Learning pedestrian dynamics from the real world

ICCV(2009)

引用 186|浏览81
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摘要
In this paper we describe a method to learn parameters which govern pedestrian motion by observing video data. Our learning framework is based on variational mode learning and allows us to efficiently optimize a continuous pedestrian cost model. We show that this model can be trained on automatic tracking results, and provides realistic and accurate pedestrian motions.
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关键词
predictive models,computational modeling,motion estimation,upper bound,optimization,learning artificial intelligence,tracking,force
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