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Conditional Random People: Tracking Humans with CRFs and Grid Filters

机译:有条件的随机人:跟踪CRF和电网过滤器的人类

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We describe a state-space tracking approach based on a Conditional Random Field (CRF) model, where the observation potentials are learned from data. We find functions that embed both state and observation into a space where similarity corresponds to L1 distance, and define an observation potential based on distance in this space. This potential is extremely fast to compute and in conjunction with a grid-filtering framework can be used to reduce a continuous state estimation problem to a discrete one. We show how a state temporal prior in the grid-filter can be computed in a manner similar to a sparse HMM, resulting in real-time system performance. The resulting system is used for human pose tracking in video sequences.
机译:我们描述了一种基于条件随机字段(CRF)模型的状态空间跟踪方法,其中观察电位从数据中学习。我们发现嵌入状态和观察到相似性对应于L1距离的空间的功能,并根据该空间中的距离来定义观察电位。这种潜力非常快速地计算,并且与电网过滤框架结合可以用于将连续状态估计问题减少到离散的框架。我们展示了如何以类似于稀疏HMM的方式计算在网格滤波器中的状态时间如何,导致实时系统性能。得到的系统用于视频序列中的人类姿势跟踪。

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