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Max margin learning of hierarchical configural deformable templates (HCDTs) for efficient object parsing and pose estimation

机译:分层结构可变形模板(HCDT)的最大余量学习,可进行有效的对象解析和姿势估计

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In this paper we formulate a hierarchical configurable deformable template (HCDT) to model articulated visual objects-such as horses and baseball players-for tasks such as parsing, segmentation, and pose estimation. HCDTs represent an object by an AND/OR graph where the OR nodes act as switches which enables the graph topology to vary adaptively. This hierarchical representation is compositional and the node variables represent positions and properties of subparts of the object. The graph and the node variables are required to obey the summarization principle which enables an efficient compositional inference algorithm to rapidly estimate the state of the HCDT. We specify the structure of the AND/OR graph of the HCDT by hand and learn the model parameters discriminatively by extending Max-Margin learning to AND/OR graphs. We illustrate the three main aspects of HCDTs-representation, inference, and learning-on the tasks of segmenting, parsing, and pose (configuration) estimation for horses and humans. We demonstrate that the inference algorithm is fast and that max-margin learning is effective. We show that HCDTs gives state of the art results for segmentation and pose estimation when compared to other methods on benchmarked datasets.
机译:在本文中,我们制定了层次可配置的可变形模板(HCDT),以对诸如马和棒球运动员之类的清晰视觉对象进行建模,以执行诸如解析,分割和姿势估计之类的任务。 HCDT通过AND / OR图表示一个对象,其中OR节点充当开关,使图拓扑能够自适应地变化。这种分层表示是组成性的,节点变量表示对象子部分的位置和属性。要求图形和节点变量遵守汇总原则,该原则使有效的成分推断算法能够快速估计HCDT的状态。我们手动指定HCDT的AND / OR图的结构,并通过将Max-Margin学习扩展到AND / OR图来有区别地学习模型参数。我们说明了HCDT的三个主要方面-表示,推断和学习-对马和人进行分段,解析和姿势(配置)估计的任务。我们证明了推理算法是快速的并且最大余量学习是有效的。我们显示,与基准数据集上的其他方法相比,HCDT提供了最新的分割和姿态估计结果。

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