SlideShare une entreprise Scribd logo
1  sur  13
Computer vision
COMPUTER VISION PROBLEMS WHERE DEEP LEARNING HAS BEEN
USED:
Overview
 Image Classification
 Image Classification With Localization
 Object Detection
 Object Segmentation
 Image Style Transfer
 Image Colorization
 Image Reconstruction
 Image Super-Resolution
 Image Synthesis
 Other Problems
What is the class of
this image?
There are many image classification tasks that
involve photographs of objects. Two popular
examples include the CIFAR-10 and CIFAR-
100 datasets that have photographs to be
classified into 10 and 100 classes respectively
. .
Image Classification
With Localization
Image classification with localization
involves assigning a class label to an image
and showing the location of the object in
the image by a bounding box (drawing a
box around the object).
Some examples of image classification with
localization include:
•Labeling an x-ray as cancer or not and
drawing a box around the cancerous
region.
•Classifying photographs of animals and
drawing a box around the animal in each
scene
Object Detection
Object detection is the task of image
classification with localization, although an
image may contain multiple objects that
require localization and classification.
Some examples of object detection include:
•Drawing a bounding box and labeling each
object in a street scene.
•Drawing a bounding box and labeling each
object in an indoor photograph.
•Drawing a bounding box and labeling each
object in a landscape.
Object Segmentation
Object segmentation, or semantic
segmentation, is the task of object
detection where a line is drawn around
each object detected in the
image. Image segmentation is a more
general problem of spitting an image into
segments.
Style Transfer
Style transfer or neural style transfer is
the task of learning style from one or
more images and applying that style to a
new image.
Image Colorization
Image colorization or neural colorization
involves converting a grayscale image to
a full color image.
This task can be thought of as a type of
photo filter or transform that may not
have an objective evaluation.
Examples include colorizing old black
and white photographs and movies.
Image Reconstruction
Image reconstruction and image
inpainting is the task of filling in missing
or corrupt parts of an image.
Datasets often involve using existing
photo datasets and creating corrupted
versions of photos that models must
learn to repair.
Image Super-
Resolution
Image super-resolution is the task of
generating a new version of an image
with a higher resolution and detail than
the original image.
Datasets often involve using existing
photo datasets and creating down-
scaled versions of photos for which
models must learn to create super-
resolution versions.
Image Synthesis
Image synthesis is the task of generating
targeted modifications of existing images
or entirely new images.
It may include small modifications of
image and video (e.g. image-to-image
translations), such as:
•Changing the style of an object in a
scene.
•Adding an object to a scene.
•Adding a face to a scene.
computer vision
computer vision

Contenu connexe

Tendances

The application of image enhancement in color and grayscale images
The application of image enhancement in color and grayscale imagesThe application of image enhancement in color and grayscale images
The application of image enhancement in color and grayscale imagesNisar Ahmed Rana
 
Object Based Image Analysis
Object Based Image Analysis Object Based Image Analysis
Object Based Image Analysis Kabir Uddin
 
Image Segmentation (Digital Image Processing)
Image Segmentation (Digital Image Processing)Image Segmentation (Digital Image Processing)
Image Segmentation (Digital Image Processing)VARUN KUMAR
 
Filter for Removal of Impulse Noise By Using Fuzzy Logic
Filter for Removal of Impulse Noise By Using Fuzzy LogicFilter for Removal of Impulse Noise By Using Fuzzy Logic
Filter for Removal of Impulse Noise By Using Fuzzy LogicCSCJournals
 
A comparison of image segmentation techniques, otsu and watershed for x ray i...
A comparison of image segmentation techniques, otsu and watershed for x ray i...A comparison of image segmentation techniques, otsu and watershed for x ray i...
A comparison of image segmentation techniques, otsu and watershed for x ray i...eSAT Journals
 
Review of Image Segmentation Techniques based on Region Merging Approach
Review of Image Segmentation Techniques based on Region Merging ApproachReview of Image Segmentation Techniques based on Region Merging Approach
Review of Image Segmentation Techniques based on Region Merging ApproachEditor IJMTER
 
Extraction of region of interest in an image
Extraction of region of interest in an imageExtraction of region of interest in an image
Extraction of region of interest in an imageHarsukh Chandak
 
