首页> 外文期刊>Marine Mammal Science >Estimating morphometric attributes of baleen whales with photogrammetry from small UASs: A case study with blue and gray whales
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Estimating morphometric attributes of baleen whales with photogrammetry from small UASs: A case study with blue and gray whales

机译:从小uass估算Balen鲸鱼的形态学属性:蓝色和灰色鲸鱼的案例研究

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摘要

Small unmanned aircraft systems (sUASs) are fostering novel approaches to marine mammal research, including baleen whale photogrammetry, by providing new observational perspectives. We collected vertical images of 89 gray and 6 blue whales using low cost sUASs to examine the accuracy of image based morphometry. Moreover, measurements from 192 images of a 1m calibration object were used to examine four different scaling correction models. Results indicate that a linear mixed model including an error term for flight and date contained 0.17m less error and 0.25m less bias than no correction. We used the propagation uncertainty law to examine error contributions from scaling and image measurement (digitization) to determine that digitization accounted for 97% of total variance. Additionally, we present a new whale body size metric termed Body Area Index (BAI). BAI is scale invariant and is independent of body length (R-2=0.11), enabling comparisons of body size within and among populations, and over time. With this study we present a three program analysis suite that measures baleen whales and compensates for lens distortion and corrects scaling error to produce 11 morphometric attributes from sUAS imagery. The program is freely available and is expected to improve processing efficiency and analytical continuity.
机译:小型无人机系统(SUASS)通过提供新的观察观点,促进了海洋哺乳动物研究的新方法,包括平滑的鲸鱼摄影测量。我们使用低成本船只收集了89个灰色和6个蓝色鲸鱼的垂直图像,以检查基于图像的形态学的准确性。此外,使用1M校准对象的192个图像的测量来检查四种不同的缩放校正模型。结果表明,包括飞行和日期的误差术语的线性混合模型包含0.17米的误差,比没有校正的偏差减少0.25米。我们使用传播不确定性定律来检查来自缩放和图像测量(数字化)的错误贡献,以确定数字化占总方差的97%。此外,我们介绍了一个新的鲸鱼体尺寸公制称为体积区域指数(Bai)。白级是规模不变的,独立于体长(R-2 = 0.11),使人群内部和群体中的身体大小和随着时间的推移。通过这项研究,我们提出了一套三个程序分析套件,衡量巴贝鲸,并补偿镜头失真并纠正缩放误差,以产生来自Suas图像的11个形态学属性。该计划是自由的,预计将提高处理效率和分析连续性。

著录项

  • 来源
    《Marine Mammal Science》 |2019年第1期|共32页
  • 作者单位

    Oregon State Univ Aerial Informat Syst Lab Forest Engn Resources &

    Management 280 Peavy Hall Corvallis OR 97331 USA;

    Oregon State Univ Marine Mammal Inst Dept Fisheries &

    Wildlife 2030 SE Marine Sci Dr Newport OR 97365 USA;

    Oregon State Univ Marine Mammal Inst Dept Fisheries &

    Wildlife 2030 SE Marine Sci Dr Newport OR 97365 USA;

    Oregon State Univ Aerial Informat Syst Lab Forest Engn Resources &

    Management 280 Peavy Hall Corvallis OR 97331 USA;

    Oregon State Univ Marine Mammal Inst Dept Fisheries &

    Wildlife 2030 SE Marine Sci Dr Newport OR 97365 USA;

    Oregon State Univ Marine Mammal Inst Dept Fisheries &

    Wildlife 2030 SE Marine Sci Dr Newport OR 97365 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 水生生物学;
  • 关键词

    drone; sUAS; UAV; morphometric; photogrammetry; gray whale; blue whale;

    机译:无人机;苏瓦斯;无人机;形态位;摄影测量;灰鲸;蓝鲸;

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