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基于深度学习的自然水生环境中活体浮游生物的自动跟踪与计数。

Deep-Learning-Based Automated Tracking and Counting of Living Plankton in Natural Aquatic Environments.

机构信息

CAS Key Laboratory of Urban Pollutant Conversion, Department of Environmental Science and Engineering, University of Science and Technology of China, Hefei 230026, People's Republic of China.

School of Metallurgy and Environment, Central South University, Changsha 410083, People's Republic of China.

出版信息

Environ Sci Technol. 2023 Nov 21;57(46):18048-18057. doi: 10.1021/acs.est.3c00253. Epub 2023 May 19.

Abstract

Plankton are widely distributed in the aquatic environment and serve as an indicator of water quality. Monitoring the spatiotemporal variation in plankton is an efficient approach to forewarning environmental risks. However, conventional microscopy counting is time-consuming and laborious, hindering the application of plankton statistics for environmental monitoring. In this work, an automated video-oriented plankton tracking workflow (AVPTW) based on deep learning is proposed for continuous monitoring of living plankton abundance in aquatic environments. With automatic video acquisition, background calibration, detection, tracking, correction, and statistics, various types of moving zooplankton and phytoplankton were counted at a time scale. The accuracy of AVPTW was validated with conventional counting via microscopy. Since AVPTW is only sensitive to mobile plankton, the temperature- and wastewater-discharge-induced plankton population variations were monitored online, demonstrating the sensitivity of AVPTW to environmental changes. The robustness of AVPTW was also confirmed with natural water samples from a contaminated river and an uncontaminated lake. Notably, automated workflows are essential for generating large amounts of data, which are a prerequisite for available data set construction and subsequent data mining. Furthermore, data-driven approaches based on deep learning pave a novel way for long-term online environmental monitoring and elucidating the correlation underlying environmental indicators. This work provides a replicable paradigm to combine imaging devices with deep-learning algorithms for environmental monitoring.

摘要

浮游生物广泛分布于水生态环境中,是水质的指示物。监测浮游生物的时空变化是预警环境风险的有效方法。然而,传统的显微镜计数既耗时又费力,阻碍了浮游生物统计在环境监测中的应用。在这项工作中,提出了一种基于深度学习的自动化视频导向浮游生物跟踪工作流程(AVPTW),用于持续监测水生环境中活体浮游生物的丰度。通过自动视频采集、背景校准、检测、跟踪、校正和统计,可以同时对各种移动的浮游动物和浮游植物进行计数。通过与传统的显微镜计数进行验证,证明了 AVPTW 的准确性。由于 AVPTW 仅对移动的浮游生物敏感,因此可以在线监测温度和污水排放引起的浮游生物种群变化,表明 AVPTW 对环境变化的敏感性。通过受污染河流和未受污染湖泊的天然水样也证实了 AVPTW 的稳健性。值得注意的是,自动化工作流程对于生成大量数据至关重要,这是构建可用数据集和后续数据挖掘的前提条件。此外,基于深度学习的数据驱动方法为长期在线环境监测和阐明环境指标的内在相关性开辟了新途径。这项工作提供了一种可复制的范例,将成像设备与深度学习算法相结合,用于环境监测。

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