SlideShare une entreprise Scribd logo
1  sur  6
Télécharger pour lire hors ligne
Journal of Information Engineering and Applications
ISSN 2224-5782 (print) ISSN 2225-0506 (online)
Vol.3, No.13, 2013

www.iiste.org

An autonomous driverless car: an idea to overcome the urban
road challenges
Sheetal Ds Rathod
Department of Information Technology, JDIET Yavatmal
Amaravati University
Maharashtra, India
E-mail: rathod.sheetal24@gmail.com
Abstract
This paper discusses an autonomous robotically handled urban driving vehicle. The approach presents here the
number of features as innovations, which are well grounded in past re-search on autonomous driving and mobile
robotics, such as mapping, tracking, global and local planning, probabilistic localization. The results of the
Urban Challenge, along with prior experiments carried out by the research team, suggest that an autonomous
vehicle is capable of navigating in other vehicles and human traffic. It successfully demonstrated merging,
intersection handling, parking lot navigation, lane changes, and autonomous U-turns. These innovations include
the obstacle/curb detection method, the vehicle tracker, the various motion planners, and the behavioural
hierarchy that addresses a broad range of traffic situations. Together, these methods provide for a robust system
for urban in-traffic autonomous.
Keywords: Self driving Google-Car, LIDAR Sensor, Potion Sensor & Radar Sensor.
1.

Introduction

An autonomous vehicle is fundamentally defined as a passenger vehicle that drives by itself. This vehicle is also
referred to as an autopilot, driverless car, auto-drive car, or automated guided vehicle. In the future, automated
systems will help to avoid accidents and reduce congestion. The future vehicles will be capable of determining
the best route and warn each other about the conditions ahead. In this paper we are discussing the Google’s
autonomous driverless car.
The Google Driverless Car is a project by Google that involves developing technology for driverless cars. The
project is currently being led by Google engineer Sebastian Thrun, director of the Stanford Artificial Intelligence
Laboratory and co-inventor of Google Street View. Thrun's team at Stanford created the robotic vehicle Stanley
which won the 2005 DARPA Grand Challenge and its US$2 million prize from the United States Department of
Defense. The team developing the system consisted of 15 engineers working for Google, including Chris
Urmson, Mike Montemerlo, and Anthony Levandowski who had worked on the DARPA Grand and Urban
Challenges. The system combines information gathered from Google Street View with artificial intelligence
software that combines input from video cameras inside the car, a LIDAR sensor on top of the vehicle, radar
sensors on the front of the vehicle and a position sensor attached to one of the rear wheels that helps locate the
car's position on the map. In 2009, Google obtained 3,500 miles of Street View images from driverless cars with
minor human intervention. As of 2010, Google has tested several vehicles equipped with the system, driving
1,609 kilometres (1,000 mi) without any human intervention, in addition to 225,308 kilometres (140,000 mi)
with occasional human intervention. Google expects that the increased accuracy of its automated driving system
could help reduce the number of traffic-related injuries and deaths, while using energy and space on roadways
more efficiently.[1][2]
2.

A Driverless Google Car

The project team has equipped a test fleet of at least eight vehicles, consisting of six Toyota Prius, an Audi TT,
and a Lexus RX450h, each accompanied in the driver's seat by one of a dozen drivers with unblemished driving
records and in the passenger seat by one of Google's engineers. The car has traversed San Francisco's Lombard
Street, famed for its steep hairpin turns and through city traffic. The vehicles have driven over the Golden Gate
Bridge and on the Pacific Coast Highway, and have circled Lake Tahoe. The system drives at the speed limit it
has stored on its maps and maintains its distance from other vehicles using its system of sensors. The system
provides an override that allows a human driver to take control of the car by stepping on the brake or turning the
wheel, similar to cruise control systems already in cars.

34
Journal of Information Engineering and Applications
ISSN 2224-5782 (print) ISSN 2225-0506 (online)
Vol.3, No.13, 2013

www.iiste.org

Google has been working on it’s self driving car technology, where the user is required to enter an address in
Google maps, after which the system gathers information from Google Street View and combines it with
artificial intelligence software. The software includes information from video cameras in car, a LIDAR sensor on
top of vehicle, radar sensors in front and a position sensor attached to one of the rear wheels that helps locate the
car’s position on map. These sensors aid the car in maintaining distance with surrounding vehicles/objects.[2]-[3]
3.

