Skeleton Capsule Net: An Efficient Network for Action Recognition

Yue Yu, Niehao Tian, Xiangru Chen, Ying Li
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引用次数: 1

Abstract

Capsule network is a new type of deep learning method to improve the CNN module. Though it has performed quite well on classifying the MNIST dataset, there are few applications in other fields. Thus in this paper, we apply the capsule network on skeleton-based classification and propose a framework to explore the potential of it. Since the bottom layer of the capsule network is still based on convolution operation, we feed heatmap as well as raw skeleton data and reach good performance on convolution-based action recognition. Most researches take spatial and temporal features into consideration and they do help to recognition accuracy. We propose two different encapsulations to extract the spatial and temporal features of skeleton sequences. We perform our experiments on UT-Kinect and a portion of NTU RGB+D dataset, and we achieve best 87% accuracy on the NTU RGB+D dataset. We also find that the capsule network is suitable for the coarse-grained classification tasks. In a conclusion, not only the characteristics of capsule network are proved, but also an efficient method to recognize human action is realized.
骨架胶囊网:一种高效的动作识别网络
胶囊网络是一种改进CNN模块的新型深度学习方法。虽然它在MNIST数据集的分类上表现得很好,但在其他领域的应用很少。因此,在本文中,我们将胶囊网络应用于基于骨架的分类,并提出了一个框架来探索它的潜力。由于胶囊网络的底层仍然是基于卷积运算的,我们在输入原始骨架数据的同时输入热图,在基于卷积的动作识别上取得了良好的性能。大多数研究都考虑了空间和时间特征,这有助于识别的准确性。我们提出了两种不同的封装来提取骨骼序列的空间和时间特征。我们在UT-Kinect和部分NTU RGB+D数据集上进行了实验,我们在NTU RGB+D数据集上达到了87%的最佳准确率。我们还发现胶囊网络适合于粗粒度的分类任务。总之,不仅证明了胶囊网络的特性,而且实现了一种有效的人体动作识别方法。
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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