Multiple target recognition based on blind source separation and missing feature theory

Huang Qi, X. Tao, Liu Hai Tao
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引用次数: 4

Abstract

This paper considers the problem of classifying simultaneous multiple ground vehicles using their acoustic signatures recorded by unattended passive acoustic sensor array. The proposed approach relies on the blind source separation (BSS) algorithm based on time-frequency signal representations. Instead of estimating mixing parameters as the original algorithm do, we get the missing feature mask from the BSS step. Then an acoustic signature recognizer based on the missing feature theory recognizes each acoustic source. Recognition results are presented for several simultaneous vehicle acoustic signals. Compared with familiar ways, using both the missing feature theory and BSS algorithm results in high performance improvement
基于盲源分离和缺失特征理论的多目标识别
本文研究了利用无人值守被动声传感器阵列记录的多辆地面车辆的声特征对多辆地面车辆同时进行分类的问题。该方法采用基于时频信号表示的盲源分离(BSS)算法。我们不再像原始算法那样估计混合参数,而是从BSS步骤中得到缺失的特征掩码。然后,基于缺失特征理论的声特征识别器对每个声源进行识别。给出了几种同时存在的车辆声信号的识别结果。与常用的方法相比,缺失特征理论和BSS算法都有较大的性能提升
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