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Automatic acoustic identification of individuals in multiple species: improving identification across recording conditions

机译:在多种物种中自动声学识别:改善录音条件的识别

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摘要

Many animals emit vocal sounds which, independently from the sounds' function, contain some individually distinctive signature. Thus the automatic recognition of individuals by sound is a potentially powerful tool for zoology and ecology research and practical monitoring. Here, we present a general automatic identification method that can work across multiple animal species with various levels of complexity in their communication systems. We further introduce new analysis techniques based on dataset manipulations that can evaluate the robustness and generality of a classifier. By using these techniques, we confirmed the presence of experimental confounds in situations resembling those from past studies. We introduce data manipulations that can reduce the impact of these confounds, compatible with any classifier. We suggest that assessment of confounds should become a standard part of future studies to ensure they do not report over-optimistic results. We provide annotated recordings used for analyses along with this study and we call for dataset sharing to be a common practice to enhance the development of methods and comparisons of results.
机译:许多动物散发出声音,独立于声音功能,包含一些单独独特的签名。因此,通过声音自动识别个体是一种潜在的动物学和生态学研究和实际监测工具。在这里,我们提出了一项一般的自动识别方法,可以在其通信系统中具有各种复杂性的多种动物物种。我们进一步引入了基于数据集操纵的新分析技术,可以评估分类器的稳健性和普遍性。通过使用这些技术,我们确认存在与过去研究中那些类似的情况下的实验混淆。我们介绍了可以减少这些混淆的影响,与任何分类器兼容的数据操作。我们建议对混淆的评估应该成为未来研究的标准部分,以确保他们没有报告过度乐观的结果。我们提供用于分析的注释录制以及本研究,我们呼吁数据集分享是一个常见的做法,以增强结果的发展和结果比较。

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