Towards Species-Specific Coral Classification in Reef Monitoring Efforts

H. Jang, J. Leidig, G. Wolffe
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Abstract

Monitoring the health of coral reefs has traditionally required human labor-intensive effort in the collection and analysis of captured survey data and underwater images. Typical Marine Ecology tasks involve the classification of features within benthic maps and the estimation of coral coverage of the seafloor. In an effort to determine the feasibility of automating part of this process, this work trained and evaluated machine learning models to classify eleven species of stony and fire corals. A binary classifier was developed for each separate species (attaining 95-99% accuracy per model), followed by a single multi-class model (attaining over 92% accuracy). This paper details the architecture, parameterization, and effectiveness of these models as trained on a curated set of images. The models were then evaluated using one square kilometer maps of the seafloor to assess their practicability for automating several image-based analysis tasks on a widespread scale. Developing future monitoring workflows that utilize these machine learning models will minimize the human labor-intensive component of benthic map analysis.
珊瑚礁监测工作中特定物种珊瑚分类的研究
传统上,监测珊瑚礁的健康状况需要人类在收集和分析捕获的调查数据和水下图像方面付出大量劳动。典型的海洋生态学任务包括对底栖生物地图中的特征进行分类,并估计海底珊瑚的覆盖范围。为了确定这一过程部分自动化的可行性,这项工作训练和评估了机器学习模型,以对11种石珊瑚和火珊瑚进行分类。为每个单独的物种开发了一个二元分类器(每个模型的准确率达到95-99%),然后是一个单一的多类模型(准确率超过92%)。本文详细介绍了这些模型的架构、参数化和有效性,并对一组精心策划的图像进行了训练。然后使用一平方公里的海底地图对这些模型进行评估,以评估它们在大范围内自动化几个基于图像的分析任务的实用性。开发利用这些机器学习模型的未来监测工作流程将最大限度地减少底栖地图分析中人类劳动密集型的组成部分。
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