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Designing better frog call recognition models

机译:设计更好的青蛙呼叫识别模型

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Abstract Advances in bioacoustic technology, such as the use of automatic recording devices, allow wildlife monitoring at large spatial scales. However, such technology can produce enormous amounts of audio data that must be processed and analyzed. One potential solution to this problem is the use of automated sound recognition tools, but we lack a general framework for developing and validating these tools. Recognizers are computer models of an animal sound assembled from ?¢????training data?¢???? (i.e., actual samples of vocalizations). The settings of variables used to create recognizers can impact performance, and the use of different settings can result in large differences in error rates that can be exploited for different monitoring objectives. We used Song Scope (Wildlife Acoustics Inc.) to build recognizers and vocalizations of the wood frog ( Lithobates sylvaticus ) to test how different settings and amounts of training data influence recognizer performance. Performance was evaluated using precision (the probability of a recognizer match being a true match) and sensitivity (the proportion of vocalizations detected) based on a receiver operating characteristic (ROC) curve-determined score threshold. Evaluations were conducted using recordings not used to build the recognizer. Wood frog recognizer performance was sensitive to setting changes in four out of nine variables, and small improvements were achieved by using additional training data from different sites and from the same recording, but not from different recordings from the same site. Overall, the effect of changes to variable settings was much greater than the effect of increasing training data. Additionally, by testing the performance of the recognizer on vocalizations not used to build the recognizer, we discovered that Type I error rates appear idiosyncratic and do not recommend extrapolation from training to new data, whereas Type II errors showed more consistency and extrapolation can be justified. Optimizing variable settings on independent recordings led to a better match between recognizer performance and monitoring objectives. We provide general recommendations for application of this methodology with other species and make some suggestions for improvements.
机译:摘要生物声学技术的进步,例如使用自动记录设备,使得可以在较大的空间尺度上对野生动植物进行监测。但是,这种技术会产生大量必须处理和分析的音频数据。解决此问题的一种可能的解决方案是使用自动声音识别工具,但是我们缺乏开发和验证这些工具的通用框架。识别器是根据训练数据组装而成的动物声音的计算机模型。 (即发声的实际样本)。用于创建识别器的变量的设置可能会影响性能,并且使用不同的设置可能会导致错误率的巨大差异,可将其用于不同的监视目标。我们使用Song Scope(Wildlife Acoustics Inc.)来构建识别器和木蛙(Lithobates sylvaticus)的发声,以测试不同设置和数量的训练数据如何影响识别器性能。基于接收器操作特性(ROC)曲线确定的分数阈值,使用精度(识别器匹配为真匹配的概率)和灵敏度(检测到的发声比例)评估性能。使用未用于构建识别器的记录进行评估。木蛙识别器的性能对设置九个变量中的四个变量的更改很敏感,并且通过使用来自不同站点和同一记录的其他训练数据(但不是来自同一站点的不同记录)获得的微小改进。总体而言,更改变量设置的影响远大于增加训练数据的影响。此外,通过测试识别器在未用于构建识别器的发声上的性能,我们发现I类错误率看起来是特质的,并且不建议从训练到新数据进行推断,而II类错误显示出更多的一致性,并且推断是合理的。优化独立记录的变量设置可以使识别器性能与监视目标更好地匹配。我们提供了将该方法与其他物种一起应用的一般建议,并提出了一些改进建议。

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