论文标题
Litehar:带有随机卷积内核的WiFi信号的轻量级人类活动识别
LiteHAR: Lightweight Human Activity Recognition from WiFi Signals with Random Convolution Kernels
论文作者
论文摘要
人体的解剖运动可以改变室内环境中无线信号的通道状态信息(CSI)。 CSI信号中的这些变化可用于人类活动识别(HAR),这是一种主要和独特的方法,这是由于保留了隐私和灵活性在非线观察环境中捕获动作的灵活性。 HAR的现有模型通常具有较高的计算复杂性,包含大量可训练的参数,并且需要广泛的计算资源。此问题对于在具有有限资源(例如边缘设备)的设备上实施这些解决方案尤为重要。在本文中,我们提出了一种轻巧的人类活动识别(Litehar)方法,该方法与最先进的深度学习模型不同,不需要对大量参数进行广泛的培训。该方法使用随机初始化的卷积内核来从CSI信号中提取特征,而无需训练内核。然后使用脊回归分类器对提取的特征进行分类,该分类器具有线性计算复杂性,并且非常快。 Litehar在公共基准数据集上进行了评估,结果表明,与复杂的深度学习模型相比,其分类较高,计算复杂性较低。
Anatomical movements of the human body can change the channel state information (CSI) of wireless signals in an indoor environment. These changes in the CSI signals can be used for human activity recognition (HAR), which is a predominant and unique approach due to preserving privacy and flexibility of capturing motions in non-line-of-sight environments. Existing models for HAR generally have a high computational complexity, contain very large number of trainable parameters, and require extensive computational resources. This issue is particularly important for implementation of these solutions on devices with limited resources, such as edge devices. In this paper, we propose a lightweight human activity recognition (LiteHAR) approach which, unlike the state-of-the-art deep learning models, does not require extensive training of large number of parameters. This approach uses randomly initialized convolution kernels for feature extraction from CSI signals without training the kernels. The extracted features are then classified using Ridge regression classifier, which has a linear computational complexity and is very fast. LiteHAR is evaluated on a public benchmark dataset and the results show its high classification performance in comparison with the complex deep learning models with a much lower computational complexity.