The control mechanism of an autonomous vehicle

The control mechanism of an autonomous car consists of three main blocks as shown below:
1. Sensors
-laser sensors
-cameras
-radars
-ultrasonic sensors
-GPS, etc.
2. Logic Processing units
-Software
-Decision making
-Checking functionality
-User interface
3. Mechanical control systems
-Consists of servo motors and relays
-Driving wheel control
-Brake control
-Throttle control, etc. [2]
4.

Control Mechanism and Embedded system of vehicle
4.1 Artificial Intelligence Software:

Artificial intelligence is the making of intelligent machines, especially intelligent computer programs. It is
related to the similar task of using computers to understand human intelligence. This system exhibits human
intelligence and behavior include robots, expert systems, voice recognition, natural language processing, face
recognition, handwriting recognition, game intelligence, artificial creativity and more.

Figure 1 Google car
By this technology both Google map and Google street view are interrelated.[2]
35
Journal of Information Engineering and Applications
ISSN 2224-5782 (print) ISSN 2225-0506 (online)
Vol.3, No.13, 2013

www.iiste.org

4.2 Google Map:
Google map is the most powerfull and friendly service provided by google, which helps to find local business
information including business locations, driving directions, navigations, contact information and so on.

Figure 2 Google map
4.3 Google Street View:
In order to provide the street level images of entire cities all around the world Google Street View (GSV) has
been extended by Google. This service is providing a number of unreachable and high density of geo-positioned
images of world. A GSV user can roam around the city streets, by enabling him a wide range of uses such as
finding any specific items.
4.4 LIDAR Sensor:
Light Detection And Ranging is an optical remote sensing technology that can measure the distance to, or other
properties of a target by illuminating the target with light, often using pulses from a laser. LIDAR uses
ultraviolet, visible, or near infrared light to image objects and can be used with a wide range of targets, including
non-metallic objects, rocks, rain, chemical compounds, aerosols, clouds and even single molecules. A narrow
laser beam can be used to map physical features with very high resolution.

Figure 3 Control system established in Google car

36
Journal of Information Engineering and Applications
ISSN 2224-5782 (print) ISSN 2225-0506 (online)
Vol.3, No.13, 2013

www.iiste.org

Google's robotic test cars have about $150,000 in equipment including a $70,000 LIDAR (laser radar)
system. The range finder mounted on the top is a Velodyne 64-beam laser. This laser allows the vehicle to
generate a detailed 3D map of its environment. The car then takes these generated maps and combines them with
high-resolution maps of the world, producing different types of data models that allow it to drive it self.
4.4.1 Velodyne 64-beam laser :
The HDL-64E LiDAR sensor is designed for obstacle detection and navigation of autonomous ground vehicles
and marine vessels. Its durability, 360° field of view and very high data rate makes this sensor ideal for the most
demanding perception applications as well as 3D mobile data collection and mapping applications. With its full
360° horizontal field of view by 26.8° vertical field of view, 5-15 Hz user-selectable frame rate and over 1.3
million points per second output rate, the HDL-64E provides all the distancing sensing data you'll ever need.

Figure 4 The Velodyne Lidar HDL-64E

The HDL-64E's patented one-piece design uses 64 fixed-mounted lasers to measure the surrounding
environment, each mechanically mounted to a specific vertical angle, with the entire unit spinning. This
approach dramatically increases reliability, field of view and point cloud density.[6]
4.5 Position Sensor:
This device provides the latitude, longitude and altitude together with the corresponding standard deviation and
the standard NMEA messages with a frequency of 5 Hz. When geostationary satellites providing the GPS drift
correction are visible from the car, the unit enters the di erential GPS mode (high precision GPS). When no
correction signal is available, the device outputs standard precision GPS.
4.6 Radar Sensor:
Radar (Radio Detection And Ranging) is an object-detection system which uses radio waves to determine the
range, altitude, direction, or speed of objects. It can be used to detect aircraft, ships, spacecraft, guided missiles,
motor vehicles, weather formations, and terrain. The radar dish or antenna transmits pulses of radio waves or
microwaves which bounce off any object in their path. The object returns a tiny part of the wave’s energy to a
dish or antenna which is usually located at the same site as the transmitter.
5.

