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A Cross-Domain Federated Learning Framework for Wireless Human Sensing

机译:一种面向无线人体感知的跨域联邦学习框架

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摘要

In this article, we study the problem of wireless human sensing, which refers to human activity recognition (HAR). HAR based on wireless signals plays an important role in security, human-computer interaction, and healthcare in the 5G era. Most state-of-the-art human activity recognition applications rely on deep learning approaches, which require a large amount of training data to achieve good performance. However, wireless signal data is difficult to collect and label, and it also carries private information, making it challenging to construct large-scale datasets.The recent advances in federated learning provide a chance to aggregate a wide range of users to collaboratively train a HAR model using decentralized datasets under data-preserving constraints. However, since a wireless signal is easily interrupted by the environment, the data across all participants is non-IID, thus decreasing the performance of an aggregated model. Additionally, due to the resource-constrained nature of edge devices, training the HAR model on an end user usually takes too long, resulting in straggler problems in federated learning training. In this article, we proposed a cross-domain federated learning framework (CDFL) to address the lack of labeled wireless data. A transfer learning approach was proposed to simulate wireless data by converting from widely available image datasets, and solving the distribution mismatch problem by domain adaption. Additionally, a customized federated learning approach was proposed to reduce the computational overhead of local model training. Using a case study of ultrasonic signal-based gesture recognition, we demonstrate the effectiveness of the proposed framework. Our method achieves over 90 percent accuracy on a 5-category task without real data, and 88 percent accuracy on a 10-category task when the user collects only one piece of data.
机译:在本文中,我们研究了无线人体感知的问题,它指的是人体活动识别(HAR)。在5G时代,基于无线信号的HAR在安全、人机交互和医疗等方面发挥着重要作用。大多数最先进的人类活动识别应用程序都依赖于深度学习方法,这需要大量的训练数据才能获得良好的性能。然而,无线信号数据难以采集和标注,并且还携带隐私信息,这使得构建大规模数据集具有挑战性。联邦学习的最新进展提供了一个机会,可以聚合广泛的用户,在数据保留约束下使用分散的数据集协作训练 HAR 模型。但是,由于无线信号很容易被环境中断,因此所有参与者的数据都是非IID的,从而降低了聚合模型的性能。此外,由于边缘设备的资源受限,在最终用户身上训练 HAR 模型通常需要很长时间,从而导致联邦学习训练中出现落后问题。在本文中,我们提出了一个跨域联邦学习框架(CDFL)来解决缺乏标记无线数据的问题。提出了一种迁移学习方法,通过转换广泛可用的图像数据集来模拟无线数据,并通过域自适应解决分布失配问题。此外,提出了一种定制的联邦学习方法,以减少局部模型训练的计算开销。通过基于超声信号的手势识别的案例研究,我们证明了所提框架的有效性。我们的方法在没有真实数据的情况下,在5类任务中实现了90%以上的准确率,当用户只收集一条数据时,在10类任务中实现了88%的准确率。

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