Insect Sound Recognition Based on MFCC and PNN

Zhu Le-qing
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引用次数: 35

Abstract

This study aims to provide general technicians who manage pests in production with a convenient way to recognize insects. A viable scheme to identify insect sounds automatically is proposed by using sound parameterization techniques that dominate speaker recognition technology. The acoustic signal is preprocessed, segmented into a series of sound samples. Mel-frequency cepstrum coefficient(MFCC) is extracted from the sound sample as sound features, and probabilistic neural network(PNN) is trained with given features. The testing samples are classified by the PNN finally. The proposed method is evaluated in a database with acoustic samples of 50 different insect sounds. The recognition rate was above 96%. The test results proved the efficiency of the proposed method.
基于MFCC和PNN的昆虫声音识别
本研究旨在为生产中管理害虫的一般技术人员提供一种方便的昆虫识别方法。提出了一种利用声音参数化技术自动识别昆虫声音的可行方案。声音信号经过预处理,分割成一系列声音样本。从声音样本中提取Mel-frequency倒频谱系数(MFCC)作为声音特征,并利用给定特征训练概率神经网络(PNN)。最后利用PNN对测试样本进行分类。在一个包含50种不同昆虫声音样本的数据库中对所提出的方法进行了评估。识别率在96%以上。实验结果证明了该方法的有效性。
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