Result

Google’s approach involves driving a route manually, with all the sensors switched on, to build a detailed 3D
map of features such as signs, guard-rails and overpasses. When the autonomous-driving mode is switched on
(accompanied by a spaceship sound-effect), the software can predict hazards with reasonable accuracy. Every
time a car follows a particular route, it collects all the data with the help og GSV and Google maps. Google’s
37
Journal of Information Engineering and Applications
ISSN 2224-5782 (print) ISSN 2225-0506 (online)
Vol.3, No.13, 2013

www.iiste.org

software also ingests data on speed limits and recorded accidents. Because the car’s roof-mounted sensors can
see in all directions, it arguably has greater situational awareness than a human driver.
6.

Conclusion

A driverless cars clock up more miles, solutions are being worked out. To evaluate the danger posed by an object
on the road, Google’s software takes into account the behavior of other vehicles. If other cars do not swerve or
brake to avoid it, it is more likely to be a plastic bag than a rock. “Fusing” data from various types of sensors can
also remove uncertainty. To judge distances, for example, radar or lidar sensors in the front bumpers can be
supplemented by video cameras. Infra-red sensors can pick up the heat signature of a human obscured by fog.
One area where humans are still struggling in judging an object’s material or weight. Unable to tell the difference
between a block of steel on the carriageway and a chunk of mattress, a self-driving vehicle might brake harder
than would be wise.
7.

References

Journal of Field Robotics 25(9), 569–597 (2008) Cˇ 2008 Wiley Periodicals, Inc. Published online in Wiley
InterScience (www.interscience.wiley.com).
http://www.mechanicalengineeringblog.com/3392-self-driving-car-technology-autonomous-car-car-of-thefuture/
Buehler, M., Iagnemma, K., & Singh, S. (Eds.). (2006). The 2005 DARPA Grand Challenge: The great robot
race. Berlin: Springer.
DARPA. (2007). Urban Challenge rules, revision Oct. 27, 2007. See www.darpa.mil/grandchallenge/rules.asp.
Ferguson, D., & Stentz, A. (2005). Field D :An interpolation-based path planner and replanner. In Robotics
search: Results of the 12th International Symposium (ISRR’05), San Francisco, CA, edited by S. Thrun, R.
Brooks, & H. Durrant-Whyte (pp. 239–253). Berlin: Springer
http://velodynelidar.com/lidar/hdlproducts/hdl64e.aspx
http://spectrum.ieee.org/automaton/robotics/artificial-intelligence/how-google-self-driving-car-works
U.S. Department of Transportation (2005). Transportation statistics annual report. Bureau of Transportation
Statistics, U.S. Department of Transportation.
Simmons, R., & Apfelbaum, D. (1998). A task description language for robot control. In Proceedings of the
Con- ference on Intelligent Robotics and Systems (IROS), Victoria, CA.

38
This academic article was published by The International Institute for Science,
Technology and Education (IISTE). The IISTE is a pioneer in the Open Access
Publishing service based in the U.S. and Europe. The aim of the institute is
Accelerating Global Knowledge Sharing.
More information about the publisher can be found in the IISTE’s homepage:
http://www.iiste.org
CALL FOR JOURNAL PAPERS
The IISTE is currently hosting more than 30 peer-reviewed academic journals and
collaborating with academic institutions around the world. There’s no deadline for
submission. Prospective authors of IISTE journals can find the submission
instruction on the following page: http://www.iiste.org/journals/
The IISTE
editorial team promises to the review and publish all the qualified submissions in a
fast manner. All the journals articles are available online to the readers all over the
world without financial, legal, or technical barriers other than those inseparable from
gaining access to the internet itself. Printed version of the journals is also available
upon request of readers and authors.
MORE RESOURCES
Book publication information: http://www.iiste.org/book/
Recent conferences: http://www.iiste.org/conference/
IISTE Knowledge Sharing Partners
EBSCO, Index Copernicus, Ulrich's Periodicals Directory, JournalTOCS, PKP Open
Archives Harvester, Bielefeld Academic Search Engine, Elektronische
Zeitschriftenbibliothek EZB, Open J-Gate, OCLC WorldCat, Universe Digtial
Library , NewJour, Google Scholar

Contenu connexe

Tendances

Driverless car - Rahul Gosai
Driverless car - Rahul GosaiDriverless car - Rahul Gosai
Driverless car - Rahul Gosai
Rahul Gosai
 
GOOGLE'S AUTONOMUS CAR
GOOGLE'S AUTONOMUS CARGOOGLE'S AUTONOMUS CAR
GOOGLE'S AUTONOMUS CAR
jolsnaj
 
Google Driverless (Autonomous) Car
Google Driverless (Autonomous) CarGoogle Driverless (Autonomous) Car
Google Driverless (Autonomous) Car
Farhan Badar
 

