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An Adaptive S-Method to Analyze Micro-Doppler Signals for Human Activity Classification

机译:一种用于人类活动分类的微多普勒信号分析的自适应S方法

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摘要

In this paper, we propose the multiwindow Adaptive S-method (AS-method) distribution approach used in the time-frequency analysis for radar signals. Based on the results of orthogonal Hermite functions that have good time-frequency resolution, we vary the length of window to suppress the oscillating component caused by cross-terms. This method can bring a better compromise in the auto-terms concentration and cross-terms suppressing, which contributes to the multi-component signal separation. Finally, the effective micro signal is extracted by threshold segmentation and envelope extraction. To verify the proposed method, six states of motion are separated by a classifier of a support vector machine (SVM) trained to the extracted features. The trained SVM can detect a human subject with an accuracy of 95.4% for two cases without interference.
机译:在本文中,我们提出了用于雷达信号时频分析的多窗口自适应S方法(AS方法)分配方法。基于具有良好时频分辨率的正交Hermite函数的结果,我们更改了窗口的长度以抑制由交叉项引起的振荡分量。该方法可以在自动项集中和交叉项抑制方面带来更好的折衷,这有助于多分量信号分离。最后,通过阈值分割和包络提取来提取有效的微信号。为了验证所提出的方法,通过对提取的特征进行训练的支持向量机(SVM)的分类器将六个运动状态分开。经过训练的SVM可以在两种情况下以95.4%的准确度检测到人类对象,而不会产生干扰。

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