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WiFi Channel State Information-Based Recognition of Sitting-Down and Standing-Up Activities

机译:基于WiFi通道状态信息的坐下和起立活动识别

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Real-time recognition of human activities is an important functionality of smart spaces. It allows a wide range of security and healthcare applications. In this work, we use the Channel State Information (CSI) of WiFi signals to assess the patterns associated with dynamic human activities, including sitting-down and standing-up actions. We preprocess raw signals with both a Hampel filter and low-pass filter. The signals are then segmented into 20-packet labelled sequences. Features including kurtosis, maximum, mean, minimum, maximum peak, skew, standard deviation, and variance are extracted for each sequence, providing feature vectors of 168 variables to enable activity recognition. Features are normalized and a series of classifiers were trained and compared to predict three activity classes: stationary (seated or standing still), sitting-down, and standing-up. Preliminary results on data collected for a single subject achieve a classification accuracy of 98.4% with a medium Gaussian Support Vector Machine (SVM) to distinguish between these three classes.
机译:实时识别人类活动是智能空间的重要功能。它允许广泛的安全性和医疗保健应用程序。在这项工作中,我们使用WiFi信号的信道状态信息(CSI)来评估与动态人类活动(包括坐下和站立动作)相关的模式。我们使用Hampel滤波器和低通滤波器对原始信号进行预处理。然后将信号分段为20个数据包标记的序列。为每个序列提取特征,包括峰度,最大值,平均值,最小值,最大峰值,偏斜,标准差和方差,从而提供168个变量的特征向量以实现活动识别。对功能进行了归一化,并训练了一系列分类器并进行了比较,以预测三种活动类别:固定(坐着或站着),坐下和站立。使用中等高斯支持向量机(SVM)来区分这三个类别,针对单个对象收集的数据的初步结果可达到98.4%的分类精度。

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