Image restoration
Image restorationImage restoration
Image restorationAzad Singh
 
Presentation on deformable model for medical image segmentation
Presentation on deformable model for medical image segmentationPresentation on deformable model for medical image segmentation
Presentation on deformable model for medical image segmentationSubhash Basistha
 
A Novel Approach for Edge Detection using Modified ACIES Filtering
A Novel Approach for Edge Detection using Modified ACIES FilteringA Novel Approach for Edge Detection using Modified ACIES Filtering
A Novel Approach for Edge Detection using Modified ACIES Filteringidescitation
 
Image Enhancement by Image Fusion for Crime Investigation
Image Enhancement by Image Fusion for Crime InvestigationImage Enhancement by Image Fusion for Crime Investigation
Image Enhancement by Image Fusion for Crime InvestigationCSCJournals
 
IMAGE SEGMENTATION TECHNIQUES
IMAGE SEGMENTATION TECHNIQUESIMAGE SEGMENTATION TECHNIQUES
IMAGE SEGMENTATION TECHNIQUESVicky Kumar
 
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...Dibya Jyoti Bora
 

Tendances (19)

The application of image enhancement in color and grayscale images
The application of image enhancement in color and grayscale imagesThe application of image enhancement in color and grayscale images
The application of image enhancement in color and grayscale images
 
M.sc.iii sem digital image processing unit iv
M.sc.iii sem digital image processing unit ivM.sc.iii sem digital image processing unit iv
M.sc.iii sem digital image processing unit iv
 
Object Based Image Analysis
Object Based Image Analysis Object Based Image Analysis
Object Based Image Analysis
 
Image Segmentation (Digital Image Processing)
Image Segmentation (Digital Image Processing)Image Segmentation (Digital Image Processing)
Image Segmentation (Digital Image Processing)
 
Filter for Removal of Impulse Noise By Using Fuzzy Logic
Filter for Removal of Impulse Noise By Using Fuzzy LogicFilter for Removal of Impulse Noise By Using Fuzzy Logic
Filter for Removal of Impulse Noise By Using Fuzzy Logic
 
A comparison of image segmentation techniques, otsu and watershed for x ray i...
A comparison of image segmentation techniques, otsu and watershed for x ray i...A comparison of image segmentation techniques, otsu and watershed for x ray i...
A comparison of image segmentation techniques, otsu and watershed for x ray i...
 
Image segmentation using wvlt trnsfrmtn and fuzzy logic. ppt
Image segmentation using wvlt trnsfrmtn and fuzzy logic. pptImage segmentation using wvlt trnsfrmtn and fuzzy logic. ppt
Image segmentation using wvlt trnsfrmtn and fuzzy logic. ppt
 
Review of Image Segmentation Techniques based on Region Merging Approach
Review of Image Segmentation Techniques based on Region Merging ApproachReview of Image Segmentation Techniques based on Region Merging Approach
Review of Image Segmentation Techniques based on Region Merging Approach
 
Extraction of region of interest in an image
Extraction of region of interest in an imageExtraction of region of interest in an image
Extraction of region of interest in an image
 
Image restoration
Image restorationImage restoration
Image restoration
 
Blurred image recognization system
Blurred image recognization systemBlurred image recognization system
Blurred image recognization system
 
Presentation on deformable model for medical image segmentation
Presentation on deformable model for medical image segmentationPresentation on deformable model for medical image segmentation
Presentation on deformable model for medical image segmentation
 
A Novel Approach for Edge Detection using Modified ACIES Filtering
A Novel Approach for Edge Detection using Modified ACIES FilteringA Novel Approach for Edge Detection using Modified ACIES Filtering
A Novel Approach for Edge Detection using Modified ACIES Filtering
 
Image Enhancement by Image Fusion for Crime Investigation
Image Enhancement by Image Fusion for Crime InvestigationImage Enhancement by Image Fusion for Crime Investigation
Image Enhancement by Image Fusion for Crime Investigation
 
M.sc.iii sem digital image processing unit i
M.sc.iii sem digital image processing unit iM.sc.iii sem digital image processing unit i
M.sc.iii sem digital image processing unit i
 
Im seg04
Im seg04Im seg04
Im seg04
 
IMAGE SEGMENTATION TECHNIQUES
IMAGE SEGMENTATION TECHNIQUESIMAGE SEGMENTATION TECHNIQUES
IMAGE SEGMENTATION TECHNIQUES
 
PPT s09-machine vision-s2
PPT s09-machine vision-s2PPT s09-machine vision-s2
PPT s09-machine vision-s2
 
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...
IMPORTANCE OF IMAGE ENHANCEMENT TECHNIQUES IN COLOR IMAGE SEGMENTATION: A COM...
 

