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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Enhancing the dissimilarity-based classification of birdsong recordings
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Enhancing the dissimilarity-based classification of birdsong recordings

机译:增强基于鸟鸣记录的基于差异的分类

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Classification of birdsong recordings can be naturally formulated as a multiple instance problem, where bags of instances are represented by either features or dissimilarities. In bioacoustics, bags typically correspond to regions of interest in spectrograms, which are detected after a segmentation stage of the audio recordings. In this paper, we use different dissimilarity measures between bags and explore whether the subsequent application of metric learning/adaptation methods and the construction of dissimilarity spaces allow increasing the classification performance of birdsong recordings. A publicly available bioacoustic data set is used for the experiments. Our results suggest, in the first place, that appropriate dissimilarity measures are those which capture most of the overall differences between bags, such as the modified Hausdorff distance and the mean minimum distance; in the second place, they confirm the benefit from adapting the applied dissimilarity measure as well as the potential further enhancement of the classification performance by building dissimilarity spaces and increasing training set sizes. (C) 2016 Elsevier B.V. All rights reserved.
机译:Birdong录音的分类可以自然地表达为多实例问题,其中实例包由特征或相异性表示。在生物声学中,袋子通常对应于声谱图中的感兴趣区域,这些声谱在音频记录的分割阶段之后被检测到。在本文中,我们使用了袋之间的不同差异度量,并探讨了度量学习/适应方法的后续应用以及差异空间的构造是否可以提高Birdong录音的分类性能。实验使用了公开可用的生物声学数据集。首先,我们的结果表明,适当的相异性度量是那些能捕获袋子之间大部分总体差异的度量,例如修正的Hausdorff距离和平均最小距离;其次,他们证实了通过应用相异性度量进行调整以及通过构建相异空间和增加训练集大小可能进一步增强分类性能的好处。 (C)2016 Elsevier B.V.保留所有权利。

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