Wildlife@Home:结合众包和志愿者计算来分析鸟类筑巢视频

Travis Desell, Robert Bergman, K. Goehner, R. Marsh, Rebecca VanderClute, Susan N. Ellis‐Felege
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引用次数: 10

摘要

新的摄像技术使鸟类生态学家能够在以前无法收集数据的地区对鸟类的行为、筑巢策略和捕食行为进行详细的研究。不幸的是,研究表明,机械触发器和各种传感器不足以捕捉小型食肉动物(如蛇、啮齿动物)或茂密植被中的事件。正因为如此,连续摄像机记录是目前鸟类监测最可靠的解决方案,特别是在地面筑巢的物种中。然而,连续的视频片段导致数据泛滥,因为监测足够的巢穴以做出生物学上重要的推断,导致大量的数据,而这些数据仅靠人类是无法分类的。2012年夏天,埃利斯-费莱格博士收集了63个尖尾松鸡(Tympanuchus phasianellus)巢穴的视频片段,以及初步的内部小燕鸥(Sternula antillarum)和管鸻(Charadrius melodus)巢穴的视频片段,时长超过2万小时。为了有效地分析这段视频,我们开发了一个结合众包和志愿者计算的项目,志愿者可以通过流媒体传输筑巢视频并报告他们的观察结果,也可以让他们的电脑下载视频以供计算机视觉技术分析。这为分析视频提供了一种强大的方法,因为用户观察结果可以通过多个视图以及计算机视觉技术的结果进行验证。这项工作提供了初步的结果,分析了群众来源的观察和计算机视觉技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wildlife@Home: Combining Crowd Sourcing and Volunteer Computing to Analyze Avian Nesting Video
New camera technology is allowing avian ecologists to perform detailed studies of avian behavior, nesting strategies and predation in areas where it was previously impossible to gather data. Unfortunately, studies have shown mechanical triggers and a variety of sensors to be inadequate in capturing footage of small predators (e.g., snakes, rodents) or events in dense vegetation. Because of this, continuous camera recording is currently the most robust solution for avian monitoring, especially in ground nesting species. However, continuous video footage results in a data deluge, as monitoring enough nests to make biologically significant inferences results in massive amounts of data which is unclassifiable by humans alone. In the summer of 2012, Dr. Ellis-Felege gathered video footage from 63 sharp-tailed grouse (Tympanuchus phasianellus) nests, as well as preliminary interior least tern (Sternula antillarum) and piping plover (Charadrius melodus) nests, resulting in over 20,000 hours of video footage. In order to effectively analyze this video, a project combining both crowd sourcing and volunteer computing was developed, where volunteers can stream nesting video and report their observations, as well as have their computers download video for analysis by computer vision techniques. This provides a robust way to analyze the video, as user observations are validated by multiple views as well as the results of the computer vision techniques. This work provides initial results analyzing the effectiveness of the crowd sourced observations and computer vision techniques.
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