HIF3D: Handwriting-Inspired Features for 3D skeleton-based action recognition

Said Yacine Boulahia, É. Anquetil, R. Kulpa, F. Multon
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引用次数: 17

Abstract

Action recognition based on human skeleton structure represents nowadays a prosper research field. This is mainly due to the recent advances in terms of capture technologies and skeleton extraction algorithms. In this context, we observed that 3D skeleton-based actions share several properties with handwritten symbols since they both result from a human performance. We accordingly hypothesize that the action recognition problem can take advantage of trial and error already carried out on handwritten patterns. Therefore, inspired by one of the most efficient and compact handwriting feature-set, we propose in this paper a skeleton descriptor referred to as Handwriting-Inspired Features (HIF3D). First of all a data preprocessing is applied to joint trajectories in order to handle the variabilities among actor's morphologies. Then we extract the HIF3D features from the processed joint locations according to a time partitioning scheme so as to additionally encode the temporal information over the sequence. Finally, we selected the Support Vector Machine (SVM) to achieve the classification step. Evaluations conducted on two challenging datasets, namely HDM05 and UTKinect, testify the soundness of our approach as the obtained results outperform the state-of-the-art algorithms that rely on skeleton data.
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HIF3D:基于3D骨骼的动作识别的手写启发功能
基于人体骨骼结构的动作识别是目前研究的一个热点。这主要是由于最近在捕获技术和骨架提取算法方面取得的进展。在这种情况下,我们观察到基于3D骨架的动作与手写符号共享几个属性,因为它们都是由人类表演产生的。因此,我们假设动作识别问题可以利用已经在手写模式上进行的试错。因此,受最有效和紧凑的手写特征集之一的启发,我们在本文中提出了一个骨架描述符,称为手写启发特征(HIF3D)。首先对联合轨迹进行数据预处理,以处理参与者形态之间的可变性。然后根据时间划分方案从处理后的关节位置提取HIF3D特征,对序列的时间信息进行额外编码。最后,我们选择支持向量机(SVM)来完成分类步骤。对两个具有挑战性的数据集(即HDM05和UTKinect)进行的评估证明了我们方法的合理性,因为所获得的结果优于依赖骨架数据的最先进算法。
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