Tendances (20)

Autonomous car
Autonomous carAutonomous car
Autonomous car
 
Presentation on driverless cars by shahin hussan
Presentation on driverless cars by shahin hussan Presentation on driverless cars by shahin hussan
Presentation on driverless cars by shahin hussan
 
Driverless car - Rahul Gosai
Driverless car - Rahul GosaiDriverless car - Rahul Gosai
Driverless car - Rahul Gosai
 
Driverless car
Driverless carDriverless car
Driverless car
 
Google SDC disengagements Report annual-15
Google SDC disengagements Report annual-15Google SDC disengagements Report annual-15
Google SDC disengagements Report annual-15
 
Google's Driverless Car report
Google's Driverless Car reportGoogle's Driverless Car report
Google's Driverless Car report
 
Robotic car seminar report
Robotic car seminar reportRobotic car seminar report
Robotic car seminar report
 
Google self driving car technology
Google self driving car technologyGoogle self driving car technology
Google self driving car technology
 
GOOGLE CAR(autonomous car)
GOOGLE CAR(autonomous  car)GOOGLE CAR(autonomous  car)
GOOGLE CAR(autonomous car)
 
Autonomous car
Autonomous carAutonomous car
Autonomous car
 
Autonomous car
Autonomous carAutonomous car
Autonomous car
 
Driverless cars
Driverless carsDriverless cars
Driverless cars
 
GOOGLE'S AUTONOMUS CAR
GOOGLE'S AUTONOMUS CARGOOGLE'S AUTONOMUS CAR
GOOGLE'S AUTONOMUS CAR
 
Autonomous car(driver less car) (self driving car)
Autonomous car(driver less car) (self driving car)Autonomous car(driver less car) (self driving car)
Autonomous car(driver less car) (self driving car)
 
Googlecar 150915202230-lva1-app6892
Googlecar 150915202230-lva1-app6892Googlecar 150915202230-lva1-app6892
Googlecar 150915202230-lva1-app6892
 
google driver less car
google driver less cargoogle driver less car
google driver less car
 
Google driverless cars
Google driverless carsGoogle driverless cars
Google driverless cars
 
Autonomous car
Autonomous carAutonomous car
Autonomous car
 
Autonomous-cars / Self Driving Cars
Autonomous-cars / Self Driving CarsAutonomous-cars / Self Driving Cars
Autonomous-cars / Self Driving Cars
 
Google Driverless (Autonomous) Car
Google Driverless (Autonomous) CarGoogle Driverless (Autonomous) Car
Google Driverless (Autonomous) Car
 

Similaire à An autonomous driverless car

Week 8 Expository Essay 2 Revision 65 pointsContent and De.docx
Week 8 Expository Essay 2 Revision 65 pointsContent and De.docxWeek 8 Expository Essay 2 Revision 65 pointsContent and De.docx
Week 8 Expository Essay 2 Revision 65 pointsContent and De.docx
melbruce90096
 
GOOGLE SELF DRIVING CAR.pptx
GOOGLE SELF DRIVING CAR.pptxGOOGLE SELF DRIVING CAR.pptx
GOOGLE SELF DRIVING CAR.pptx
PRINCEROXX2
 
Autonomous car
Autonomous carAutonomous car
Autonomous car
Aasim Sheraz
 
(The google car) Presentation
(The google car) Presentation(The google car) Presentation
(The google car) Presentation
Asif Choudhury
 

Similaire à An autonomous driverless car (20)

Driverless Vehicles: Future Outlook on Intelligent Transportation
Driverless Vehicles: Future Outlook on Intelligent TransportationDriverless Vehicles: Future Outlook on Intelligent Transportation
Driverless Vehicles: Future Outlook on Intelligent Transportation
 
Google car
Google carGoogle car
Google car
 
Anshal ppt
Anshal pptAnshal ppt
Anshal ppt
 
Google driverless car technical seminar report (.docx)
Google driverless car technical seminar report (.docx)Google driverless car technical seminar report (.docx)
Google driverless car technical seminar report (.docx)
 
Datacommunication presentation
Datacommunication presentationDatacommunication presentation
Datacommunication presentation
 
Review of Environment Perception for Intelligent Vehicles
Review of Environment Perception for Intelligent VehiclesReview of Environment Perception for Intelligent Vehicles
Review of Environment Perception for Intelligent Vehicles
 
