利用三维几何形态计量学识别狮子爪和足迹的前、中外侧位置

A. Marchal, A. Marchal, P. Lejeune, P. D. Bruyn
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引用次数: 2

摘要

估计动物种群的分布和状态在生物学的各个领域都至关重要。由于不可靠的记录技术、操纵器偏差和基质变化,通过物种的轨迹监测物种是有争议的。此外,对产生每条轨迹的脚的主观识别可能会导致重大错误,例如,当将同一个人的不同脚产生的轨迹分配给不同的个人时。本研究的目的是开发一种准确、一致和客观的算法,使用几何形态计量学从非洲狮爪和足迹的数字三维(3D)模型中识别前后(后/前)和中(右/左)位置。我们使用数字近景摄影测量在132只爪子和182条3D记录的轨迹上手动定位了12个固定地标。我们使用几何形态计量学来评估和可视化爪子之间、沿着前后轴和中横轴的轨迹之间以及爪子和轨迹之间的形状变化。使用线性判别分析和jack knifed预测的识别算法对爪子和轨迹的最大准确率分别达到95.45%和91.21%。我们建议在未来的研究中使用这种客观的位置识别算法,对非洲狮个体之间的足迹进行比较。
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Identification of the Anteroposterior and Mediolateral Position of Lion Paws and Tracks Using 3D Geometric Morphometrics
Estimating the distribution and status of animal populations is crucial in various fields of biology. Monitoring species via their tracks is controversial due to unreliable recording techniques, manipulator bias and substrate variation. Furthermore, subjective identification of the foot that produces each track can lead to significant errors, for example, when assigning tracks made by different feet from the same individual to different individuals. The aim of this research was to develop an accurate, consistent and objective algorithm to identify the anteroposterior (hind/front) and mediolateral (right/left) position from digital threedimensional (3D) models of African lion (Panthera leo) paws and tracks using geometric morphometrics. We manually positioned 12 fixed landmarks on 132 paws and 182 tracks recorded in 3D using digital close-range photogrammetry. We used geometric morphometrics to evaluate and visualize the shape variation between paws and between tracks along the anteroposterior and mediolateral axes, and between paws and tracks. The identification algorithm using linear discriminant analysis with jack-knifed predictions reached a maximum accuracy of 95.45% and 91.21% for paws and tracks, respectively. We recommend the use of this objective position identification algorithm in future studies where tracks are compared between individual African lions.
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