Evidence on the efficacy of small unoccupied aircraft systems (UAS) as a survey tool for North American terrestrial, vertebrate animals: a systematic map.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jared A Elmore, Emma A Schultz, Landon R Jones, Kristine O Evans, Sathishkumar Samiappan, Morgan B Pfeiffer, Bradley F Blackwell, Raymond B Iglay
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引用次数: 0

Abstract

Background: Small unoccupied aircraft systems (UAS) are replacing or supplementing occupied aircraft and ground-based surveys in animal monitoring due to improved sensors, efficiency, costs, and logistical benefits. Numerous UAS and sensors are available and have been used in various methods. However, justification for selection or methods used are not typically offered in published literature. Furthermore, existing reviews do not adequately cover past and current UAS applications for animal monitoring, nor their associated UAS/sensor characteristics and environmental considerations. We present a systematic map that collects and consolidates evidence pertaining to UAS monitoring of animals.

Methods: We investigated the current state of knowledge on UAS applications in terrestrial animal monitoring by using an accurate, comprehensive, and repeatable systematic map approach. We searched relevant peer-reviewed and grey literature, as well as dissertations and theses, using online publication databases, Google Scholar, and by request through a professional network of collaborators and publicly available websites. We used a tiered approach to article exclusion with eligible studies being those that monitor (i.e., identify, count, estimate, etc.) terrestrial vertebrate animals. Extracted metadata concerning UAS, sensors, animals, methodology, and results were recorded in Microsoft Access. We queried and catalogued evidence in the final database to produce tables, figures, and geographic maps to accompany this full narrative review, answering our primary and secondary questions.

Review findings: We found 5539 articles from our literature searches of which 216 were included with extracted metadata categories in our database and narrative review. Studies exhibited exponential growth over time but have levelled off between 2019 and 2021 and were primarily conducted in North America, Australia, and Antarctica. Each metadata category had major clusters and gaps, which are described in the narrative review.

Conclusions: Our systematic map provides a useful synthesis of current applications of UAS-animal related studies and identifies major knowledge clusters (well-represented subtopics that are amenable to full synthesis by a systematic review) and gaps (unreported or underrepresented topics that warrant additional primary research) that guide future research directions and UAS applications. The literature for the use of UAS to conduct animal surveys has expanded intensely since its inception in 2006 but is still in its infancy. Since 2015, technological improvements and subsequent cost reductions facilitated widespread research, often to validate UAS technology to survey single species with application of descriptive statistics over limited spatial and temporal scales. Studies since the 2015 expansion have still generally focused on large birds or mammals in open landscapes of 4 countries, but regulations, such as maximum altitude and line-of-sight limitations, remain barriers to improved animal surveys with UAS. Critical knowledge gaps include the lack of (1) best practices for using UAS to conduct standardized surveys in general, (2) best practices to survey whole wildlife communities in delineated areas, and (3) data on factors affecting bias in counting animals from UAS images. Promising advances include the use of thermal sensors in forested environments or nocturnal surveys and the development of automated or semi-automated machine-learning algorithms to accurately detect, identify, and count animals from UAS images.

小型无人驾驶飞机系统(UAS)作为北美陆生脊椎动物调查工具的有效性证据:系统地图
背景:由于传感器、效率、成本和后勤方面的优势,小型无人机系统(UAS)在动物监测方面正在取代或补充有人驾驶的飞机和地面调查。目前有许多无人机系统和传感器,并已用于各种方法中。然而,在已发表的文献中,通常并没有提供选择的理由或使用的方法。此外,现有的综述并没有充分涵盖过去和当前无人机系统在动物监测方面的应用,也没有涵盖与之相关的无人机系统/传感器特性和环境因素。我们绘制了一张系统地图,收集并整合了与无人机系统监测动物有关的证据:我们采用准确、全面和可重复的系统地图方法,调查了无人机系统应用于陆地动物监测的知识现状。我们使用在线出版物数据库、谷歌学术,并通过合作者的专业网络和公开网站请求,搜索了相关的同行评审文献、灰色文献以及学位论文和毕业论文。我们采用分层方法排除文章,符合条件的研究为监测(即识别、计数、估算等)陆生脊椎动物的研究。提取的有关无人机系统、传感器、动物、方法和结果的元数据记录在 Microsoft Access 中。我们对最终数据库中的证据进行了查询和编目,制作了表格、数字和地理图,以配合这篇完整的叙述性综述,回答我们的主要问题和次要问题:我们在文献检索中发现了 5539 篇文章,其中 216 篇被纳入我们的数据库和叙述性综述中,并提取了元数据类别。随着时间的推移,研究呈指数式增长,但在 2019 年至 2021 年期间趋于平稳,研究主要在北美、澳大利亚和南极洲进行。每个元数据类别都有主要的集群和差距,这在叙述性综述中有所描述:我们的系统地图对当前无人机系统动物相关研究的应用进行了有益的综合,并确定了主要的知识集群(代表性强的子课题,可通过系统综述进行全面综合)和空白(未报道或代表性不足的课题,需要进行更多的初步研究),为未来的研究方向和无人机系统应用提供了指导。自 2006 年开始使用无人机系统进行动物调查以来,这方面的文献已急剧增加,但仍处于起步阶段。自 2015 年以来,技术的改进和随之而来的成本降低促进了研究的广泛开展,这些研究通常是为了验证无人机系统技术,在有限的空间和时间尺度上应用描述性统计对单一物种进行调查。自 2015 年扩展以来,研究一般仍侧重于 4 个国家开阔地上的大型鸟类或哺乳动物,但最大飞行高度和视线限制等法规仍是利用无人机系统改进动物调查的障碍。关键的知识缺口包括:(1)缺乏使用无人机系统进行标准化调查的最佳实践;(2)缺乏调查划定区域内整个野生动物群落的最佳实践;以及(3)缺乏关于影响无人机系统图像动物计数偏差的因素的数据。有望取得的进展包括在森林环境或夜间调查中使用热传感器,以及开发自动或半自动机器学习算法,以便从无人机系统图像中准确检测、识别和计数动物。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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