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TIME-FREQUENCY SEGMENTATION OF BIRD SONG IN NOISY ACOUSTIC ENVIRONMENTS

机译:嘈杂的声学环境中鸟歌的时频分割

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Recent work in machine learning considers the problem of identifying bird species from an audio recording. Most methods require segmentation to isolate each syllable of bird call in input audio. Energy-based time-domain segmentation has been successfully applied to low-noise, single-bird recordings. However, audio from automated field recorders contains too much noise for such methods, so a more robust segmentation method is required. We propose a supervised time-frequency audio segmentation method using a Random Forest classifier, to extract syllables of bird call from a noisy signal. When applied to a test data set of 625 field-collected audio segments, our method isolates 93.6percent of the acoustic energy of bird song with a false positive rate of 8.6percent, outperforming energy thresholding.
机译:机器学习中最近的工作考虑了从音频录制识别鸟类的问题。 大多数方法都需要分割以隔离输入音录中的每个音节。 基于能量的时域分割已成功应用于低噪声单鸟录制。 但是,来自自动字段记录器的音频对此类方法具有太多噪声,因此需要更强大的分段方法。 我们提出了一种使用随机林分类器的监督时频音频分段方法,从嘈杂的信号中提取鸟呼叫的音节。 当应用于625个现场收集的音频段的测试数据集时,我们的方法隔离了93.6.6,鸟歌的声能量为8.6%,能量阈值优势阈值。

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