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Leveraging automated image analysis tools to transform our capacity to assess status and trends on coral reefs

机译:利用自动图像分析工具来改变我们评估珊瑚礁状况和趋势的能力

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Digital photography is widely used by coral reef monitoring programs to assess benthic status and trends. In addition to creating a permanent archive, photographic surveys can be rapidly conducted, which is important in environments where bottom-time is frequently limiting. However, substantial effort is required to manually analyze benthic images; which is expensive and leads to lags before data are available. Using previously analyzed imagery from NOAA’s Pacific Reef Assessment and Monitoring Program, we assessed the capacity of a trained and widely used machine-learning image analysis tool – CoralNet (coralnet.ucsd.edu) - to generate fully-automated benthic cover estimates for the main Hawaiian Islands (MHI) and American Samoa. CoralNet was able to generate estimates of site-level coral cover for both regions that were highly comparable to those generated by human analysts (Pearson’s r 0.97, and with bias of 1% or less). CoralNet was generally effective at estimating cover of common coral genera (Pearson’s r 0.92 and with bias of 2% or less in 6 of 7 cases), but performance was mixed for other groups including algal categories, although generally better for American Samoa than MHI. CoralNet performance was improved by simplifying the classification scheme from genus to functional group and by training within habitat types, i.e., separately for coral-rich, pavement, boulder, or ‘other’ habitats. The close match between human-generated and CoralNet-generated estimates of coral cover pooled to the scale of island and year demonstrates that CoralNet is capable of generating data suitable for assessing spatial and temporal patterns. The imagery we used was gathered from sites randomly located in 30 m hard-bottom at multiple islands and habitat-types per region, suggesting our results are likely to be widely applicable. As image acquisition is relatively straightforward, the capacity of fully-automated image analysis tools to minimize the need for resource intensive human analysts opens possibilities for enormous increases in the quantity and consistency of coral reef benthic data that could become available to researchers and managers.
机译:珊瑚礁监测计划广泛使用数字摄影来评估底栖生物的状况和趋势。除了创建永久存档之外,还可以快速进行照片调查,这在底时间经常受到限制的环境中很重要。但是,手动分析底栖图像需要大量的精力。这是昂贵的,并导致在数据可用之前出现滞后。使用之前从NOAA的《太平洋珊瑚礁评估和监视计划》中分析的图像,我们评估了受过训练且广泛使用的机器学习图像分析工具– CoralNet(coralnet.ucsd.edu)的能力,可以为主要渔场生成全自动底栖生物覆盖率估计值夏威夷群岛(MHI)和美属萨摩亚。 CoralNet能够生成两个地区的现场珊瑚覆盖率的估算值,这些估算值与人类分析人员的估算值具有可比性(Pearson r> 0.97,偏差为1%或更小)。 CoralNet通常可以有效地估计常见珊瑚属的覆盖率(Pearson r> 0.92,在7个案例中有6个的偏差为2%或更低),但是对于其他组(包括藻类),其表现参差不齐,尽管美属萨摩亚的总体表现要好于三菱重工。通过简化从属类到功能类的分类方案,并通过在栖息地类型中进行训练(即分别针对珊瑚丰富,人行道,巨石或“其他”栖息地)分别进行培训,可以改善CoralNet的性能。由人类产生的和由CoralNet产生的对珊瑚礁的估测与岛屿和年份的总和之间的紧密匹配表明,CoralNet能够生成适合于评估时空格局的数据。我们使用的图像是从随机位于小于30 m硬底的多个岛屿上的地点收集的,并且每个地区的栖息地类型都不同,这表明我们的结果可能会广泛适用。由于图像采集相对简单明了,因此全自动图像分析工具能够最大程度地减少对资源密集型人类分析人员的需求,从而有可能极大地增加研究人员和管理人员可获得的珊瑚底栖生物数据的数量和一致性。

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