Object flow: A descriptor for classifying traffic motion.

Intelligent Vehicles Symposium(2010)

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摘要
We present and evaluate a novel scene descriptor for classifying urban traffic by object motion. Atomic 3D flow vectors are extracted and compensated for the vehicle's egomotion, using stereo video sequences. Votes cast by each flow vector are accumulated in a bird's eye view histogram grid. Since we are directly using low-level object flow, no prior object detection or tracking is needed. We demonstrate the effectiveness of the proposed descriptor by comparing it to two simpler baselines on the task of classifying more than 100 challenging video sequences into intersection and non-intersection scenarios. Our experiments reveal good classification performance in busy traffic situations, making our method a valuable complement to traditional approaches based on lane markings.
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关键词
feature extraction,image motion analysis,pattern classification,road traffic,stereo image processing,traffic engineering computing,vehicles,atomic 3D flow vector,bird eye view histogram grid,busy traffic situation,lane marking,object flow,object motion,scene descriptor,stereo video sequences,traffic motion classification,vehicle egomotion
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