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Efficient Human Pose Estimation from Single Depth Images

机译:单深度图像的有效人体姿态估计

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摘要

We describe two new approaches to human pose estimation. Both can quickly and accurately predict the 3D positions of body joints from a single depth image without using any temporal information. The key to both approaches is the use of a large, realistic, and highly varied synthetic set of training images. This allows us to learn models that are largely invariant to factors such as pose, body shape, field-of-view cropping, and clothing. Our first approach employs an intermediate body parts representation, designed so that an accurate per-pixel classification of the parts will localize the joints of the body. The second approach instead directly regresses the positions of body joints. By using simple depth pixel comparison features and parallelizable decision forests, both approaches can run super-real time on consumer hardware. Our evaluation investigates many aspects of our methods, and compares the approaches to each other and to the state of the art. Results on silhouettes suggest broader applicability to other imaging modalities.
机译:我们描述了两种新的人体姿势估计方法。两者都可以从单个深度图像中快速准确地预测人体关节的3D位置,而无需使用任何时间信息。两种方法的关键是使用大量,逼真的且高度变化的合成训练图像集。这使我们能够学习在很大程度上不受诸如姿势,身体形状,视野修剪和衣服等因素影响的模型。我们的第一种方法采用了中间的身体部位表示法,其设计使得零件的每个像素的准确分类将定位身体的关节。相反,第二种方法直接使身体关节的位置退缩。通过使用简单的深度像素比较功能和可并行化的决策林,这两种方法都可以在消费类硬件上超实时地运行。我们的评估研究了我们方法的许多方面,并比较了彼此的方法和最新技术。轮廓的结果表明对其他成像方式有更广泛的适用性。

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