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Multimodal Learning for Human Action Recognition Via Bimodal/Multimodal Hybrid Centroid Canonical Correlation Analysis

机译:通过双峰/多式联杂交质心规范相关分析的人体行动识别多式化学习

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摘要

In this paper, we study the problem of human action recognition from multiple feature modalities. We propose bimodal hybrid centroid canonical correlation analysis (BHCCCA) and multimodal hybrid centroid canonical correlation analysis (MHCCCA) to learn the discriminative and informative shared space, by considering the correlation among different classes across two modalities (BHCCCA) and three or more modalities (MHCCCA). We then introduce a new human action recognition framework by using BHCCCA/MHCCCA for fusing different modalities (RGB, depth, skeleton, and accelerometer data). Performance evaluation on four publicly accessible data sets (MSR Action3D, UTD-MHAD, UTD-MHAD-Kinect V2, and Berkeley MHAD) demonstrated the effectiveness of the proposed framework.
机译:在本文中,我们研究了来自多个特征方式的人类行动识别问题。我们提出双峰杂化质心规范相关分析(BHCCCA)和多式联运杂交质心规范相关分析(MHCCCA),以考虑两种方式(BHCCCA)和三种或更多次数(MHCCCA)的不同类别之间的相关性来学习鉴别性和信息性共享空间)。然后,我们通过使用BHCCCA / MHCCCA来融合新的人类行动识别框架,以融合不同的方式(RGB,深度,骨架和加速度计数据)。四个公开可访问的数据集(MSR Action3D,Utd-Mhad,Utd-Mhad-Kinect V2和Berkeley Mhad)的绩效评估展示了所提出的框架的有效性。

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