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3D separable convolutional neural network for dynamic hand gesture recognition

机译:用于动态手势识别的3D可分离卷积神经网络

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Dynamic hand gesture recognition, as an essential part of Human-Computer Interaction, and especially an important way to realize Augmented Reality, has been attracting attention from many scholars and yet presenting many more challenges. Recently, being aware of deep convolutional neural network's excellent performance, many scholars began to apply it to gesture recognition, and obtained promising results. However, no enough attention has been paid to the number of parameters in the network and the amount of computer calculation needed until now. In this paper, a 3D separable convolutional neural network is proposed for dynamic gesture recognition. This study aims to make the model less complex without compromising its high recognition accuracy, such that it can be deployed to augmented reality glasses more easily in the future. By the application of skip connection and layer-wise learning rate, the undesired gradient dispersion due to the separation operation is solved and the performance of the network is improved. The fusion of feature information is further promoted by shuffle operation. In addition, a dynamic hand gesture library is built through HoloLens, which thus proves the feasibility of the proposed method. (C) 2018 Elsevier B.V. All rights reserved.
机译:动态手势识别作为人机交互的重要组成部分,尤其是实现增强现实的一种重要方式,已经引起了许多学者的关注,但也提出了更多的挑战。最近,意识到深度卷积神经网络的出色性能,许多学者开始将其应用于手势识别,并获得了可喜的成果。但是,到目前为止,尚未对网络中的参数数量和所需的计算机计算量给予足够的重视。本文提出了一种3D可分离卷积神经网络用于动态手势识别。这项研究的目的是在不损害模型的高识别精度的情况下降低模型的复杂度,以便将来可以更轻松地将其部署到增强现实眼镜中。通过跳过连接和逐层学习率的应用,解决了分离操作导致的不期望的梯度色散,提高了网络性能。随机操作进一步促进了特征信息的融合。此外,通过HoloLens建立了动态​​手势库,从而证明了该方法的可行性。 (C)2018 Elsevier B.V.保留所有权利。

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