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Graph cuts optimization for multi-limb human segmentation in depth maps

机译:图表在深度映射中切断了多肢体分割的优化

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We present a generic framework for object segmentation using depth maps based on Random Forest and Graph-cuts theory, and apply it to the segmentation of human limbs in depth maps. First, from a set of random depth features, Random Forest is used to infer a set of label probabilities for each data sample. This vector of probabilities is used as unary term in α-β swap Graph-cuts algorithm. Moreover, depth of spatio-temporal neighboring data points are used as boundary potentials. Results on a new multi-label human depth data set show high performance in terms of segmentation overlapping of the novel methodology compared to classical approaches.
机译:我们使用基于随机林和图形切割理论的深度图提供了一个对象分割的通用框架,并将其应用于深度图中的人肢的分割。首先,从一组随机深度功能,随机林用于推断每个数据样本的一组标签概率。该概率向量用作α-β交换图形切割算法中的联合术语。此外,时空相邻数据点的深度用作边界电位。结果新的多标签人类深度数据集在与古典方法相比,新型方法的分割重叠方面表现出高性能。

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