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Human Part Segmentation in Depth Images with Annotated Part Positions

机译:具有标注位置的深度图像中的人体部位分割

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摘要

We present a method of segmenting human parts in depth images, when provided the image positions of the body parts. The goal is to facilitate per-pixel labelling of large datasets of human images, which are used for training and testing algorithms for pose estimation and automatic segmentation. A common technique in image segmentation is to represent an image as a two-dimensional grid graph, with one node for each pixel and edges between neighbouring pixels. We introduce a graph with distinct layers of nodes to model occlusion of the body by the arms. Once the graph is constructed, the annotated part positions are used as seeds for a standard interactive segmentation algorithm. Our method is evaluated on two public datasets containing depth images of humans from a frontal view. It produces a mean per-class accuracy of 93.55% on the first dataset, compared to 87.91% (random forest and graph cuts) and 90.31% (random forest and Markov random field). It also achieves a per-class accuracy of 90.60% on the second dataset. Future work can experiment with various methods for creating the graph layers to accurately model occlusion.
机译:当提供身体部位的图像位置时,我们提出了一种在深度图像中分割人体部位的方法。目标是促进对大型人类图像数据集进行逐像素标记,这些数据集用于训练和测试姿态估计和自动分割的算法。图像分割中的一种常用技术是将图像表示为二维网格图,每个像素一个节点,相邻像素之间的边缘。我们引入了具有不同节点层的图形,以模拟手臂对身体的遮挡。构建完图形后,带注释的部分位置将用作标准交互式分割算法的种子。我们的方法是在两个公开的数据集上进行评估的,这些数据集包含从正面观察到的人类深度图像。在第一个数据集上,它的平均每类准确性为93.55%,而87.91%(随机森林和图割)和90.31%(随机森林和马尔可夫随机场)相比。在第二个数据集上,每个类别的准确性也达到90.60%。未来的工作可以尝试使用各种方法来创建图形图层以准确地建模遮挡。

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