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首页> 外文期刊>Journal of great lakes research >Deep Lake Explorer: A web application for crowdsourcing the classification of benthic underwater video from the Laurentian Great Lakes
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Deep Lake Explorer: A web application for crowdsourcing the classification of benthic underwater video from the Laurentian Great Lakes

机译:Deep Lake Explorer:一个Web应用程序,用于覆盖劳伦特伟大的湖泊围潜水下视频的分类

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Underwater video is increasingly used to study aspects of the Great Lakes benthos including the abundance of round goby and dreissenid mussels. The introduction of these species has resulted in major ecological shifts in the Great Lakes, but the abundance and impacts of these species have heretofore been underassessed due to limitations of monitoring methods. Underwater video (UVID) can "sample" hard bottom sites where grab samplers cannot. Efficient use of UVID data requires affordable and accurate classification and analysis tools. Deep Lake Explorer (DLE) is a web application developed to support crowdsourced classification of UVID collected in the Great Lakes. Volunteers (i.e., the crowd) used DLE to classify 199 videos collected in the Niagara River, Lake Huron, and Lake Ontario for the presence of round gobies, dreissenid mussels, or aquatic vegetation, and for dominant substrate type. We compared DLE classification results to expert classification of the same videos to evaluate accuracy. DLE had the lowest agreement with expert classification for hard substrate (77%), and highest agreement for vegetation presence (90%), with intermediate agreement for round goby and mussel presence (89% and 79%, respectively). Video quality in the application, video processing, abundance of species of interest, volunteer experience, and task complexity may have affected accuracy. We provide recommendations for future crowdsourcing projects like DLE, which can increase timeliness and decrease costs for classification but may come with tradeoffs in accuracy and completeness. Published by Elsevier B.V. on behalf of International Association for Great Lakes Research.
机译:水下视频越来越多地用于研究大湖Benthos的各个方面,包括丰富的圆形曲囊和德累累累的贻贝。这些物种的引入导致了大湖泊的重大生态转变,但由于监测方法的局限性,这些物种对这些物种的丰富和影响已经受到影响。水下视频(UVID)可以“采样”硬底站点,其中抓取采样器不能。高效使用UVID数据需要经济实惠和准确的分类和分析工具。 Deep Lake Explorer(DLE)是一种用于支持在大湖中收集的UVID的众群分类的网络应用程序。志愿者(即,人群)使用DLE在尼亚加拉河,休伦和安大略湖湖泊,德累累累的贻贝或水生植被以及主要基材类型的存在下进行分类199年集。我们将DLE分类结果与同一视频的专家分类进行比较,以评估准确性。 DLE与硬质基材(77%)的专家分类以及植被存在的最高协议(90%),具有最高协议,圆形血糖和贻贝存在(分别为89%和79%)。视频质量在应用中,视频处理,丰富的兴趣,志愿者经验和任务复杂性可能会影响准确性。我们为未来的众包项目提供建议,如DLE,可以提高对分类的及时性和降低成本,但可能在准确性和完整性方面具有权衡。由elsevier b.v出版。代表国际大湖泊研究协会。

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