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Human Body Segmentation with Multi-limb Error-Correcting Output Codes Detection and Graph Cuts Optimization

机译:带有多臂纠错输出代码检测和图形切割优化的人体分割

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Human body segmentation is a hard task because of the high variability in appearance produced by changes in the point of view, lighting conditions, and number of articulations of the human body. In this paper, we propose a two-stage approach for the segmentation of the human body. In a first step, a set of human limbs are described, normalized to be rotation invariant, and trained using cascade of classifiers to be split in a tree structure way. Once the tree structure is trained, it is included in a ternary Error-Correcting Output Codes (ECOC) framework. This first classification step is applied in a windowing way on a new test image, defining a body-like probability map, which is used as an initialization of a GMM color modelling and binary Graph Cuts optimization procedure. The proposed methodology is tested in a novel limb-labelled data set. Results show performance improvements of the novel approach in comparison to classical cascade of classifiers and human detector-based Graph Cuts segmentation approaches.
机译:人体分割是一项艰巨的任务,因为在外观,照明条件和人体关节数量方面的变化会导致外观变化很大。在本文中,我们提出了一种用于人体分割的两阶段方法。第一步,描述一组人类肢体,将其标准化为旋转不变,并使用级联的分类器进行训练,以树状结构进行拆分。训练完树结构后,它将包含在三元纠错输出代码(ECOC)框架中。该第一分类步骤以开窗的方式应用于新的测试图像上,从而定义了类似于人体的概率图,该图被用作GMM颜色建模和二进制图切割优化程序的初始化。在一个新的肢体标记的数据集中测试了所提出的方法。结果表明,与经典的分类器级联和基于人类检测器的图割分割方法相比,该新方法的性能有所提高。

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