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Seismic Savanna: Machine Learning for Classifying Wildlife and Behaviours Using Ground‐based Vibration Field Recordings

REMOTE SENSING IN ECOLOGY AND CONSERVATION(2022)

Univ Oxford

Cited 13|Views1
Abstract
AbstractWe develop a machine learning approach to detect and discriminate elephants from other species, and to recognise important behaviours such as running and rumbling, based only on seismic data generated by the animals. We demonstrate our approach using data acquired in the Kenyan savanna, consisting of 8000 h seismic recordings and 250 k camera trap pictures. Our classifiers, different convolutional neural networks trained on seismograms and spectrograms, achieved 80%–90% balanced accuracy in detecting elephants up to 100 m away, and over 90% balanced accuracy in recognising running and rumbling behaviours from the seismic data. We release the dataset used in this study: SeisSavanna represents a unique collection of seismic signals with the associated wildlife species and behaviour. Our results suggest that seismic data offer substantial benefits for monitoring wildlife, and we propose to further develop our methods using dense arrays that could result in a seismic shift for wildlife monitoring.
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African elephant,machine learning,seismic waves,wildlife monitoring
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要点】:本研究开发了一种基于地面振动场记录的机器学习方法,用以检测和区分大象与其他物种,并识别其奔跑和低吼等行为,实验结果证明了该方法在野生动物监测中的潜在价值。

方法】:研究者使用不同的卷积神经网络模型,对地震图和频谱图进行训练,从而实现对大象的检测和行为的识别。

实验】:在肯尼亚稀树草原收集了8000小时的地震记录和25万张相机陷阱图片,所训练的分类器在检测距离达100米的大象时实现了80%–90%的平衡准确率,在识别奔跑和低吼行为时准确率超过90%。本研究公开了所使用的独特数据集:SeisSavanna,包含相应的野生动物种类和行为标签。