Similaire à computer vision

Fundamental steps in image processing
Fundamental steps in image processingFundamental steps in image processing
Fundamental steps in image processingPremaPRC211300301103
 
Image restoration and enhancement #2
Image restoration and enhancement #2 Image restoration and enhancement #2
Image restoration and enhancement #2 Gera Paulos
 
Image Synthesis From Reconfigurable Layout and Style
Image Synthesis From Reconfigurable Layout and StyleImage Synthesis From Reconfigurable Layout and Style
Image Synthesis From Reconfigurable Layout and Style哲东 郑
 
CE344L-200365-Lab4.pdf
CE344L-200365-Lab4.pdfCE344L-200365-Lab4.pdf
CE344L-200365-Lab4.pdfUmarMustafa13
 
Digital image processing & computer graphics
Digital image processing & computer graphicsDigital image processing & computer graphics
Digital image processing & computer graphicsAnkit Garg
 
Literature Review on Content Based Image Retrieval
Literature Review on Content Based Image RetrievalLiterature Review on Content Based Image Retrieval
Literature Review on Content Based Image RetrievalUpekha Vandebona
 
Image enhancement lecture
Image enhancement lectureImage enhancement lecture
Image enhancement lectureISRAR HUSSAIN
 
Presentation1.pptx
Presentation1.pptxPresentation1.pptx
Presentation1.pptxK Manjunath
 
aip basic open cv example
aip basic open cv exampleaip basic open cv example
aip basic open cv exampleSaeed Ullah
 
Fundamentals of Image Processing & Components.ppt
Fundamentals of Image Processing & Components.pptFundamentals of Image Processing & Components.ppt
Fundamentals of Image Processing & Components.pptANJANISINGHAL
 
Digital image processing ppt
Digital image processing pptDigital image processing ppt
Digital image processing pptkhanam22
 
Matlab Image Enhancement Techniques
Matlab Image Enhancement TechniquesMatlab Image Enhancement Techniques
Matlab Image Enhancement Techniquesmatlab Content
 
Digital Image Processing
Digital Image ProcessingDigital Image Processing
Digital Image ProcessingReshma KC
 
Computer Graphics Unit 5 notes for Manonmanium Sundaranar University
Computer Graphics  Unit 5 notes for Manonmanium Sundaranar UniversityComputer Graphics  Unit 5 notes for Manonmanium Sundaranar University
Computer Graphics Unit 5 notes for Manonmanium Sundaranar UniversityRajeswariR45
 
Image pre processing
Image pre processingImage pre processing
Image pre processingAshish Kumar
 
Image classification
Image classificationImage classification
Image classificationAli A Jalil
 
Content-Based Image Retrieval Case Study
Content-Based Image Retrieval Case StudyContent-Based Image Retrieval Case Study
Content-Based Image Retrieval Case StudyLisa Kennedy
 

Similaire à computer vision (20)

Fundamental steps in image processing
Fundamental steps in image processingFundamental steps in image processing
Fundamental steps in image processing
 
Image restoration and enhancement #2
Image restoration and enhancement #2 Image restoration and enhancement #2
Image restoration and enhancement #2
 
Image Synthesis From Reconfigurable Layout and Style
Image Synthesis From Reconfigurable Layout and StyleImage Synthesis From Reconfigurable Layout and Style
Image Synthesis From Reconfigurable Layout and Style
 
CE344L-200365-Lab4.pdf
CE344L-200365-Lab4.pdfCE344L-200365-Lab4.pdf
CE344L-200365-Lab4.pdf
 
1 dip introduction
1 dip introduction1 dip introduction
1 dip introduction
 
Digital image processing & computer graphics
Digital image processing & computer graphicsDigital image processing & computer graphics
Digital image processing & computer graphics
 
Literature Review on Content Based Image Retrieval
Literature Review on Content Based Image RetrievalLiterature Review on Content Based Image Retrieval
Literature Review on Content Based Image Retrieval
 
