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Automated bird acoustic event detection and robust species classification

机译:自动鸟类声学事件检测和强大的物种分类

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Non-invasive bioacoustic monitoring is becoming increasingly popular for biodiversity conservation. Two automated methods for acoustic classification of bird species currently used are frame-based methods, a model that uses Hidden Markov Models (HMMs), and event-based methods, a model consisting of descriptive measurements or restricted to tonal or harmonic vocalizations. In this work, we propose a new method for automated field recording analysis with improved automated segmentation and robust bird species classification. We used a Gaussian Mixture Model (GMM)-based frame selection with an event-energy-based sifting procedure that selected representative acoustic events. We employed a Mel, band-pass filter bank on each event's spectrogram. The output in each subband was parameterized by an autoregressive (AR) model, which resulted in a feature consisting of all model coefficients. Finally, a support vector machine (SVM) algorithm was used for classification. The significance of the proposed method lies in the parameterized features depicting the species specific spectral pattern. This experiment used a control audio dataset and real-world audio dataset comprised of field recordings of eleven bird species from the Xeno-canto Archive, consisting of 2762 bird acoustic events with 339 detected "unknown" events (corresponding to noise or unknown species vocalizations). Compared with other recent approaches, our proposed method provides comparable identification performance with respect to the eleven species of interest. Meanwhile, superior robustness in real-world scenarios is achieved, which is expressed as the considerable improvement from 0.632 to 0.928 for the F-score metric regarding the "unknown" events. The advantage makes the proposed method more suitable for automated field recording analysis.
机译:非侵入性生物声学监测越来越受到生物多样性保护的流行。目前使用的鸟类种类的两个自动化方法是基于帧的方法,一种使用隐马尔可夫模型(HMMS)的模型以及基于事件的方法,包括描述性测量或限制为色调或谐波的模型。在这项工作中,我们提出了一种新的自动化现场记录分析方法,改进的自动分割和鲁棒鸟类分类。我们使用了基于事件 - 能源的筛选程序的高斯混合模型(GMM),其中选择了代表声学事件。我们在每个事件的频谱图上使用了MEL,带通滤波器银行。通过自回归(AR)模型参数化每个子带中的输出,这导致由所有模型系数组成的功能。最后,支持向量机(SVM)算法用于分类。所提出的方法的意义在于描述物种特定光谱图案的参数化特征。该实验使用了由Xeno-Canto Archive的11个鸟类的现场录制组成的控制音频数据集和现实世界音频数据集,其中包括2762个鸟声事件,其中包含339个“未知”事件(对应于噪音或未知物种声音) 。与其他最近的方法相比,我们所提出的方法为11个兴趣物种提供了可比的识别性能。同时,实现了现实世界方案的卓越稳健性,这表达了关于关于“未知”事件的F评分指标的0.632至0.928的相当大的改善。优势使得提出的方法更适合自动化现场记录分析。

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