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M2S2: A Multimodal Sensor System for Remote Animal Motion Capture in the Wild | IEEE Journals & Magazine | IEEE Xplore

M2S2: A Multimodal Sensor System for Remote Animal Motion Capture in the Wild


Abstract:

Capturing animal locomotion in the wild is far more challenging than in controlled laboratory settings. Wildlife subjects move unpredictably, and issues, such as scaling,...Show More

Abstract:

Capturing animal locomotion in the wild is far more challenging than in controlled laboratory settings. Wildlife subjects move unpredictably, and issues, such as scaling, occlusion, lighting changes, and the lack of ground truth data, make motion capture difficult. Unlike human biomechanics, where machine learning thrives with annotated datasets, such resources are scarce for wildlife. Multimodal sensing offers a solution by combining the strengths of various sensors, such as Light Detection and Ranging {LiDAR) and thermal cameras, to compensate for individual sensor limitations. In addition, some sensors, like LiDAR, can provide training data for monocular pose estimation models. We introduce a multimodal sensor system (M2S2) for capturing animal motion in the wild. M2S2 integrates RGB, depth, thermal, event, LiDAR, and acoustic sensors to overcome challenges like synchronization and calibration. We showcase its application with data from cheetahs, offering a new resource for advancing sensor fusion algorithms in wildlife motion capture.
Published in: IEEE Sensors Letters ( Volume: 9, Issue: 4, April 2025)
Article Sequence Number: 5501104
Date of Publication: 14 February 2025
Electronic ISSN: 2475-1472
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I. Introduction

Understanding animal motion in natural environments is essential for insights into ecology, evolutionary biology, and neuroscience. While controlled laboratory settings have been informative, the complexity of outdoor environments poses significant sensing challenges like occlusion and lighting variability. In human motion capture, deep learning has addressed these challenges but requires extensive ground truth data currently impractical for wildlife [1].

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