Detecting symptoms of diseases in poultry through audio signal processing

Signal and Information Processing(2014)

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摘要
We developed an audio signal processing algorithm that detects rales (gurgling noises that are a distinct symptom of common respiratory diseases in poultry). We derived features from the audio by calculating mel frequency cepstral coefficients (MFCCs), clustering the MFCC vectors, and examining the distribution of cluster indices over a window of time. The features are classified with a C4.5 decision tree. Our training data consisted of eight minutes of manually labeled audio selected from 25 days of continuous recording from a controlled study. The experiment group was challenged with the infectious bronchitis virus and became sick, while the control group remained healthy. We tested the algorithm on the entire dataset and obtained results that match the course of the disease. Algorithms such as this could be used to continuously monitor chickens in commercial poultry farms, providing an early warning system that could significantly reduce the costs incurred from disease.
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关键词
agricultural engineering,audio signal processing,cellular biophysics,cepstral analysis,decision trees,diseases,farming,microorganisms,pattern clustering,signal classification,C4.5 decision tree,MFCC vector clustering,audio signal processing algorithm,chickens,cluster index distribution,commercial poultry farms,early warning system,feature classification,gurgling noises,infectious bronchitis virus,mel frequency cepstral coefficients,respiratory diseases,training data,acoustic signal processing,animal welfare,diseases,environmental monitoring,machine learning
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