Sparse scene flow segmentation for moving object detection in urban environments

Intelligent Vehicles Symposium(2011)

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摘要
Modern driver assistance systems such as collision avoidance or intersection assistance need reliable information on the current environment. Extracting such information from camera-based systems is a complex and challenging task for inner city traffic scenarios. This paper presents an approach for object detection utilizing sparse scene flow. For consecutive stereo images taken from a moving vehicle, corresponding interest points are extracted. Thus, for every interest point, disparity and optical flow values are known and consequently, scene flow can be calculated. Adjacent interest points describing a similar scene flow are considered to belong to one rigid object. The proposed method does not rely on object classes and allows for a robust detection of dynamic objects in traffic scenes. Leading vehicles are continuously detected for several frames. Oncoming objects are detected within five frames after their appearance.
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关键词
cameras,driver information systems,feature extraction,image motion analysis,image segmentation,natural scenes,object detection,road traffic,stereo image processing,camera-based system,consecutive stereo images,driver assistance system,information extraction,inner city traffic,moving object detection,moving vehicle detection,optical flow values,robust dynamic object detection,sparse scene flow segmentation,traffic scenes,urban environments
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