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3D Human Action Recognition Using a Single Depth Feature and Locality-Constrained Affine Subspace Coding

机译:使用单个深度特征和局域约束仿射子空间编码的3D人类动作识别

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摘要

This paper addresses the problem of recognizing human actions from depth videos. We propose a depth-based local descriptor and affine subspace coding representation with locality-constrained affine subspace coding (LASC) for 3D action recognition. First, each depth video sequence is divided into a set of subsequences (i.e., multi-scale sub-actions) based on the normalized motion energy vector. Next, depth motion map-based gradient local auto-correlation features are employed to capture the shape information and motion cues of each sub-action. In order to obtain discriminative and compact representation, we extract the local high-order information of the depth video using LASC. Through experiments, we show that the use of LASC exhibits better performance compared with existing methods such as locality-constrained linear coding. We compared LASC with the state-of-the-art methods based on similar principle, using features extracted from a single modality, on four datasets, and with those using multiple features or nonlinear recognition machines. The results on four datasets clearly show the effectiveness of the proposed method.
机译:本文解决了从深度视频中识别人类行为的问题。我们提出了一种基于深度的局部描述符和仿射子空间编码表示形式,并具有局限性仿射子空间编码(LASC)用于3D动作识别。首先,基于归一化的运动能量矢量,将每个深度视频序列划分为一组子序列(即,多尺度子动作)。接下来,采用基于深度运动图的梯度局部自相关特征来捕获形状信息和每个子动作的运动提示。为了获得判别和紧凑的表示,我们使用LASC提取深度视频的局部高阶信息。通过实验,我们表明与现有方法(例如局限性线性编码)相比,使用LASC表现出更好的性能。我们将LASC与基于相似原理的最新方法进行了比较,使用了从单一模态中提取的特征,四个数据集以及使用多个特征或非线性识别机的特征。在四个数据集上的结果清楚地表明了该方法的有效性。

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