从图像中研究浮游生物和海洋雪的机器学习

IF 14.3 1区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Jean-Olivier Irisson, Sakina-Dorothée Ayata, Dhugal J Lindsay, Lee Karp-Boss, Lars Stemmann
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引用次数: 44

摘要

定量成像仪器产生大量浮游生物和海洋雪的图像,这些图像以受控的方式获得,从中可以计算出单个物体的视觉特征及其原位浓度。为了利用这些丰富的信息,机器学习是自动化分类分类等任务所必需的。通过对文献的回顾,我们强调了这些机器分类器的进展,以及它们可以和仍然不能被信任的地方。有几个例子展示了定量成像与机器学习的结合如何带来了对远洋生态学的见解。他们还强调了仍然缺失的内容,以及如何通过基于特征的方法进一步利用图像。在未来,我们建议与计算机科学界进行更深入的互动,采用数据标准,并更系统地共享数据库,以建立一个由远洋图像提供者和用户组成的全球社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for the Study of Plankton and Marine Snow from Images.

Quantitative imaging instruments produce a large number of images of plankton and marine snow, acquired in a controlled manner, from which the visual characteristics of individual objects and their in situ concentrations can be computed. To exploit this wealth of information, machine learning is necessary to automate tasks such as taxonomic classification. Through a review of the literature, we highlight the progress of those machine classifiers and what they can and still cannot be trusted for. Several examples showcase how the combination of quantitative imaging with machine learning has brought insights on pelagic ecology. They also highlight what is still missing and how images could be exploited further through trait-based approaches. In the future, we suggest deeper interactions with the computer sciences community, the adoption of data standards, and the more systematic sharing of databases to build a global community of pelagic image providers and users.

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来源期刊
Annual Review of Marine Science
Annual Review of Marine Science 地学-地球化学与地球物理
CiteScore
33.60
自引率
0.60%
发文量
40
期刊介绍: The Annual Review of Marine Science, published since 2009, offers a comprehensive overview of the field. It covers various disciplines, including coastal and blue water oceanography (biological, chemical, geological, and physical), ecology, conservation, and technological advancements related to the marine environment. The journal's transition from gated to open access through Annual Reviews' Subscribe to Open program ensures that all articles are available under a CC BY license, promoting wider accessibility and dissemination of knowledge.
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