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Automatic Key Pose Selection for 3D Human Action Recognition

机译:用于3D人体动作识别的自动关键姿势选择

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This article describes a novel approach to the modeling of human actions in 3D. The method we propose is based on a "bag of poses" model that represents human actions as histograms of key-pose occurrences over the course of a video sequence. Actions are first represented as 3D poses using a sequence of 36 direction cosines corresponding to the angles 12 joints form with the world coordinate frame in an articulated human body model. These pose representations are then projected to three-dimensional, action-specific principal eigenspaces which we refer to as aSpaces. We introduce a method for key-pose selection based on a local-motion energy optimization criterion and we show that this method is more stable and more resistant to noisy data than other key-poses selection criteria for action recognition.
机译:本文介绍了一种在3D模式下对人类行为进行建模的新颖方法。我们提出的方法基于“姿势袋”模型,该模型将人类动作表示为视频序列过程中关键姿势发生的直方图。首先使用一系列36个方向余弦将动作表示为3D姿势,这些余弦对应于关节模型中与世界坐标系形成的12个关节形成的角度。然后将这些姿势表示投影到三维的,特定于动作的主要特征空间,我们将其称为aSpaces。我们介绍了一种基于局部运动能量优化准则的关键姿势选择方法,并且表明该方法比其他用于动作识别的关键姿势选择标准更稳定,对噪声数据的抵抗力更强。

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