and incorporates algorithms for water vapour and aerosol retrieval and adjacency effect correction . 21
  • 22. FLAASH input parameters Sensor type Pixel Size Ground elevation Scene centre Latitude/longitude Sensor altitude Visibility Flight date and flight line Atmospheric Model Aerosol model Water vapour retrieval Spectral Polishing Wavelength calibertion Output reflectance scale parameter 22Table 1: FLAASH Input Parametes
  • 23. 23 Fig 5: Analysis of Hyperspectral data
  • 24. Observations: • 144 bands were used for MNF trnsformation and the frist 8 eigen bands containing most spectral information are used in PPI. • PPI was calculated with 10000 iterations and a threshold factor of 2.5 for extreme pixel selection. • A total of 460 pixels were shortlisted and converted to Region of Interest. • These pixel were plot into n-dimensional scatter plot to determine the endmembers. • The resampled USGS mineral library is used to identify the material of the endmembers. The SAM and MTMF were used for the identification. • Finally four minerals were identified through the process and they are Grossularite, Pyrite, Calcite and Andradite. 24
  • 25. Figure-6 Spectral profiles of Endmembers 25
  • 26. Fig-7 Mineral abundance maps for Grossularite, Calcite. 26
  • 28. Case Study 2: • Hyperspectral Image Analysis for Dolomite Identification in Tarbela Dam Region of Pakistan. • Author: Jibran Khan • Journal:International Journal of Innovative Technology and Exploring Engineering • Objective: Indentification of dolomite using target idenfication technique from EO-1 (Hyperion) satellite data. • Study Area: Tarbela Dam on the Indus River in Pakistan is located in Haripur District, Hazara Divisionabout 50 kilometres northwest of Islamabad. 28
  • 29. Fig 9 - Left: Red box showing Area of Interest (Image Source: USGS Earth explorer); Right: Satellite Image of the Tarbela Dam on the Indus River of Pakistan (Source: NASA Astronaut Photography Database 29
  • 30. Geology of the Area: • The notable minerals in Haripur district are sandstone, limestone and dolomite. • Hazara district Hills comprise crystalline and metamorphic rocks with sedimentary deposits and gabbroic intrusions. • The present geologic structure is the result of extensive folding, shearing and faulting associated with regional crustal deformation. • The dolomite unit of Tarbela area consists of dark-weathering interlayered brown and grey micro-crystalline dolomite. 30
  • 31. EO-1 Hyperion: • EO-1/Hyperion provides the highest available spectral resolution in the field of satellite-borne remote sensing systems. • Detailed classification of land assets through the Hyperion will enable more accurate mineral exploration Table 2: EO-1 Satellite Sensors Overview (Source: Satellite Imaging Corporation, US) 31
  • 32. Data processing and Analysis: • Atmospheric correction is performed using the haze reduction function of Erdas IMAGINE software (Intergraph Corporation). • The de-hazing algorithm can turn a hazy data set into a crisp and neat image. • The second step in hyperspectral image processing is the measurement of signal-to-noise ratio (SNR). • In order to measure the SNR of haze-reduced Signal-to-Noise function of Erdas IMAGINE software is used. 32
  • 33. Fig 10: Left: Long narrow strip of EO-1 showing hyperspectral imagery of Tarbela Dam region of Pakistan, Center: Haze reduced image, Right: In this image S/N ratio model has been applied using Erdas IMAGINE 33
  • 34. Contd… • The next step involves the spectral profile analysis of imagery with the spectral signature of dolomite. • Erdas IMAGINE software contain spectral libraries (developed by JPL,USGS) which contain spectral signature for a wide variety of materials ranging from minerals, vegetation etc. • Some specific points in the imagery were identified and their spectral profiles are generted using the software. • Then, this spectral profile was compared with the reference spectral signature of dolomite available in spectral library. 34
  • 35. Figure 11: Spectral profile of a selected point in the processed image 35
  • 36. Figure 12: Image showing comparison of spectral profile of a selected point in the processed image with the spectral signature of dolomite 36
  • 37. Observations: • The steps followed can be referred to as the preliminary steps for the identification analysis of minerals. • There was some uncertainty observe in the image processing due to the presence of vegetation cover and noises. • Some statistical tools such as statistical filtering and using bi- variety regression analysis were suggested to get reliable results. 37
  • 38. Summary: • Hyperspectral image analysis can be a very powerful tool for cost effective analysis of minerals, identifying mineral abundances and mapping the geological characteristics of an area. • Detection of minerals is dependent on the spectral coverage, spectral resolution and signal to noise ratio of the spectrometer, the abundance of the mineral. • It can be said that the low signal to noise ratio and use of laboratory spectra of the minerals from the standard spectral libraries as the reference affect the classification results and their accuracies. 38
  • 39. References: • Khan.J.,(2013),Hyperspectral Image Analysis for Dolomite Identification in Tarbela Dam Region of Pakistan, International Journal of Innovative Technology and Exploring Engineering, Vol.2(3):pp 30-34 • Kruse, F.A.,(1998),Advances in Hyperspectral Remote Sensing for Geological Mapping and Exploration, Proceedings 9th Australian Remote Sensing Conference, Sydney, Australia, 23-24 July 1998. • Sanjeevi.S.,(2008),Targeting Limestone and Bauxite deposits in Southern India by spectral unmixing of hyperspectral image data, The International A rchives of th Photogrammetry, Vol.XXXVII.PartB8. • Singh.B, Dowerah.J.,(2010),Hyperspectral Imaging: New Generation Remote Sensing, e-Journal Earth Science,Vol.3(3) • Srivasthav. S.K, Prabhakaran.,(2012), Mineral Abundance Mapping Using Hyperion Dataset in part of Udaipur, Rajasthan, 14th International Conference on Geospatial Information Technology and Applications, Gurgaon, India, 7-9 Feb 2012. 39