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Sparse decomposition of audio spectrograms for automated disease detection in chickens

机译:音频频谱图的稀疏分解可自动检测鸡中的疾病

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We explore the concept of dictionary learning and sparse coding applied to audio spectrograms. First, we statistically generate a dictionary of feature vectors by sampling many columns of input spectrograms. Then, using ℓ-regularized least-squares optimization, we transform the columns of the spectrogram into sparse coefficient vectors. Hence, the learned dictionary column features act as an overcomplete basis for the columns of the spectrograms. The dictionary generation portion of the algorithm is completely unsupervised. Next we use the coefficient data to train a support vector machine (SVM) to classify the acoustic data. Using this method, we classified one-minute audio samples of chicken vocalizations from a controlled environment into two groups: healthy and infected with infectious bronchitis (IB). We obtained a classification accuracy of 97.85%.
机译:我们探索了字典学习和稀疏编码应用于音频声谱图的概念。首先,我们通过对输入频谱图的许多列进行采样,以统计方式生成特征向量的字典。然后,使用ℓ-regularized最小二乘优化,将频谱图的列转换为稀疏系数向量。因此,学习到的字典列特征充当频谱图列的不完整基础。该算法的字典生成部分是完全不受监督的。接下来,我们使用系数数据来训练支持向量机(SVM)对声学数据进行分类。使用此方法,我们将来自受控环境的一分钟鸡发声的音频样本分为两组:健康组和感染性支气管炎(IB)。我们获得了97.85%的分类精度。

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