A software pipeline for automated wildlife population sampling

Peter K. Marsh, Franz J. Kurfess
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引用次数: 0

Abstract

Ecologists today face significant challenges in accurately modeling wildlife populations. Population surveys provide an essential understanding of an ecosystem; however, they currently require an extensive amount of labor and resources to carry out which limits the frequency at which they are conducted. Lack of population data presents a significant barrier to ecologists in their ability to understand and model interactions between species and their surroundings. Preliminary work has been done in employing consumer drones and object detection software to automate data collection and processing on large mammal species. Such work suggests these technologies can significantly ease the process of data collection while maintaining an accuracy comparable to manual surveying techniques. While previous studies indicate the use of drone and object detection technology can aid in the collection of population data, there remain significant barriers in applying such methods to aid in ecological research on a broader scale. In particular, using object detection to identify target individuals involves combining many software tools, each of which comes with its own challenges and complexities. This paper presents a flexible software framework for automated population sampling that is accessible to researchers in the field of wildlife research. To achieve this we combine orthomosaic stitching, object detection, label post-processing, and visualization solutions into a single software pipeline. We then show how such a pipeline can be run in the cloud and provide documentation for others to replicate this process. Finally, we use a consumer drone and free navigation software to demonstrate the proposed workflow on a herd of cattle and assess its viability in providing useful population data.
一个用于自动野生动物种群采样的软件管道
今天,生态学家在准确模拟野生动物种群方面面临着重大挑战。人口调查提供了对生态系统的基本了解;然而,它们目前需要大量的劳动力和资源来执行,这限制了它们进行的频率。缺乏种群数据是生态学家理解和模拟物种与环境之间相互作用的一个重大障碍。在使用消费类无人机和目标检测软件来自动收集和处理大型哺乳动物物种的数据方面,已经完成了初步工作。这项工作表明,这些技术可以大大简化数据收集过程,同时保持与人工测量技术相当的准确性。虽然以前的研究表明,使用无人机和物体检测技术可以帮助收集人口数据,但在应用这些方法来帮助更大范围的生态研究方面仍然存在重大障碍。特别是,使用对象检测来识别目标个体需要结合许多软件工具,每个工具都有自己的挑战和复杂性。本文提出了一种灵活的软件框架,用于自动种群采样,可供野生动物研究领域的研究人员使用。为了实现这一点,我们将正交拼接、对象检测、标签后处理和可视化解决方案结合到一个单一的软件管道中。然后,我们将展示如何在云中运行这样的管道,并为其他人复制此过程提供文档。最后,我们使用消费者无人机和免费导航软件来演示一群牛的拟议工作流程,并评估其在提供有用的人口数据方面的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.60
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0.00%
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