WiFi手势识别的无监督域自适应

Bin Zhang, Dongheng Zhang, Yang Hu, Yan Chen
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引用次数: 0

摘要

由于WiFi信号的无所不在、隐私保护和广泛覆盖的特性,利用WiFi信号进行人体手势识别获得了广泛的好评。这些手势识别系统依赖于经过大量标记数据训练的神经网络。然而,在一定条件下使用数据训练的识别模型在实际部署中会出现明显的性能下降,这限制了手势识别系统的应用。在本文中,我们提出了一种基于wifi的手势识别的无监督域自适应框架UDAWiGR,旨在通过有效利用来自新条件的未标记数据来提高识别模型在新条件下的性能。首先提出了一种带置信控制约束的伪标注方法,利用未标注数据进行模型训练。然后,我们利用一致性正则化来对齐输出分布,以增强神经网络在信号扰动下的鲁棒性。此外,我们提出了一种交叉匹配损失算法,将伪标记和一致性正则化相结合,使整个框架简单而有效。大量的实验表明,与现有的公共数据集方法相比,该框架的准确率提高了4.35%。
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Unsupervised Domain Adaptation for WiFi Gesture Recognition
Human gesture recognition with WiFi signals has attained acclaim due to the omnipresence, privacy protection, and broad coverage nature of WiFi signals. These gesture recognition systems rely on neural networks trained with a large number of labeled data. However, the recognition model trained with data under certain conditions would suffer from significant performance degradation when applied in practical deployment, which limits the application of gesture recognition systems. In this paper, we propose UDAWiGR, an unsupervised domain adaptation framework for WiFi-based gesture recognition aiming to enhance the performance of the recognition model in new conditions by making effective use of the unlabeled data from new conditions. We first propose a pseudo-labeling method with confidence control constraint to utilize unlabeled data for model training. We then utilize consistency regularization to align the output distribution for enhancing the robustness of neural network under signal perturbations. Furthermore, we propose a cross-match loss to combine the pseudo-labeling and consistency regularization, which makes the whole framework simple yet effective. Extensive experiments demonstrate that the proposed framework could achieve 4.35% accuracy improvement comparing with the state-of-the-art methods on public dataset.
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