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EMD-Based Symbolic Dynamic Analysis for the Recognition of Human and Nonhuman Pyroelectric Infrared Signals

机译:基于EMD的符号动态分析用于人类和非人类热释电红外信号的识别

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摘要

In this paper, we propose an effective human and nonhuman pyroelectric infrared (PIR) signal recognition method to reduce PIR detector false alarms. First, using the mathematical model of the PIR detector, we analyze the physical characteristics of the human and nonhuman PIR signals; second, based on the analysis results, we propose an empirical mode decomposition (EMD)-based symbolic dynamic analysis method for the recognition of human and nonhuman PIR signals. In the proposed method, first, we extract the detailed features of a PIR signal into five symbol sequences using an EMD-based symbolization method, then, we generate five feature descriptors for each PIR signal through constructing five probabilistic finite state automata with the symbol sequences. Finally, we use a weighted voting classification strategy to classify the PIR signals with their feature descriptors. Comparative experiments show that the proposed method can effectively classify the human and nonhuman PIR signals and reduce PIR detector’s false alarms.
机译:在本文中,我们提出了一种有效的人类和非人类热释电红外(PIR)信号识别方法,以减少PIR检测器的误报。首先,我们使用PIR检测器的数学模型来分析人类和非人类PIR信号的物理特性;其次,根据分析结果,提出了一种基于经验模态分解(EMD)的符号动态分析方法,用于识别人和非人的PIR信号。在提出的方法中,首先,我们使用基于EMD的符号化方法将PIR信号的详细特征提取为五个符号序列,然后,通过使用符号序列构造五个概率有限状态自动机,为每个PIR信号生成五个特征描述符。 。最后,我们使用加权投票分类策略对PIR信号及其特征描述符进行分类。比较实验表明,该方法可以有效地对人和非人的PIR信号进行分类,减少PIR检测器的误报。

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