Application of a novel deep learning–based 3D videography workflow to bat flight

IF 4.1 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Annals of the New York Academy of Sciences Pub Date : 2024-04-23 DOI:10.1111/nyas.15143
Jonas Håkansson, Brooke L. Quinn, Abigail L. Shultz, Sharon M. Swartz, Aaron J. Corcoran
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Abstract

Studying the detailed biomechanics of flying animals requires accurate three-dimensional coordinates for key anatomical landmarks. Traditionally, this relies on manually digitizing animal videos, a labor-intensive task that scales poorly with increasing framerates and numbers of cameras. Here, we present a workflow that combines deep learning–powered automatic digitization with filtering and correction of mislabeled points using quality metrics from deep learning and 3D reconstruction. We tested our workflow using a particularly challenging scenario: bat flight. First, we documented four bats flying steadily in a 2 m3 wind tunnel test section. Wing kinematic parameters resulting from manually digitizing bats with markers applied to anatomical landmarks were not significantly different from those resulting from applying our workflow to the same bats without markers for five out of six parameters. Second, we compared coordinates from manual digitization against those yielded via our workflow for bats flying freely in a 344 m3 enclosure. Average distance between coordinates from our workflow and those from manual digitization was less than a millimeter larger than the average human-to-human coordinate distance. The improved efficiency of our workflow has the potential to increase the scalability of studies on animal flight biomechanics.

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将基于深度学习的新型 3D 摄像工作流程应用于蝙蝠飞行
研究飞行动物的详细生物力学需要关键解剖地标的精确三维坐标。传统上,这需要依靠人工对动物视频进行数字化,这是一项劳动密集型任务,随着帧率和摄像机数量的增加,其扩展性很差。在这里,我们提出了一种工作流程,它将深度学习驱动的自动数字化与利用深度学习和三维重建的质量指标对错误标记点进行过滤和校正相结合。我们使用一个特别具有挑战性的场景测试了我们的工作流程:蝙蝠飞行。首先,我们记录了四只蝙蝠在一个 2 立方米的风洞试验段中稳定飞行的情况。对蝙蝠进行手动数字化并在解剖学地标上添加标记后得出的翅膀运动学参数,在六个参数中的五个参数上,与将我们的工作流程应用于相同的无标记蝙蝠后得出的参数没有显著差异。其次,我们比较了在 344 立方米的围栏中自由飞行的蝙蝠的人工数字化坐标和工作流程得出的坐标。我们工作流程得出的坐标与人工数字化得出的坐标之间的平均距离比人与人之间的平均坐标距离大不到一毫米。我们工作流程效率的提高有可能增加动物飞行生物力学研究的可扩展性。
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来源期刊
Annals of the New York Academy of Sciences
Annals of the New York Academy of Sciences 综合性期刊-综合性期刊
CiteScore
11.00
自引率
1.90%
发文量
193
审稿时长
2-4 weeks
期刊介绍: Published on behalf of the New York Academy of Sciences, Annals of the New York Academy of Sciences provides multidisciplinary perspectives on research of current scientific interest with far-reaching implications for the wider scientific community and society at large. Each special issue assembles the best thinking of key contributors to a field of investigation at a time when emerging developments offer the promise of new insight. Individually themed, Annals special issues stimulate new ways to think about science by providing a neutral forum for discourse—within and across many institutions and fields.
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