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arxiv 1504.01716 v3 pith:GJDRLGIR submitted 2015-04-07 cs.RO cs.CV

An Empirical Evaluation of Deep Learning on Highway Driving

classification cs.RO cs.CV
keywords deeplearningdrivingcomputerdatahighwayvisionautonomous
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Numerous groups have applied a variety of deep learning techniques to computer vision problems in highway perception scenarios. In this paper, we presented a number of empirical evaluations of recent deep learning advances. Computer vision, combined with deep learning, has the potential to bring about a relatively inexpensive, robust solution to autonomous driving. To prepare deep learning for industry uptake and practical applications, neural networks will require large data sets that represent all possible driving environments and scenarios. We collect a large data set of highway data and apply deep learning and computer vision algorithms to problems such as car and lane detection. We show how existing convolutional neural networks (CNNs) can be used to perform lane and vehicle detection while running at frame rates required for a real-time system. Our results lend credence to the hypothesis that deep learning holds promise for autonomous driving.

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Cited by 3 Pith papers

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  3. A Fog Computing Framework for Autonomous Driving Assist: Architecture, Experiments, and Challenges

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