Mini neural network based on knowledge distillation for dynamic gesture recognition in real scenes

Y. Shu, Dongping Zhang, Ping Chen, Yang Li
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引用次数: 1

Abstract

At present, gesture interaction has become one of the important ways of human-computer interaction, and the human hand, as the most flexible organ in the body, will make non-contact dynamic gesture interaction more convenient and more versatile. However, because of the diversity and uncertainty of gestures in time and space, and the complex deformable body of the human hands, it finally leads to the low recognition rate of dynamic gesture recognition in real scenes. Aiming at the difficulty of hand feature recognition and positioning, and the interference problem of unconstrained environment, this paper proposes a lightweight neural network based on distillation collaborative training for dynamic gesture recognition. This method uses knowledge distillation to train the deep network and the lightweight network together to improve the recognition performance of the lightweight neural network. At the same time, LSTM is used to improve the network's recognition rate of dynamic gestures of different durations in real scenes. In this paper, the lightweight dynamic gesture recognition network was tested on 20BN-Something-Something V2, and the accuracy rate was as high as 64.3%.
基于知识蒸馏的迷你神经网络在真实场景下的动态手势识别
目前,手势交互已经成为人机交互的重要方式之一,而人的手作为人体最灵活的器官,将使非接触的动态手势交互变得更加方便和通用。然而,由于手势在时间和空间上的多样性和不确定性,以及人的手部的复杂变形体,最终导致了真实场景中动态手势识别的识别率较低。针对手部特征识别和定位困难以及无约束环境的干扰问题,提出了一种基于蒸馏协同训练的轻量级神经网络动态手势识别方法。该方法利用知识蒸馏对深度网络和轻量化网络进行共同训练,提高了轻量化神经网络的识别性能。同时,利用LSTM提高了网络对真实场景中不同持续时间动态手势的识别率。本文在200 bn - something - something V2上对轻量级动态手势识别网络进行了测试,准确率高达64.3%。
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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