Human Action Recognition Based on STDMI-HOG and STjoint Feature

Qianhan Wx, Qian Huan, Xing Ll
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Abstract

More and more attention has been focused on the human action recognition domain. The existing methods are mostly based on single-mode data. However, single-mode data lacks adequate information. So, it is necessary to propose methods based on multimode data. In this paper, we extract two kinds of features from depth videos and skeleton sequences, named STDMI-HOG and STjoint feature respectively. STDMI-HOG is extracted from a new depth feature map Spatial-Temporal Depth Motion Image by Histogram of Oriented Gradient. STjoint feature is extracted from skeleton sequences by ST-GCN extractor. Then two kinds of features are connected to make up a one-dimensional vector. Finally, SVM classifies the actions according to the feature vector. To evaluate the performance, several experiments are conducted on two public datasets: the MSR Action3D dataset and the UTD-MHAD dataset. The accuracy of our method on two datasets is compared with the existing methods, and the experiments prove the outperformance of our method.
基于STDMI-HOG和STjoint特征的人体动作识别
人体动作识别领域受到越来越多的关注。现有的方法大多基于单模态数据。然而,单模数据缺乏足够的信息。因此,有必要提出基于多模态数据的方法。本文从深度视频和骨架序列中提取两种特征,分别命名为STDMI-HOG和STjoint特征。STDMI-HOG是利用定向梯度直方图从一幅新的时空深度运动图像中提取深度特征图。利用ST-GCN提取器从骨骼序列中提取STjoint特征。然后将两种特征连接起来,组成一个一维向量。最后,SVM根据特征向量对动作进行分类。为了评估性能,在两个公共数据集上进行了一些实验:MSR Action3D数据集和UTD-MHAD数据集。将本文方法在两个数据集上的准确率与现有方法进行了比较,实验证明了本文方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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