整合广泛的珊瑚礁监测工具,管理区域和点注释

G. Pavoni, Jordan Pierce, Clinton B. Edwards, M. Corsini, Vid Petrovic, Paolo Cignoni
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摘要

摘要大面积图像采集技术在水下调查中至关重要:基于高分辨率三维图像的重建通过实现新颖的海景生态分析改善了珊瑚礁监测。人工智能(AI)提供了大大加快图像数据解读的方法,如自动识别、列举和测量生物。然而,这些技术成果的迅速扩散导致方法相对缺乏标准化。值得注意的是,人类和人工智能注释的生成程序存在明显差异,公开可用的数据集和共享机器学习模型也非常稀缺。由于缺乏标准程序,对科学发现进行比较和复制具有挑战性。克服这一问题的方法之一是使珊瑚礁科学家最常用的平台具有互操作性,以便将所有分析结果导出为通用格式。本文介绍了促进珊瑚礁数字化研究专用的三种流行开源软件工具之间互操作性的功能:TagLab、CoralNet 和 Viscore。由于每个平台的用户可能有不同的分析管道,我们讨论了几种管理和处理点和区域注释的工作流程,以改善这些工具之间的协作。我们的工作为建立一个更加无缝的生态系统奠定了基础,该系统既能保持各实验室既定的调查程序,又能使结果共享更加方便。
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Integrating Widespread Coral Reef Monitoring Tools for Managing both Area and Point Annotations
Abstract. Large-area image acquisition techniques are essential in underwater investigations: high-resolution 3D image-based reconstructions have improved coral reef monitoring by enabling novel seascape ecological analysis. Artificial intelligence (AI) offers methods for significantly accelerating image data interpretation, such as automatically recognizing, enumerating, and measuring organisms. However, the rapid proliferation of these technological achievements has led to a relative lack of standardization of methods. Remarkably, there are notable differences in procedures for generating human and AI annotations, and there is also a scarcity of publicly available datasets and shared machine-learning models. The lack of standard procedures makes it challenging to compare and reproduce scientific findings. One way to overcome this problem is to make the most used platforms by coral reef scientists interoperable so that the analyses can all be exported into a common format. This paper introduces functionality to promote interoperability between three popular open-source software tools dedicated to the digital study of coral reefs: TagLab, CoralNet, and Viscore. As users of each platform may have different analysis pipelines, we discuss several workflows for managing and processing point and area annotations, improving collaboration among these tools. Our work sets the foundation for a more seamless ecosystem that maintains the established investigation procedures of various laboratories but allows for easier result sharing.
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