A Modified peripheral auditory model for vehicle classification

Guan Lu-yang, Bao Ming, Zhang Peng, Li Xiao-dong
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Abstract

Peripheral auditory model is a promising method for target classification to extract feature from target acoustic signals. But the general cochlear filter bank is not appropriate for the vehicle acoustic signal because of the obvious difference between the vehicle signal and speech. In this paper, a new method to design the cochlear filter bank for vehicle classification was proposed on the principle of class separability of the patterns. On the basis of the modified peripheral auditory model, monaural model based cepstrum coefficient (MoMCC) was proposed as feature and applied to multi-class vehicle classification. Experimental results show that MoMCC improves both the classification rate and the robustness of the classifier, especially at low SNR.
一种用于车辆分类的改进外周听觉模型
外周听觉模型从目标声信号中提取特征是一种很有前途的目标分类方法。但由于车辆信号与语音存在明显的差异,一般的耳蜗滤波器组不适用于车辆声信号。本文提出了一种基于模式可分性原则设计车辆耳蜗滤波器组的新方法。在改进的外周听觉模型的基础上,提出了基于单耳模型的倒谱系数(MoMCC)作为特征,并将其应用于多类车辆分类。实验结果表明,MoMCC提高了分类器的分类率和鲁棒性,特别是在低信噪比下。
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