Failure Prediction for Autonomous Driving

Preprint English OPEN
Hecker, Simon; Dai, Dengxin; Van Gool, Luc;
  • Subject: Computer Science - Computer Vision and Pattern Recognition

The primary focus of autonomous driving research is to improve driving accuracy. While great progress has been made, state-of-the-art algorithms still fail at times. Such failures may have catastrophic consequences. It therefore is important that automated cars foresee ... View more
  • References (47)
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