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A Bayesian Framework for Multi-cue 3D Object Tracking

机译:用于多线索3D对象跟踪的贝叶斯框架

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This paper presents a Bayesian framework for multi-cue 3D object tracking of deformable objects. The proposed spatio-temporal object representation involves a set of distinct linear subspace models or Dynamic Point Distribution Models (DPDMs), which can deal with both continuous and discontinuous appearance changes; the representation is learned fully automatically from training data. The representation is enriched with texture information by means of intensity histograms, which are compared using the Bhattacharyya coefficient. Direct 3D measurement is furthermore provided by a stereo system. State propagation is achieved by a particle filter which combines the three cues shape, texture and depth, in its observation density function. The tracking framework integrates an independently operating object detection system by means of importance sampling. We illustrate the benefit of our integrated multi-cue tracking approach on pedestrian tracking from a moving vehicle.
机译:本文介绍了可变形对象的多线程3D对象跟踪的贝叶斯框架。所提出的时空对象表示涉及一组不同的线性子空间模型或动态点分布模型(DPDMS),可以处理连续和不连续的外观变化;从训练数据自动学习表示。通过强度直方图富有纹理信息,使用Bhattacharyya系数进行纹理信息。通过立体声系统提供直接3D测量。状态传播通过颗粒滤波器实现,该粒子过滤器在其观察密度函数中结合了三个线索形状,纹理和深度。跟踪框架通过重要性采样集成独立的操作对象检测系统。我们说明了我们在移动车辆的行人跟踪上的综合多线索跟踪方法的益处。

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