基于二值化神经网络的鸟声检测

Muhammad Munim Zabidi, Kah Liang Wong, U. U. Sheikh, Shahidatul Sadiah Abdul Manan, M. A. Hamzah
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引用次数: 1

摘要

通过分析特定地区鸟类的行为模式,研究人员可以预测未来生态系统的变化。许多鸟类可以通过它们的声音来识别,自动记录单元(ARUs)可以捕捉实时的鸟类发声。对录音进行分析,看是否有鸟叫声。鸟的叫声可以用于进一步的分析,比如确定它的种类。使用深度神经网络(dnn)进行鸟声检测已被证明优于传统方法。然而,深度神经网络需要大量的存储和处理能力。二值化神经网络(bnn)的使用是克服这一限制的最新方法之一。本文采用了一种基于BNN的XNOR-Net变体的鸟声检测体系结构。根据所使用的隐藏层数对XNOR-Net进行了性能分析,构建了准确率最高的配置。该系统使用Xeno-Canto和UrbanSound8K数据集进行测试,分别表示鸟类和非鸟类的声音。我们达到了96.06%的训练准确度和94.08%的验证准确度。我们认为bnn是一种有效的鸟类声音检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bird Sound Detection with Binarized Neural Networks
By analysing the behavioural patterns of bird species in a specific region, researchers can predict future changes in the ecosystem. Many birds can be identified by their sounds, and autonomous recording units (ARUs) can capture real-time bird vocalisations. The recordings are analysed to see if there are any bird sounds. The sound of a bird can be used for further analysis, such as determining its species. Bird sound detection using Deep Neural Networks (DNNs) has been shown to outperform traditional methods. DNNs, however, necessitate a lot of storage and processing power. The use of Binarized Neural Networks (BNNs) is one of the most recent approaches to overcoming this limitation. In this paper, a bird sound detection architecture based on the XNOR-Net variant of BNN is used. Performance analysis of XNOR-Net in terms of the number of hidden layers used was performed, and the configuration with the highest accuracy was built. The system was tested using Xeno-Canto and UrbanSound8K datasets to represent bird and non-bird sounds, respectively. We achieved 96.06 per cent training accuracy and 94.08 per cent validation accuracy. We believe that BNNs are an effective method for detecting bird sounds.
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