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WiGAN: A WiFi Based Gesture Recognition System with GANs

机译:Wigan:一种基于WiFi的手势识别系统带GANS

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摘要

In recent years, a series of research experiments have been conducted on WiFi-based gesture recognition. However, current recognition systems are still facing the challenge of small samples and environmental dependence. To deal with the problem of performance degradation caused by these factors, we propose a WiFi-based gesture recognition system, WiGAN, which uses Generative Adversarial Network (GAN) to extract and generate gesture features. With GAN, WiGAN expands the data capacity to reduce time cost and increase sample diversity. The proposed system extracts and fuses multiple convolutional layer feature maps as gesture features before gesture recognition. After fusing features, Support Vector Machine (SVM) is exploited for human activity classification because of its accuracy and convenience. The key insight of WiGAN is to generate samples and merge multi-grained feature maps in our designed GAN, which not only enhances the data but also allows the neural network to select different grained features for gesture recognition. According to the result of experiments conducted on two existing datasets, the average recognition accuracy of WiGAN reaches 98% and 95.6%, respectively, outperforming the existing system. Moreover, the recognition accuracy under different experimental environments and different users shows the robustness of WiGAN.
机译:近年来,已经在基于WiFi的手势识别上进行了一系列研究实验。然而,当前识别系统仍面临着小样本和环境依赖的挑战。要处理这些因素引起的性能下降问题,我们提出了一种基于WiFi的手势识别系统,Wigan,它使用生成的对抗网络(GAN)来提取和生成手势特征。通过GaN,Wigan扩展了数据容量以降低时间成本并提高样本分集。所提出的系统提取和保险丝多卷积层特征映射作为手势识别之前的手势特征。在融合功能后,支持向量机(SVM)因其准确性和方便而被利用人类活动分类。 Wigan的关键介入是在我们设计的GaN中生成样本并合并多粒子特征映射,这不仅增强了数据,而且允许神经网络选择不同的粒度特征进行手势识别。根据在两个现有数据集上进行的实验结果,Wigan的平均识别准确性分别达到98%和95.6%,优于现有系统。此外,不同实验环境和不同用户下的识别准确性显示了WiGan的鲁棒性。

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