Map-Supervised Road Detection

2016 IEEE Intelligent Vehicles Symposium (IV)(2016)

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摘要
We propose an approach to detect drivable road area in monocular images. It is a self-supervised approach which doesn't require any human road annotations on images to train the road detection algorithm. Our approach reduces human labeling effort and makes training scalable. We combine the best of both supervised and unsupervised methods in our approach. First, we automatically generate training road annotations for images using OpenStreetMap(1), vehicle pose estimation sensors, and camera parameters. Next, we train a Convolutional Neural Network (CNN) for road detection using these annotations. We show that we are able to generate reasonably accurate training annotations in KITTI data-set [1]. We achieve state-of-the-art performance among the methods which do not require human annotation effort.
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关键词
map-supervised road detection,drivable road area detection,monocular images,unsupervised methods,supervised methods,training road annotations,OpenStreetMap,vehicle pose estimation sensors,camera parameters,convolutional neural network,KITTI data-set,CNN
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