Automated robust Anuran classification by extracting elliptical feature pairs from audio spectrograms

Marcello Tomasini, Katrina Smart, R. Menezes, M. Bush, Eraldo Ribeiro
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引用次数: 4

Abstract

Ecologists can assess the health of wetlands by monitoring populations of animals such as Anurans (i.e., frogs and toads), which are sensitive to habitat changes. But, surveying anurans requires trained experts to identify species from the animals' mating calls. This identification task can be streamlined by automation. To this end, we propose an automatic frog-call classification algorithm and a smartphone application that drastically simplify the monitoring of anuran populations. We offer three main contributions. First, we introduce a classification method that has an average accuracy of 86% on a dataset of 736 calls from 48 anuran species from the United States. Our dataset is much larger and diverse than those of previous works on anuran classification. Second, we extract a new type of spectrogram feature that avoids syllable segmentation and the manual cleaning of the recordings. Our method also works with recordings of variable length. Third, our method uses GPS location and a voting scheme to reliably deal with a large number of species and high levels of noise.
从音频谱图中提取椭圆特征对的自动鲁棒Anuran分类
生态学家可以通过监测动物的数量来评估湿地的健康状况,如蛙类动物(即青蛙和蟾蜍),它们对栖息地的变化很敏感。但是,调查无尾猿需要训练有素的专家从动物的交配叫声中识别物种。这个识别任务可以通过自动化来简化。为此,我们提出了一种自动青蛙叫声分类算法和一种智能手机应用程序,大大简化了对anuran种群的监测。我们提供三个主要贡献。首先,我们引入了一种平均准确率为86%的分类方法,该方法对来自美国48种无尾猿的736次呼叫进行了分类。我们的数据集比以前在anuran分类方面的工作更大,更多样化。其次,我们提取了一种新的谱图特征,避免了音节分割和人工清理录音。我们的方法也适用于可变长度的录音。第三,我们的方法使用GPS定位和投票方案来可靠地处理大量物种和高水平的噪声。
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