Image enhancement lecture
Image enhancement lectureImage enhancement lecture
Image enhancement lecture
 
Presentation1.pptx
Presentation1.pptxPresentation1.pptx
Presentation1.pptx
 
aip basic open cv example
aip basic open cv exampleaip basic open cv example
aip basic open cv example
 
Fundamentals of Image Processing & Components.ppt
Fundamentals of Image Processing & Components.pptFundamentals of Image Processing & Components.ppt
Fundamentals of Image Processing & Components.ppt
 
Digital image processing ppt
Digital image processing pptDigital image processing ppt
Digital image processing ppt
 
Matlab Image Enhancement Techniques
Matlab Image Enhancement TechniquesMatlab Image Enhancement Techniques
Matlab Image Enhancement Techniques
 
Digital Image Processing
Digital Image ProcessingDigital Image Processing
Digital Image Processing
 
Image processing
Image processingImage processing
Image processing
 
Image processing
Image processingImage processing
Image processing
 
Computer Graphics Unit 5 notes for Manonmanium Sundaranar University
Computer Graphics  Unit 5 notes for Manonmanium Sundaranar UniversityComputer Graphics  Unit 5 notes for Manonmanium Sundaranar University
Computer Graphics Unit 5 notes for Manonmanium Sundaranar University
 
Image pre processing
Image pre processingImage pre processing
Image pre processing
 
Image classification
Image classificationImage classification
Image classification
 
Content-Based Image Retrieval Case Study
Content-Based Image Retrieval Case StudyContent-Based Image Retrieval Case Study
Content-Based Image Retrieval Case Study
 

Dernier

Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfModule-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfManish Kumar
 
signals in triangulation .. ...Surveying
signals in triangulation .. ...Surveyingsignals in triangulation .. ...Surveying
signals in triangulation .. ...Surveyingsapna80328
 
Gravity concentration_MI20612MI_________
Gravity concentration_MI20612MI_________Gravity concentration_MI20612MI_________
Gravity concentration_MI20612MI_________Romil Mishra
 
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Sumanth A
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating SystemRashmi Bhat
 
Katarzyna Lipka-Sidor - BIM School Course
Katarzyna Lipka-Sidor - BIM School CourseKatarzyna Lipka-Sidor - BIM School Course
Katarzyna Lipka-Sidor - BIM School Coursebim.edu.pl
 
System Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingSystem Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingBootNeck1
 
Levelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodLevelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodManicka Mamallan Andavar
 
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithm
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithmComputer Graphics Introduction, Open GL, Line and Circle drawing algorithm
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithmDeepika Walanjkar
 
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdfDEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdfAkritiPradhan2
 
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMS
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMSHigh Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMS
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMSsandhya757531
 
Research Methodology for Engineering pdf
Research Methodology for Engineering pdfResearch Methodology for Engineering pdf
Research Methodology for Engineering pdfCaalaaAbdulkerim
 
Earthing details of Electrical Substation
Earthing details of Electrical SubstationEarthing details of Electrical Substation
Earthing details of Electrical Substationstephanwindworld
 
Engineering Drawing section of solid
Engineering Drawing     section of solidEngineering Drawing     section of solid
Engineering Drawing section of solidnamansinghjarodiya
 
Cost estimation approach: FP to COCOMO scenario based question
Cost estimation approach: FP to COCOMO scenario based questionCost estimation approach: FP to COCOMO scenario based question
Cost estimation approach: FP to COCOMO scenario based questionSneha Padhiar
 
List of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfList of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfisabel213075
 
Python Programming for basic beginners.pptx
Python Programming for basic beginners.pptxPython Programming for basic beginners.pptx
Python Programming for basic beginners.pptxmohitesoham12
 
Mine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxMine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxRomil Mishra
 
Immutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfImmutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfDrew Moseley
 
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.elesangwon
 

Dernier (20)

Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfModule-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
 
signals in triangulation .. ...Surveying
signals in triangulation .. ...Surveyingsignals in triangulation .. ...Surveying
signals in triangulation .. ...Surveying
 
Gravity concentration_MI20612MI_________
Gravity concentration_MI20612MI_________Gravity concentration_MI20612MI_________
Gravity concentration_MI20612MI_________
 
