大量鸟类物种自动识别

Marcelo Teider Lopes, Lucas L. Gioppo, Thiago T. Higushi, Celso A. A. Kaestner, C. Silla, Alessandro Lameiras Koerich
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引用次数: 47

摘要

本文主要研究了鸟类鸣声自动识别技术。鸟类监测对于执行一些任务很重要,例如评估它们的生活环境质量或监测机场附近鸟类对飞机造成的危险情况。我们使用信号处理和机器学习技术来处理鸟类物种识别问题。首先,使用特定的音频处理从鸟类录制的歌曲中提取特征,然后根据经典的机器学习场景执行问题,其中使用先前已知的鸟类歌曲的标记数据库来创建一个决策过程,用于预测新的鸟类歌曲的种类。实验是在一个特定地区出现的鸟类鸣叫记录数据集中进行的。实验结果比较了在不同情况下获得的性能,包括在现场记录的完整音频信号,以及通过分裂过程从信号中获得的短音频片段(脉冲)。还评价了类(鸟种)数对识别精度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Bird Species Identification for Large Number of Species
In this paper we focus on the automatic identification of bird species from their audio recorded song. Bird monitoring is important to perform several tasks, such as to evaluate the quality of their living environment or to monitor dangerous situations to planes caused by birds near airports. We deal with the bird species identification problem using signal processing and machine learning techniques. First, features are extracted from the bird recorded songs using specific audio treatment, next the problem is performed according to a classical machine learning scenario, where a labeled database of previously known bird songs are employed to create a decision procedure that is used to predict the species of a new bird song. Experiments are conducted in a dataset of recorded songs of bird species which appear in a specific region. The experimental results compare the performance obtained in different situations, encompassing the complete audio signals, as recorded in the field, and short audio segments (pulses) obtained from the signals by a split procedure. The influence of the number of classes (bird species) in the identification accuracy is also evaluated.
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