Faculty of Biological and Environmental Sciences, University of Helsinki, Helsinki, Finland.
Acoustics Lab, Department of Information and Communications Engineering, Aalto University, Espoo, Finland.
J Acoust Soc Am. 2023 Jul 1;154(1):245-254. doi: 10.1121/10.0020153.
The present work focuses on how the landscape and distance between a bird and an audio recording unit affect automatic species identification. Moreover, it is shown that automatic species identification can be improved by taking into account the effects of landscape and distance. The proposed method uses measurements of impulse responses between the sound source and the recorder. These impulse responses, characterizing the effect of a landscape, can be measured in the real environment, after which they can be convolved with any number of recorded bird sounds to modify an existing set of bird sound recordings. The method is demonstrated using autonomous recording units on an open field and in two different types of forests, varying the distance between the sound source and the recorder. Species identification accuracy improves significantly when the landscape and distance effect is taken into account when building the classification model. The method is demonstrated using bird sounds, but the approach is applicable to other animal and non-animal vocalizations as well.
本研究主要关注鸟类与录音设备之间的景观和距离如何影响自动物种识别。此外,还表明通过考虑景观和距离的影响,可以提高自动物种识别的效果。该方法使用声源和记录仪之间的脉冲响应测量值。这些脉冲响应,表征景观的影响,可以在实际环境中进行测量,然后可以将它们与任意数量的记录的鸟类声音卷积,以修改现有的鸟类声音记录集。该方法使用开放场地和两种不同类型的森林中的自主录音单元进行演示,声源和记录仪之间的距离不同。当在构建分类模型时考虑景观和距离效应时,物种识别精度显著提高。该方法使用鸟类声音进行演示,但该方法也适用于其他动物和非动物发声。