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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Deep convolutional neural networks to monitor coralligenous reefs: Operationalizing biodiversity and ecological assessment
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Deep convolutional neural networks to monitor coralligenous reefs: Operationalizing biodiversity and ecological assessment

机译:深度卷积神经网络监测Corligenous Reefs:业务化生物多样性和生态评估

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Monitoring the ecological status of natural habitats is crucial to the conservation process, as it enables the implementation of efficient conservation policies. Nowadays, it is increasingly possible to automate species identification, given the availability of very large image databases and state-of-the-art computational power which makes the training of automated machine learning-based classification models an increasingly viable tool for monitoring marine habitats. Coralligenous reefs are an underwater habitat of particular importance, found in the Mediterranean. This habitat is of a similar biocomplexity to coral reefs. They have been monitored in French waters since 2010 using manually annotated photo quadrats (RECOR monitoring network). Based on the large database of annotations accumulated therein, we have trained convolutional neural networks to automatically recognise coralligenous species using the data gathered from photo quadrats. Previous studies conducted on similar habitats performed well, but were only able to consider a limited number of classes, resulting in a very coarse description of these often-complex habitats. We therefore designed a custom network based on off-theshelf architectures which is able to discriminate between 61 classes with 72.59% accuracy. Our results showed that confusion errors were for the most part taxonomically coherent, showing accuracy performances of 84.47% when the task was simplified to 15 major categories, thereby outperforming the human accuracy previously recorded in a similar study. In light of this, we built a semi-automated tool to reject unsure results and reduce error risk, for when a higher level of accuracy is required. Finally, we used our model to assess the biodiversity and ecological status of coralligenous reefs with the Coralligenous Assemblage Index (CAI) and the Shannon Index. Our results showed that whilst the prediction of the CAI was only moderately accurate (pearson correlation between observed and predicted CAI = 0.61), the prediction of Shannon Index was more accurate (pearson correlation = 0.74). In conclusion, it will be argued that the approach outlined by this study offers a cost and time-effective tool for the analysis of coralligenous assemblages which is suitable for integration into a large-scale monitoring network of this habitat.
机译:监测自然栖息地的生态状况对于保护过程至关重要,因为它能够实施有效的保护政策。如今,鉴于非常大的图像数据库和最先进的计算能力,越来越能够自动化物种识别,这使得自动化机器学习的分类模型的培训是监测海洋栖息地的越来越可行的工具。 Corlyigenous Reefs是一种局部栖息地,特别是在地中海发现。这种栖息地与珊瑚礁相似的生物交叉。自2010年以来,他们已经使用了手动注释的照片Quadrats(RecoR Monitoring网络)以来在法国水域中被监视。基于其中累积的累积的大数据库,我们已经训练了卷积神经网络,以使用照片四边形收集的数据自动识别Corligenous物种。以前在类似的栖息地进行的研究表现良好,但只能考虑有限数量的课程,导致对这些经常复杂的栖息地进行了非常粗略的描述。因此,我们设计了一种基于关闭架构的自定义网络,该架构能够区分61个课程,精度为72.59%。我们的研究结果表明,当任务被简化为15个主要类别时,混淆误差是大多数分类,表明准确性表现为84.47%,从而优化了先前在类似研究中记录的人工准确性。鉴于此,我们建立了一个半自动工具,以拒绝不确定的结果并降低错误风险,因为需要更高的精度。最后,我们利用我们的模型评估Corligenous珊瑚礁的生物多样性和生态地位与Corluligenous组合指数(CAI)和Shannon指数。我们的研究结果表明,虽然CAI的预测仅适度准确(观察和预测的CAI = 0.61之间的Pearson相关性,但是Shannon指数的预测更准确(Pearson相关= 0.74)。总之,据称,本研究概述的方法提供了一种成本和时间有效的工具,用于分析Corligenous组合,这适用于融入该栖息地的大规模监控网络。

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