A Novel Review On Google Driverless Autonomous Vehicle
A Novel Review On Google Driverless Autonomous VehicleA Novel Review On Google Driverless Autonomous Vehicle
A Novel Review On Google Driverless Autonomous Vehicle
 
Autonomouscar
Autonomouscar Autonomouscar
Autonomouscar
 
Week 8 Expository Essay 2 Revision 65 pointsContent and De.docx
Week 8 Expository Essay 2 Revision 65 pointsContent and De.docxWeek 8 Expository Essay 2 Revision 65 pointsContent and De.docx
Week 8 Expository Essay 2 Revision 65 pointsContent and De.docx
 
Smart car
Smart carSmart car
Smart car
 
IRJET- Working of Autonomous Vehicles
IRJET-  	  Working of Autonomous VehiclesIRJET-  	  Working of Autonomous Vehicles
IRJET- Working of Autonomous Vehicles
 
GOOGLE SELF DRIVING CAR.pptx
GOOGLE SELF DRIVING CAR.pptxGOOGLE SELF DRIVING CAR.pptx
GOOGLE SELF DRIVING CAR.pptx
 
DRIVER LESS CAR
DRIVER LESS CARDRIVER LESS CAR
DRIVER LESS CAR
 
Waymo ppt
Waymo pptWaymo ppt
Waymo ppt
 
Vehicle Tracking System For Commercial Vehicles
Vehicle Tracking System For Commercial VehiclesVehicle Tracking System For Commercial Vehicles
Vehicle Tracking System For Commercial Vehicles
 
Sazz
SazzSazz
Sazz
 
IRJET - A Review on Fully Autonomous Vehicle
IRJET - A Review on Fully Autonomous VehicleIRJET - A Review on Fully Autonomous Vehicle
IRJET - A Review on Fully Autonomous Vehicle
 
Autonomous car
Autonomous carAutonomous car
Autonomous car
 
vinay 155.pptx
vinay 155.pptxvinay 155.pptx
vinay 155.pptx
 
(The google car) Presentation
(The google car) Presentation(The google car) Presentation
(The google car) Presentation
 

Plus de Alexander Decker

Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...
Alexander Decker
 
A usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websitesA usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websites
Alexander Decker
 
A universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banksA universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banks
Alexander Decker
 
A unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized dA unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized d
Alexander Decker
 
A trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistanceA trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistance
Alexander Decker
 
A transformational generative approach towards understanding al-istifham
A transformational  generative approach towards understanding al-istifhamA transformational  generative approach towards understanding al-istifham
A transformational generative approach towards understanding al-istifham
Alexander Decker
 
A time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibiaA time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibia
Alexander Decker
 
A therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school childrenA therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school children
Alexander Decker
 
A theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banksA theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banks
Alexander Decker
 
A systematic evaluation of link budget for
A systematic evaluation of link budget forA systematic evaluation of link budget for
A systematic evaluation of link budget for
Alexander Decker
 
A synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjabA synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjab
Alexander Decker
 
A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...
Alexander Decker
 
A survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incrementalA survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incremental
Alexander Decker
 
A survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniquesA survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniques
Alexander Decker
 
A survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo dbA survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo db
Alexander Decker
 
A survey on challenges to the media cloud
A survey on challenges to the media cloudA survey on challenges to the media cloud
A survey on challenges to the media cloud
Alexander Decker
 
A survey of provenance leveraged
A survey of provenance leveragedA survey of provenance leveraged
A survey of provenance leveraged
Alexander Decker
 
A survey of private equity investments in kenya
A survey of private equity investments in kenyaA survey of private equity investments in kenya
A survey of private equity investments in kenya
Alexander Decker
 
A study to measures the financial health of
A study to measures the financial health ofA study to measures the financial health of
A study to measures the financial health of
Alexander Decker
 

Plus de Alexander Decker (20)

Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...
 
A validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale inA validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale in
 
A usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websitesA usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websites
 
A universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banksA universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banks
 
A unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized dA unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized d
 
A trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistanceA trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistance
 
A transformational generative approach towards understanding al-istifham
A transformational  generative approach towards understanding al-istifhamA transformational  generative approach towards understanding al-istifham
A transformational generative approach towards understanding al-istifham
 
A time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibiaA time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibia
 
A therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school childrenA therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school children
 
A theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banksA theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banks
 
A systematic evaluation of link budget for
A systematic evaluation of link budget forA systematic evaluation of link budget for
A systematic evaluation of link budget for
 
A synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjabA synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjab
 
A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...
 
A survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incrementalA survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incremental
 
A survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniquesA survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniques
 
A survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo dbA survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo db
 
A survey on challenges to the media cloud
A survey on challenges to the media cloudA survey on challenges to the media cloud
A survey on challenges to the media cloud
 
A survey of provenance leveraged
A survey of provenance leveragedA survey of provenance leveraged
A survey of provenance leveraged
 
A survey of private equity investments in kenya
A survey of private equity investments in kenyaA survey of private equity investments in kenya
A survey of private equity investments in kenya
 
A study to measures the financial health of
A study to measures the financial health ofA study to measures the financial health of
A study to measures the financial health of
 

Dernier

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
WSO2
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Dernier (20)

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 

An autonomous driverless car

  • 1. Journal of Information Engineering and Applications ISSN 2224-5782 (print) ISSN 2225-0506 (online) Vol.3, No.13, 2013 www.iiste.org An autonomous driverless car: an idea to overcome the urban road challenges Sheetal Ds Rathod Department of Information Technology, JDIET Yavatmal Amaravati University Maharashtra, India E-mail: rathod.sheetal24@gmail.com Abstract This paper discusses an autonomous robotically handled urban driving vehicle. The approach presents here the number of features as innovations, which are well grounded in past re-search on autonomous driving and mobile robotics, such as mapping, tracking, global and local planning, probabilistic localization. The results of the Urban Challenge, along with prior experiments carried out by the research team, suggest that an autonomous vehicle is capable of navigating in other vehicles and human traffic. It successfully demonstrated merging, intersection handling, parking lot navigation, lane changes, and autonomous U-turns. These innovations include the obstacle/curb detection method, the vehicle tracker, the various motion planners, and the behavioural hierarchy that addresses a broad range of traffic situations. Together, these methods provide for a robust system for urban in-traffic autonomous. Keywords: Self driving Google-Car, LIDAR Sensor, Potion Sensor & Radar Sensor. 1. Introduction An autonomous vehicle is fundamentally defined as a passenger vehicle that drives by itself. This vehicle is also referred to as an autopilot, driverless car, auto-drive car, or automated guided vehicle. In the future, automated systems will help to avoid accidents and reduce congestion. The future vehicles will be capable of determining the best route and warn each other about the conditions ahead. In this paper we are discussing the Google’s autonomous driverless car. The Google Driverless Car is a project by Google that involves developing technology for driverless cars. The project is currently being led by Google engineer Sebastian Thrun, director of the Stanford Artificial Intelligence Laboratory and co-inventor of Google Street View. Thrun's team at Stanford created the robotic vehicle Stanley which won the 2005 DARPA Grand Challenge and its US$2 million prize from the United States Department of Defense. The team developing the system consisted of 15 engineers working for Google, including Chris Urmson, Mike Montemerlo, and Anthony Levandowski who had worked on the DARPA Grand and Urban Challenges. The system combines information gathered from Google Street View with artificial intelligence software that combines input from video cameras inside the car, a LIDAR sensor on top of the vehicle, radar sensors on the front of the vehicle and a position sensor attached to one of the rear wheels that helps locate the car's position on the map. In 2009, Google obtained 3,500 miles of Street View images from driverless cars with minor human intervention. As of 2010, Google has tested several vehicles equipped with the system, driving 1,609 kilometres (1,000 mi) without any human intervention, in addition to 225,308 kilometres (140,000 mi) with occasional human intervention. Google expects that the increased accuracy of its automated driving system could help reduce the number of traffic-related injuries and deaths, while using energy and space on roadways more efficiently.[1][2] 2. A Driverless Google Car The project team has equipped a test fleet of at least eight vehicles, consisting of six Toyota Prius, an Audi TT, and a Lexus RX450h, each accompanied in the driver's seat by one of a dozen drivers with unblemished driving records and in the passenger seat by one of Google's engineers. The car has traversed San Francisco's Lombard Street, famed for its steep hairpin turns and through city traffic. The vehicles have driven over the Golden Gate Bridge and on the Pacific Coast Highway, and have circled Lake Tahoe. The system drives at the speed limit it has stored on its maps and maintains its distance from other vehicles using its system of sensors. The system provides an override that allows a human driver to take control of the car by stepping on the brake or turning the wheel, similar to cruise control systems already in cars. 34
