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CsiGAN: Robust Channel State Information-Based Activity Recognition With GANs

机译:CSIGAN:基于强大的信道状态信息的活动识别与GANS

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摘要

As a cornerstone service for many Internet of Things applications, channel state information (CSI)-based activity recognition has received immense attention over recent years. However, recognition performance of general approaches might significantly decrease when applying the trained model to the left-out user whose CSI data are not used for model training. To overcome this challenge, we propose a semi-supervised generative adversarial network (GAN) for CSI-based activity recognition (CsiGAN). Based on the general semi-supervised GANs, we mainly design three components for CsiGAN to meet the scenarios that unlabeled data from left-out users are very limited and enhance recognition performance: 1) we introduce a new complement generator, which can use limited unlabeled data to produce diverse fake samples for training a robust discriminator; 2) for the discriminator, we change the number of probability outputs from k + 1 into 2k + 1 (here, k is the number of categories), which can help to obtain the correct decision boundary for each category; and 3) based on the introduced generator, we propose a manifold regularization, which can stabilize the learning process. The experiments suggest that CsiGAN attains significant gains compared to the state-of-the-art methods.
机译:作为许多事物互联网应用的基石服务,频道状态信息(CSI)的活动识别近年来受到了巨大的关注。然而,当将训练的模型应用于左侧用户时,识别普通方法的识别性能可能会显着减少,其CSI数据不用于模型培训。为了克服这一挑战,我们为基于CSI的活动识别(CSIGAN)提出了一个半监督生成的对抗网络(GAN)。基于一般半监督的GANS,我们主要设计三个组件的CSIGAN,以满足左侧用户未标记数据的方案非常有限,增强识别性能:1)我们介绍了一个新的补充发生器,可以使用有限的未标记数据生产各种假样本,用于培训强大的鉴别符; 2)用于鉴别器,我们改变概率输出的数目从K + 1到2K + 1(在此,k是类别的数目),这可以帮助以获得每个类别的正确判定边界; 3)基于引入的发电机,我们提出了一种歧管正则化,可以稳定学习过程。实验表明,与最先进的方法相比,CSIGAN达到了显着的收益。

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