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CNN+RNN Depth and Skeleton based Dynamic Hand Gesture Recognition

机译:基于CNN + RNN深度和骨架的动态手势识别

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Human activity and gesture recognition is an important component of rapidly growing domain of ambient intelligence, in particular in assisting living and smart homes. In this paper, we propose to combine the power of two deep learning techniques, the convolutional neural networks (CNN) and the recurrent neural networks (RNN), for automated hand gesture recognition using both depth and skeleton data. Each of these types of data can be used separately to train neural networks to recognize hand gestures. While RNN were reported previously to perform well in recognition of sequences of movement for each skeleton joint given the skeleton information only, this study aims at utilizing depth data and apply CNN to extract important spatial information from the depth images. Together, the tandem CNN+RNN is capable of recognizing a sequence of gestures more accurately. As well, various types of fusion are studied to combine both the skeleton and depth information in order to extract temporal-spatial information. An overall accuracy of 85.46% is achieved on the dynamic hand gesture-14/28 dataset.
机译:人类活动和手势识别是快速增长的环境智能领域的重要组成部分,尤其是在协助生活和智能家居方面。在本文中,我们建议结合卷积神经网络(CNN)和递归神经网络(RNN)两种深度学习技术的功能,以使用深度和骨骼数据进行自动手势识别。这些类型的数据中的每一种都可以分别用于训练神经网络以识别手势。尽管先前报道了RNN在仅给出骨骼信息的情况下在识别每个骨骼关节的运动序列方面表现良好,但本研究旨在利用深度数据并应用CNN从深度图像中提取重要的空间信息。串联在一起,CNN + RNN能够更准确地识别一系列手势。同样,为了融合时空信息,人们研究了各种类型的融合来组合骨架和深度信息。在动态手势14/28数据集上,总体准确度达到85.46%。

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