  • 2. Journal of Information Engineering and Applications ISSN 2224-5782 (print) ISSN 2225-0506 (online) Vol.3, No.13, 2013 www.iiste.org Google has been working on it’s self driving car technology, where the user is required to enter an address in Google maps, after which the system gathers information from Google Street View and combines it with artificial intelligence software. The software includes information from video cameras in car, a LIDAR sensor on top of vehicle, radar sensors in front and a position sensor attached to one of the rear wheels that helps locate the car’s position on map. These sensors aid the car in maintaining distance with surrounding vehicles/objects.[2]-[3] 3. The control mechanism of an autonomous vehicle The control mechanism of an autonomous car consists of three main blocks as shown below: 1. Sensors -laser sensors -cameras -radars -ultrasonic sensors -GPS, etc. 2. Logic Processing units -Software -Decision making -Checking functionality -User interface 3. Mechanical control systems -Consists of servo motors and relays -Driving wheel control -Brake control -Throttle control, etc. [2] 4. Control Mechanism and Embedded system of vehicle 4.1 Artificial Intelligence Software: Artificial intelligence is the making of intelligent machines, especially intelligent computer programs. It is related to the similar task of using computers to understand human intelligence. This system exhibits human intelligence and behavior include robots, expert systems, voice recognition, natural language processing, face recognition, handwriting recognition, game intelligence, artificial creativity and more. Figure 1 Google car By this technology both Google map and Google street view are interrelated.[2] 35
  • 3. Journal of Information Engineering and Applications ISSN 2224-5782 (print) ISSN 2225-0506 (online) Vol.3, No.13, 2013 www.iiste.org 4.2 Google Map: Google map is the most powerfull and friendly service provided by google, which helps to find local business information including business locations, driving directions, navigations, contact information and so on. Figure 2 Google map 4.3 Google Street View: In order to provide the street level images of entire cities all around the world Google Street View (GSV) has been extended by Google. This service is providing a number of unreachable and high density of geo-positioned images of world. A GSV user can roam around the city streets, by enabling him a wide range of uses such as finding any specific items. 4.4 LIDAR Sensor: Light Detection And Ranging is an optical remote sensing technology that can measure the distance to, or other properties of a target by illuminating the target with light, often using pulses from a laser. LIDAR uses ultraviolet, visible, or near infrared light to image objects and can be used with a wide range of targets, including non-metallic objects, rocks, rain, chemical compounds, aerosols, clouds and even single molecules. A narrow laser beam can be used to map physical features with very high resolution. Figure 3 Control system established in Google car 36
  • 4. Journal of Information Engineering and Applications ISSN 2224-5782 (print) ISSN 2225-0506 (online) Vol.3, No.13, 2013 www.iiste.org Google's robotic test cars have about $150,000 in equipment including a $70,000 LIDAR (laser radar) system. The range finder mounted on the top is a Velodyne 64-beam laser. This laser allows the vehicle to generate a detailed 3D map of its environment. The car then takes these generated maps and combines them with high-resolution maps of the world, producing different types of data models that allow it to drive it self. 4.4.1 Velodyne 64-beam laser : The HDL-64E LiDAR sensor is designed for obstacle detection and navigation of autonomous ground vehicles and marine vessels. Its durability, 360° field of view and very high data rate makes this sensor ideal for the most demanding perception applications as well as 3D mobile data collection and mapping applications. With its full 360° horizontal field of view by 26.8° vertical field of view, 5-15 Hz user-selectable frame rate and over 1.3 million points per second output rate, the HDL-64E provides all the distancing sensing data you'll ever need. Figure 4 The Velodyne Lidar HDL-64E The HDL-64E's patented one-piece design uses 64 fixed-mounted lasers to measure the surrounding environment, each mechanically mounted to a specific vertical angle, with the entire unit spinning. This approach dramatically increases reliability, field of view and point cloud density.