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A Novel Method for Broiler Abnormal Sound Detection Using WMFCC and HMM

机译:使用WMFCC和HMM的肉鸡异常声音检测的一种新方法

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Broilers produce abnormal sounds such as cough and snore when they suffer from respiratory diseases. The aim of this research work was to develop a method for broiler abnormal sound detection. The sounds were recorded in a broiler house for one week (24/7). There were 20 thousand white feather broilers reared on the floor in a building. Results showed that the developed recognition algorithm, using wavelet transform Mel frequency cepstrum coefficients (WMFCCs), correlation distance Fisher criterion (CDF), and hidden Markov model (HMM), provided an average accuracy, precision, recall, and F1 of 93.8%, 94.4%, 94.1%, and 94.2%, respectively, for broiler sound samples. The results indicate that sound analysis can be used in broiler respiratory assessment in a commercial broiler farm.
机译:当患有呼吸系统疾病时,肉鸡产生异常声音,例如咳嗽和剧集。这项研究工作的目的是开发一种用于肉鸡异常声音检测的方法。声音被记录在肉鸡房屋中一周(24/7)。在建筑物的地板上有20,000粒白色羽毛肉鸡。结果表明,使用小波变换MEL频率Cepstrum系数(WMFCC),相关距离Fisher标准(CDF)和隐藏马尔可夫模型(HMM)的开发识别算法提供了平均精度,精度,召回和F1为93.8%, 94.4%,94.1%和94.2%,分别用于肉鸡声音样本。结果表明,声音分析可用于商业肉鸡农场的肉鸡呼吸评估。

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