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An evaluation of semi-automated methods for collecting ecosystem-level data in temperate marine systems

机译:对在温带海洋系统中收集生态系统水平数据的半自动方法的评估

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Abstract Historically, marine ecologists have lacked efficient tools that are capable of capturing detailed species distribution data over large areas. Emerging technologies such as high-resolution imaging and associated machine-learning image-scoring software are providing new tools to map species over large areas in the ocean. Here, we combine a novel diver propulsion vehicle (DPV) imaging system with free-to-use machine-learning software to semi-automatically generate dense and widespread abundance records of a habitat-forming algae over ~5,000 m 2 of temperate reef. We employ replicable spatial techniques to test the effectiveness of traditional diver-based sampling, and better understand the distribution and spatial arrangement of one key algal species. We found that the effectiveness of a traditional survey depended on the level of spatial structuring, and generally 10?¢????20 transects (50 ???? 1 m) were required to obtain reliable results. This represents 2?¢????20 times greater replication than have been collected in previous studies. Furthermore, we demonstrate the usefulness of fine-resolution distribution modeling for understanding patterns in canopy algae cover at multiple spatial scales, and discuss applications to other marine habitats. Our analyses demonstrate that semi-automated methods of data gathering and processing provide more accurate results than traditional methods for describing habitat structure at seascape scales, and therefore represent vastly improved techniques for understanding and managing marine seascapes.
机译:摘要历史上,海洋生态学家缺乏能够捕获大范围区域详细物种分布数据的有效工具。诸如高分辨率成像和相关的机器学习图像评分软件之类的新兴技术正在提供新工具来绘制海洋大面积区域的物种图。在这里,我们将新颖的潜水员推进器(DPV)成像系统与免费使用的机器学习软件结合在一起,以半自动方式生成超过5,000 m 2的温带礁石的密集且广泛的栖息地形成藻类的丰度记录。我们采用可复制的空间技术来测试传统的基于潜水员的采样的有效性,并更好地了解一种重要藻类的分布和空间布置。我们发现,传统调查的有效性取决于空间结构的水平,通常需要10 ??????? 20个样条线(50 ???? 1m)才能获得可靠的结果。这代表比以前的研究中所收集的复制量大2倍20倍。此外,我们展示了精细分辨率分布模型对于理解多个空间尺度上的冠层藻类覆盖模式的有用性,并讨论了其在其他海洋生境中的应用。我们的分析表明,与传统方法相比,半自动化的数据收集和处理方法可提供比海景尺度下的生境结构描述更准确的结果,因此代表了对理解和管理海洋海景的极大改进。

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