利用人工智能进行野生动物生物声学监测:方法学文献综述

Sandhya Sharma, Kazuhiko Sato, B. P. Gautam
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引用次数: 1

摘要

人工智能(AI)是一门广泛的计算科学,因其解决问题、决策和模式识别能力而在生态领域引起了极大的关注。由于跨越时空尺度的大量数据集可用于机器学习和解释,生物声学野生动物监测在人工智能技术的性能中至关重要。虽然一些研究已经将人工智能算法应用到野生动物生态学中,但这种发展中的方法在野生动物声学监测中的未来是未知的。在本研究中,我们对2015年至2022年3月的20篇论文进行了科学文献综述,以评估其应用并提出未来需求。在此期间,我们观察到人工智能方法在野生动物声学监测中的使用有了相当大的增加。总体而言,鸟类$(\mathbf{N}=\mathbf{12})$受到的关注最多,其次是两栖动物$(\mathbf{N}=\mathbf{5})$和哺乳动物$(\mathbf{N}=\mathbf{3})$,尽管它们的操作是多样化的。在生物声学野生动物监测中使用的人工智能学习中,卷积神经网络在性能上具有很高的准确性,具有更多的优势,并且比其他分类方法在多篇文章中被复制。回顾以前在生物声学研究中使用的人工智能算法,有望有助于了解趋势并确定自动野生动物监测的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bioacoustics Monitoring of Wildlife using Artificial Intelligence: A Methodological Literature Review
Artificial intelligence (AI) is a broad computing science that has attracted significant attention in the ecological sector because of its problem-solving, deciding, and pattern recognition capabilities. Because of the large number of datasets available across spatiotemporal scales that may be used for machine learning and interpretation, bioacoustics wildlife monitoring is essential in the performance of AI techniques. Although several studies have enforced AI algorithms into the wildlife ecology, the future of this developing method in wildlife acoustic monitoring is unknown. In this study, we performed a scientific literature review covering 20 papers from 2015 and March 2022 to evaluate its application and advise future demands. During this time, we observed a considerable increase in the use of AI approaches in wildlife acoustic monitoring. Overall, bird species $(\mathbf{N}=\mathbf{12})$ received the most attention, followed by amphibians $(\mathbf{N}=\mathbf{5})$ and mammals $(\mathbf{N}=\mathbf{3})$), even though their operations are diversifying. Among the AI learnings used in bioacoustics wildlife monitoring, a convolutional neural network was highly accurate in terms of performance, had more advantages, and was replicated in multiple articles than other classification methods. Reviewing previously used AI algorithms in bioacoustics research is expected to aid in understanding the trends and identifying gaps in automatic wildlife monitoring.
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