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating System
 
Katarzyna Lipka-Sidor - BIM School Course
Katarzyna Lipka-Sidor - BIM School CourseKatarzyna Lipka-Sidor - BIM School Course
Katarzyna Lipka-Sidor - BIM School Course
 
System Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event SchedulingSystem Simulation and Modelling with types and Event Scheduling
System Simulation and Modelling with types and Event Scheduling
 
Levelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodLevelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument method
 
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithm
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithmComputer Graphics Introduction, Open GL, Line and Circle drawing algorithm
Computer Graphics Introduction, Open GL, Line and Circle drawing algorithm
 
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdfDEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
 
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMS
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMSHigh Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMS
High Voltage Engineering- OVER VOLTAGES IN ELECTRICAL POWER SYSTEMS
 
Research Methodology for Engineering pdf
Research Methodology for Engineering pdfResearch Methodology for Engineering pdf
Research Methodology for Engineering pdf
 
Earthing details of Electrical Substation
Earthing details of Electrical SubstationEarthing details of Electrical Substation
Earthing details of Electrical Substation
 
Engineering Drawing section of solid
Engineering Drawing     section of solidEngineering Drawing     section of solid
Engineering Drawing section of solid
 
Cost estimation approach: FP to COCOMO scenario based question
Cost estimation approach: FP to COCOMO scenario based questionCost estimation approach: FP to COCOMO scenario based question
Cost estimation approach: FP to COCOMO scenario based question
 
List of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfList of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdf
 
Python Programming for basic beginners.pptx
Python Programming for basic beginners.pptxPython Programming for basic beginners.pptx
Python Programming for basic beginners.pptx
 
Mine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptxMine Environment II Lab_MI10448MI__________.pptx
Mine Environment II Lab_MI10448MI__________.pptx
 
Immutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfImmutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdf
 
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.
2022 AWS DNA Hackathon 장애 대응 솔루션 jarvis.
 

computer vision

  • 1. Computer vision COMPUTER VISION PROBLEMS WHERE DEEP LEARNING HAS BEEN USED:
  • 2. Overview  Image Classification  Image Classification With Localization  Object Detection  Object Segmentation  Image Style Transfer  Image Colorization  Image Reconstruction  Image Super-Resolution  Image Synthesis  Other Problems
  • 3. What is the class of this image? There are many image classification tasks that involve photographs of objects. Two popular examples include the CIFAR-10 and CIFAR- 100 datasets that have photographs to be classified into 10 and 100 classes respectively . .
  • 4. Image Classification With Localization Image classification with localization involves assigning a class label to an image and showing the location of the object in the image by a bounding box (drawing a box around the object). Some examples of image classification with localization include: •Labeling an x-ray as cancer or not and drawing a box around the cancerous region. •Classifying photographs of animals and drawing a box around the animal in each scene
  • 5. Object Detection Object detection is the task of image classification with localization, although an image may contain multiple objects that require localization and classification. Some examples of object detection include: •Drawing a bounding box and labeling each object in a street scene. •Drawing a bounding box and labeling each object in an indoor photograph. •Drawing a bounding box and labeling each object in a landscape.
  • 6. Object Segmentation Object segmentation, or semantic segmentation, is the task of object detection where a line is drawn around each object detected in the image. Image segmentation is a more general problem of spitting an image into segments.
  • 7. Style Transfer Style transfer or neural style transfer is the task of learning style from one or more images and applying that style to a new image.
  • 8. Image Colorization Image colorization or neural colorization involves converting a grayscale image to a full color image. This task can be thought of as a type of photo filter or transform that may not have an objective evaluation. Examples include colorizing old black and white photographs and movies.
  • 9. Image Reconstruction Image reconstruction and image inpainting is the task of filling in missing or corrupt parts of an image. Datasets often involve using existing photo datasets and creating corrupted versions of photos that models must learn to repair.
  • 10. Image Super- Resolution Image super-resolution is the task of generating a new version of an image with a higher resolution and detail than the original image. Datasets often involve using existing photo datasets and creating down- scaled versions of photos for which models must learn to create super- resolution versions.
  • 11. Image Synthesis Image synthesis is the task of generating targeted modifications of existing images or entirely new images. It may include small modifications of image and video (e.g. image-to-image translations), such as: •Changing the style of an object in a scene. •Adding an object to a scene. •Adding a face to a scene.