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Learning the distribution of object trajectories for event recognition

机译:学习对象轨迹的分布以进行事件识别

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摘要

The advent in recent years of robust, real-time, model-based tracking techniques for rigid and non-rigid moving objects has made automated surveillance and event recognition a possibility. A statistically based model of object trajectories is presented which is learnt from the observation of long image sequences. Trajectory data is supplied by a tracker using Active Shape Models, from which a model of the distribution of typical trajectories is learnt. Experimental results are included to show the generation of the model for trajectories within a pedestrian scene. We indicate how the resulting model can be used for the identification of atypical events.
机译:近年来,针对刚性和非刚性运动对象的强大,实时,基于模型的跟踪技术的出现使自动监视和事件识别成为可能。提出了一种基于统计的物体轨迹模型,该模型是通过观察长图像序列而获得的。跟踪器使用Active Shape Models提供轨迹数据,从中可以学习典型轨迹的分布模型。实验结果包括在内,以显示行人场景中的轨迹模型的生成。我们指出如何将所得模型用于非典型事件的识别。

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