Water Research Australia, Level 2, 250 Victoria Square, Adelaide, SA, 5000, Australia.
Department of Chemical Engineering, The University of Melbourne, Parkville, VIC, 3010, Australia.
Anal Sci. 2022 Feb;38(2):261-279. doi: 10.1007/s44211-021-00013-2. Epub 2022 Feb 25.
Real-time cyanobacteria/algal monitoring is a valuable tool for early detection of harmful algal blooms, water treatment efficacy evaluation, and assists tailored water quality risk assessments by considering taxonomy and cell counts. This review evaluates and proposes a synergistic approach using neural network image recognition and microscopic imaging devices by first evaluating published literature for both imaging microscopes and image recognition. Quantitative phase imaging was considered the most promising of the investigated imaging techniques due to the provision of enhanced information relative to alternatives. This information provides significant value to image recognition neural networks, such as the convolutional neural networks discussed within this review. