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An adaptable system for RGB-D based human body detection and pose estimation: Incorporating attached props

机译:一种适用于基于RGB-D的人体检测和姿势估计的自适应系统:包含附加的道具

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One of the biggest challenges of RGB-D posture tracking is separating appendages such as briefcases, trolleys, and backpacks from the human body. Markerless motion tracking relies on segmenting each depth frame to a finite set of body parts. This is achieved via supervised learning by assigning each pixel to a certain body part. The training image set for the supervised learning are usually synthesised using popular motion capture databases and an ensemble of 3D models covering a wide range of anthropometric characteristics. In this paper, we propose a novel method for generating training data of human postures with attached objects. The results have shown a significant increase in body-part classification accuracy for subjects with props from 60% to 94% using the generated image set.
机译:RGB-D姿势跟踪的最大挑战之一是将诸如公文包,手推车和背包之类的附件与人体分开。无标记运动跟踪依赖于将每个深度框架分割为有限的身体部位。这是通过将每个像素分配给特定身体部位的监督学习来实现的。用于监督学习的训练图像集通常使用流行的运动捕捉数据库和涵盖各种人体测量学特征的3D模型集合进行合成。在本文中,我们提出了一种用于生成带有附加对象的人体姿势训练数据的新方法。结果表明,使用生成的图像集,带有道具的受试者的身体部位分类准确度从60%显着提高到94%。

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