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Deep Learning Using Computer Vision ...
~
Kanagaraj, Nitin.
Deep Learning Using Computer Vision in Self Driving Cars for Lane and Traffic Sign Detection.
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Deep Learning Using Computer Vision in Self Driving Cars for Lane and Traffic Sign Detection.
作者:
Kanagaraj, Nitin.
出版者:
Ann Arbor : ProQuest Dissertations & Theses, 2019
面頁冊數:
43 p.
附註:
Source: Masters Abstracts International, Volume: 81-03.
附註:
Advisor: Hicks, David.
Contained By:
Masters Abstracts International81-03.
標題:
Computer science.
電子資源:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=13898820
ISBN:
9781085618335
Deep Learning Using Computer Vision in Self Driving Cars for Lane and Traffic Sign Detection.
Kanagaraj, Nitin.
Deep Learning Using Computer Vision in Self Driving Cars for Lane and Traffic Sign Detection.
- Ann Arbor : ProQuest Dissertations & Theses, 2019 - 43 p.
Source: Masters Abstracts International, Volume: 81-03.
Thesis (M.S.)--Texas A&M University - Kingsville, 2019.
This item is not available from ProQuest Dissertations & Theses.
In the last few years, the amount of research in the field of self-driving cars has been immense with autonomous vehicles clocking in more than 10 million miles and providing a plethora of data to be trained and tested. The most complex part of training is the use of computer vision for feature extraction and object detection in real-time. There has been a lot of research done on improving the algorithms in image segmentation and keeping the user alert by scanning their facial expression. The proposed idea presents the use of Convoluted Neural Networks using Spatial Transformer Networks and lane detection in computer vision to improve lane detection in real time and to increase the efficiency of autonomous vehicles. The depth of the neural network will help in training the vehicles and during the testing phase the vehicles will learn to make decisions based on the training data. In case of sudden changes to the environment the vehicle will be able to make decisions quickly to prevent damage to lives. Along with lane detection, the self-driving cars must also be able to detect the traffic signs which is done using the Adam Optimizer which runs on top of the LeNet 5 architecture. The LeNet 5 architecture is also compared with the Feed Forward Neural Network. The accuracy of the LeNet 5 architecture was 97% and the accuracy of the Feed Forward Neural Network was 94%. Hence, it is proved that the accuracy of the LeNet5 architecture is better than the Feed Forward Neural Network.
ISBN: 9781085618335Subjects--Topical Terms:
199325
Computer science.
Deep Learning Using Computer Vision in Self Driving Cars for Lane and Traffic Sign Detection.
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In the last few years, the amount of research in the field of self-driving cars has been immense with autonomous vehicles clocking in more than 10 million miles and providing a plethora of data to be trained and tested. The most complex part of training is the use of computer vision for feature extraction and object detection in real-time. There has been a lot of research done on improving the algorithms in image segmentation and keeping the user alert by scanning their facial expression. The proposed idea presents the use of Convoluted Neural Networks using Spatial Transformer Networks and lane detection in computer vision to improve lane detection in real time and to increase the efficiency of autonomous vehicles. The depth of the neural network will help in training the vehicles and during the testing phase the vehicles will learn to make decisions based on the training data. In case of sudden changes to the environment the vehicle will be able to make decisions quickly to prevent damage to lives. Along with lane detection, the self-driving cars must also be able to detect the traffic signs which is done using the Adam Optimizer which runs on top of the LeNet 5 architecture. The LeNet 5 architecture is also compared with the Feed Forward Neural Network. The accuracy of the LeNet 5 architecture was 97% and the accuracy of the Feed Forward Neural Network was 94%. Hence, it is proved that the accuracy of the LeNet5 architecture is better than the Feed Forward Neural Network.
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