[6] 4.5 Position Sensor: This device provides the latitude, longitude and altitude together with the corresponding standard deviation and the standard NMEA messages with a frequency of 5 Hz. When geostationary satellites providing the GPS drift correction are visible from the car, the unit enters the di erential GPS mode (high precision GPS). When no correction signal is available, the device outputs standard precision GPS. 4.6 Radar Sensor: Radar (Radio Detection And Ranging) is an object-detection system which uses radio waves to determine the range, altitude, direction, or speed of objects. It can be used to detect aircraft, ships, spacecraft, guided missiles, motor vehicles, weather formations, and terrain. The radar dish or antenna transmits pulses of radio waves or microwaves which bounce off any object in their path. The object returns a tiny part of the wave’s energy to a dish or antenna which is usually located at the same site as the transmitter. 5. Result Google’s approach involves driving a route manually, with all the sensors switched on, to build a detailed 3D map of features such as signs, guard-rails and overpasses. When the autonomous-driving mode is switched on (accompanied by a spaceship sound-effect), the software can predict hazards with reasonable accuracy. Every time a car follows a particular route, it collects all the data with the help og GSV and Google maps. Google’s 37
  • 5. Journal of Information Engineering and Applications ISSN 2224-5782 (print) ISSN 2225-0506 (online) Vol.3, No.13, 2013 www.iiste.org software also ingests data on speed limits and recorded accidents. Because the car’s roof-mounted sensors can see in all directions, it arguably has greater situational awareness than a human driver. 6. Conclusion A driverless cars clock up more miles, solutions are being worked out. To evaluate the danger posed by an object on the road, Google’s software takes into account the behavior of other vehicles. If other cars do not swerve or brake to avoid it, it is more likely to be a plastic bag than a rock. “Fusing” data from various types of sensors can also remove uncertainty. To judge distances, for example, radar or lidar sensors in the front bumpers can be supplemented by video cameras. Infra-red sensors can pick up the heat signature of a human obscured by fog. One area where humans are still struggling in judging an object’s material or weight. Unable to tell the difference between a block of steel on the carriageway and a chunk of mattress, a self-driving vehicle might brake harder than would be wise. 7. References Journal of Field Robotics 25(9), 569–597 (2008) Cˇ 2008 Wiley Periodicals, Inc. Published online in Wiley InterScience (www.interscience.wiley.com). http://www.mechanicalengineeringblog.com/3392-self-driving-car-technology-autonomous-car-car-of-thefuture/ Buehler, M., Iagnemma, K., & Singh, S. (Eds.). (2006). The 2005 DARPA Grand Challenge: The great robot race. Berlin: Springer. DARPA. (2007). Urban Challenge rules, revision Oct. 27, 2007. See www.darpa.mil/grandchallenge/rules.asp. Ferguson, D., & Stentz, A. (2005). Field D :An interpolation-based path planner and replanner. In Robotics search: Results of the 12th International Symposium (ISRR’05), San Francisco, CA, edited by S. Thrun, R. Brooks, & H. Durrant-Whyte (pp. 239–253). Berlin: Springer http://velodynelidar.com/lidar/hdlproducts/hdl64e.aspx http://spectrum.ieee.org/automaton/robotics/artificial-intelligence/how-google-self-driving-car-works U.S. Department of Transportation (2005). Transportation statistics annual report. Bureau of Transportation Statistics, U.S. Department of Transportation. Simmons, R., & Apfelbaum, D. (1998). A task description language for robot control. In Proceedings of the Con- ference on Intelligent Robotics and Systems (IROS), Victoria, CA. 38
  • 6. This academic article was published by The International Institute for Science, Technology and Education (IISTE). The IISTE is a pioneer in the Open Access Publishing service based in the U.S. and Europe. The aim of the institute is Accelerating Global Knowledge Sharing. More information about the publisher can be found in the IISTE’s homepage: http://www.iiste.org CALL FOR JOURNAL PAPERS The IISTE is currently hosting more than 30 peer-reviewed academic journals and collaborating with academic institutions around the world. There’s no deadline for submission. Prospective authors of IISTE journals can find the submission instruction on the following page: http://www.iiste.org/journals/ The IISTE editorial team promises to the review and publish all the qualified submissions in a fast manner. All the journals articles are available online to the readers all over the world without financial, legal, or technical barriers other than those inseparable from gaining access to the internet itself. Printed version of the journals is also available upon request of readers and authors. MORE RESOURCES Book publication information: http://www.iiste.org/book/ Recent conferences: http://www.iiste.org/conference/ IISTE Knowledge Sharing Partners EBSCO, Index Copernicus, Ulrich's Periodicals Directory, JournalTOCS, PKP Open Archives Harvester, Bielefeld Academic Search Engine, Elektronische Zeitschriftenbibliothek EZB, Open J-Gate, OCLC WorldCat, Universe Digtial Library , NewJour, Google Scholar