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Winning the ICCV 2019 Learning to Drive Challenge

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arxiv 1910.10318 v1 pith:I7NU2IIU submitted 2019-10-23 cs.CV cs.LG

Winning the ICCV 2019 Learning to Drive Challenge

classification cs.CV cs.LG
keywords challengeanglebestdatadrivedrivingfusingiccv
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Autonomous driving has a significant impact on society. Predicting vehicle trajectories, specifically, angle and speed, is important for safe and comfortable driving. This work focuses on fusing inputs from camera sensors and visual map data which lead to significant improvement in performance and plays a key role in winning the challenge. We use pre-trained CNN's for processing image frames, a neural network for fusing the image representation with visual map data, and train a sequence model for time series prediction. We demonstrate the best performing MSE angle and best performance overall, to win the ICCV 2019 Learning to Drive challenge. We make our models and code publicly available.

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