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Device-free sensing for classification of human activities using high-order cumulant algorithm

机译:使用高阶累积量算法的无设备感知人类活动分类

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In this paper, the possibility of using an emerging approach, namely device-free sensing (DFS) technology, for classification of human activities is investigated. To fully evaluate this approach, several samples have been collected in an outdoor open-field environment. Using the collected data along with a classifier, a high-order cumulant (HOC) based feature extraction algorithm is investigated. To demonstrate the improvement of using this algorithm, the classical approach that is based on received-signal strength (RSS) is chosen as a benchmark. The experiment results demonstrated that the classification accuracy of the proposed algorithm is better than the classical approach by at least 15%. In addition, the reliability of the presented approach due to variation of training samples and signal-to-noise ratio (SNR) are also carefully tested using experimentally recorded samples, so that a good reliability can be ensured.
机译:在本文中,研究了使用新兴方法(即无设备传感(DFS)技术)对人类活动进行分类的可能性。为了全面评估此方法,已在室外露天环境中收集了几个样本。使用收集的数据和分类器,研究了基于高阶累积量(HOC)的特征提取算法。为了证明使用此算法的改进,选择了基于接收信号强度(RSS)的经典方法作为基准。实验结果表明,所提算法的分类精度比经典方法高出至少15%。此外,还使用实验记录的样本仔细测试了由于训练样本和信噪比(SNR)变化而导致的方法的可靠性,从而可以确保良好的可靠性。

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