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Depth-based human activity recognition via multi-level fused features and fast broad learning system

机译:基于深度的人类活动识别通过多级融合功能和快速广泛的学习系统

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摘要

Human activity recognition using depth videos remains a challenging problem while in some applications the available training samples is limited. In this article, we propose a new method for human activity recognition by crafting an integrated descriptor called multi-level fused features for depth sequences and devising a fast broad learning system based on matrix decomposition for classification. First, the surface normals are computed from original depth maps; the histogram of the surface normal orientations is obtained as a low-level feature by accumulating the contributions from normals, then a high-level feature is acquired by sparse coding and pooling on the aggregation of polynormals. After that, the principal component analysis is applied to the conjunction of the two-level features in order to obtain a low-dimensional and discriminative fused feature. At last, fast broad learning system based on matrix decomposition is proposed to accelerate the training process and enhance the classification results. The recognition results on three benchmark data sets show that our method outperforms the state-of-the-art methods in term of accuracy, especially when the number of training samples is small.
机译:使用深度视频的人类活动识别仍然是一个具有挑战性的问题,而在某些应用中,可用的培训样本有限。在本文中,我们提出了一种通过对深度序列的多级融合特征制备的集成描述符来提出一种新的人类活动识别方法,并基于矩阵分解进行分类。首先,表面法线从原始深度图计算;通过累积来自法线的贡献,获得表面正常取向的直方图,然后通过稀疏编码和汇集多态的聚合来获取高级特征。之后,将主成分分析应用于两级特征的结合,以便获得低维和鉴别的融合特征。最后,提出了基于矩阵分解的快速广泛学习系统,以加速培训过程并增强分类结果。识别结果在三个基准数据集上表明,我们的方法在准确性方面优于最先进的方法,尤其是当训练样本的数量很小时。

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