4.4 Article

Multi-task deep learning with optical flow features for self-driving cars

期刊

IET INTELLIGENT TRANSPORT SYSTEMS
卷 14, 期 13, 页码 1845-1854

出版社

WILEY
DOI: 10.1049/iet-its.2020.0439

关键词

traffic engineering computing; image sequences; video signal processing; feature extraction; learning (artificial intelligence); image motion analysis; automobiles; cameras; monocular dash camera; vehicle control; consecutive images; control signal; motion-based feature; flow predictor; self-supervised deep network; supervised multitask deep network; optical flow features; dash camera video; multitask deep learning; self-driving cars

资金

  1. Royal Society [IES\ R2\ 181024, IES\ R1\ 191147]

向作者/读者索取更多资源

The control of self-driving cars has received growing attention recently. Although existing research shows promising results in the vehicle control using video from a monocular dash camera, there has been very limited work on directly learning vehicle control from motion-based cues. Such cues are powerful features for visual representations, as they encode the per-pixel movement between two consecutive images, allowing a system to effectively map the features into the control signal. The authors propose a new framework that exploits the use of a motion-based feature known as optical flow extracted from the dash camera and demonstrates that such a feature is effective in significantly improving the accuracy of the control signals. The proposed framework involves two main components. The flow predictor, as a self-supervised deep network, models the underlying scene structure from consecutive frames and generates the optical flow. The controller, as a supervised multi-task deep network, predicts both steer angle and speed. The authors demonstrate that the proposed framework using the optical flow features can effectively predict control signals from a dash camera video. Using the Cityscapes data set, the authors validate that the system prediction has errors as low as 0.0130 rad/s on steer angle and 0.0615 m/s on speed, outperforming existing research.

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