Guidelines for appropriate use of BirdNET scores and other detector outputs

IF 1.3 4区 生物学 Q2 Agricultural and Biological Sciences
Connor M. Wood, Stefan Kahl
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引用次数: 0

Abstract

Machine learning tools capable of identifying animals by sound have proliferated, making the challenge of interpreting their outputs much more prevalent. These tools, like their predecessors, quantify prediction uncertainty with scores that tend to resemble probabilities but are actually unitless scores that are (generally) positively related to prediction accuracy in species-specific ways. BirdNET is one such tool, a freely available animal sound identification algorithm capable of identifying > 6,000 species, most of them birds. We describe two ways in which BirdNET “confidence scores”—and the output scores of other detector tools—can be used appropriately to interpret BirdNET results (reviewing them down to a user-defined threshold or converting them to probabilities), and provide a step-by-step tutorial to follow these suggestions. These suggestions are complementary to common performance metrics like precision, recall, and receiver operating characteristic. BirdNET can be a powerful tool for acoustic-based biodiversity research, but its utility depends on the careful use and interpretation of its outputs.

鸟网评分和其他检测器输出结果的适当使用指南
能够通过声音识别动物的机器学习工具如雨后春笋般涌现,这使得解释其输出结果的挑战变得更加普遍。这些工具和它们的前辈一样,用分数量化预测的不确定性,这些分数往往类似于概率,但实际上是无单位分数,(通常)与特定物种的预测准确性呈正相关。BirdNET 就是这样一种工具,它是一种免费提供的动物声音识别算法,能够识别 6000 个物种,其中大部分是鸟类。我们介绍了 BirdNET "置信度分数"--以及其他检测工具的输出分数--可适当用于解释 BirdNET 结果的两种方法(将其审查至用户定义的阈值或将其转换为概率),并提供了遵循这些建议的分步教程。这些建议是对精确度、召回率和接收器工作特性等常见性能指标的补充。BirdNET 可以成为基于声学的生物多样性研究的强大工具,但其实用性取决于对其输出结果的谨慎使用和解释。
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来源期刊
Journal of Ornithology
Journal of Ornithology 生物-鸟类学
自引率
7.70%
发文量
0
审稿时长
3-8 weeks
期刊介绍: The Journal of Ornithology (formerly Journal für Ornithologie) is the official journal of the German Ornithologists'' Society (http://www.do-g.de/ ) and has been the Society´s periodical since 1853, making it the oldest still existing ornithological journal worldwide.
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