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As part of a complete software stack for autonomous driving, NVIDIA has a neural-network-based system, known as PilotNet, which outputs angles given images of the road ahead. PilotNet is trained using road paired with the steering angles generated by a human driving a-collection car. It derives the necessary domain knowledge by observing drivers. This eliminates the need for human engineers to anticipate what important in an image and foresee all the necessary rules for safe driving. tests demonstrated that PilotNet can successfully perform lane keeping in wide variety of driving conditions, regardless of whether lane markings are or not. The goal of the work described here is to explain what PilotNet learns and it makes its decisions. To this end we developed a method for determining elements in the road image most influence PilotNet's steering decision. show that PilotNet indeed learns to recognize relevant objects on the. In addition to learning the obvious features such as lane markings, edges of, and other cars, PilotNet learns more subtle features that would be hard anticipate and program by engineers, for example, bushes lining the edge of road and atypical vehicle classes.
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Mariusz Bojarski
Supélec
Philip Yeres
New York University
Anna Choromanska
New York University
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Bojarski et al. (Tue,) studied this question.
synapsesocial.com/papers/6a12e03216f0ac689b9e4542 — DOI: https://doi.org/10.48550/arxiv.1704.07911