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Scaling up ecological measurements of coral reefs using semi-automated field image collection and analysis

机译:利用半自动化野外图像采集和分析,扩大珊瑚礁的生态测量

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摘要

Ecological measurements in marine settings are often constrained in space and time, with spatial heterogeneity obscuring broader generalisations. While advances in remote sensing, integrative modelling and meta-analysis enable generalisations from field observations, there is an underlying need for high-resolution, standardised and geo-referenced field data. Here, we evaluate a new approach aimed at optimising data collection and analysis to assess broad-scale patterns of coral reef community composition using automatically annotated underwater imagery, captured along 2 km transects. We validate this approach by investigating its ability to detect spatial (e.g., across regions) and temporal (e.g., over years) change, and by comparing automated annotation errors to those of multiple human annotators. Our results indicate that change of coral reef benthos can be captured at high resolution both spatially and temporally, with an average error below 5%, among key benthic groups. Cover estimation errors using automated annotation varied between 2% and 12%, slightly larger than human errors (which varied between 1% and 7%), but small enough to detect significant changes among dominant groups. Overall, this approach allows a rapid collection of observations at larger spatial scales (km) than previously possible, and provides a pathway to link, calibrate, and validate broader analyses across even larger spatial scales (10-10,000 km(2)).
机译:海洋环境中的生态测量通常受时间和空间限制,空间异质性掩盖了更广泛的概括。尽管遥感技术,集成建模和元分析技术的进步可以从野外观察中获得概括,但仍需要高分辨率,标准化和地理参考的野外数据。在这里,我们评估了一种新方法,该方法旨在优化数据收集和分析,以使用自动注释的水下图像(沿2 km的断面捕获)评估珊瑚礁群落组成的大规模模式。我们通过研究其检测空间(例如跨区域)和时间(例如多年)变化的能力,以及将自动注释错误与多个人类注释者的错误进行比较,来验证该方法。我们的结果表明,在关键底栖生物群中,珊瑚底栖生物的变化可以在空间和时间上以高分辨率捕获,平均误差低于5%。使用自动注释的覆盖率估计误差在2%和12%之间变化,略大于人为误差(在1%和7%之间变化),但小到足以检测到优势群体之间的重大变化。总体而言,这种方法可以在比以前更大的空间范围(km)上快速收集观测数据,并提供了一个链接,校准和验证甚至更大的空间范围(10-10,000 km(2))的更广泛分析的途径。

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