Acoustic Classification of Bird Species Using an Early Fusion of Deep Features

Q4 Agricultural and Biological Sciences
Western Birds Pub Date : 2023-03-01 DOI:10.3390/birds4010011
Jie Xie, Mingying Zhu
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引用次数: 1

Abstract

Bird sound classification plays an important role in large-scale temporal and spatial environmental monitoring. In this paper, we investigate both transfer learning and training from scratch for bird sound classification, where pre-trained models are used as feature extractors. Specifically, deep cascade features are extracted from various layers of different pre-trained models, which are then fused to classify bird sounds. A multi-view spectrogram is constructed to characterize bird sounds by simply repeating the spectrogram to make it suitable for pre-trained models. Furthermore, both mixup and pitch shift are applied for augmenting bird sounds to improve the classification performance. Experimental classification on 43 bird species using linear SVM indicates that deep cascade features can achieve the highest balanced accuracy of 90.94% ± 1.53%. To further improve the classification performance, an early fusion method is used by combining deep cascaded features extracted from different pre-trained models. The final best classification balanced accuracy is 94.89% ± 1.35%.
基于早期深度特征融合的鸟类声学分类
鸟声分类在大尺度时空环境监测中具有重要作用。在本文中,我们研究了迁移学习和从头开始训练用于鸟类声音分类,其中使用预训练模型作为特征提取器。具体来说,从不同预训练模型的各个层中提取深度级联特征,然后将其融合到鸟类声音分类中。通过简单地重复声谱图,构建了一个多视图声谱图来表征鸟类的声音,使其适合于预训练的模型。在此基础上,利用混频和移频两种方法增强了鸟类的叫声,提高了分类性能。利用线性支持向量机对43种鸟类进行分类的实验表明,深度级联特征可以达到最高的平衡准确率(90.94%±1.53%)。为了进一步提高分类性能,采用一种早期融合方法,将从不同预训练模型中提取的深度级联特征组合在一起。最终的最佳分类平衡准确率为94.89%±1.35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Western Birds
Western Birds Agricultural and Biological Sciences-Animal Science and Zoology
CiteScore
0.60
自引率
0.00%
发文量
0
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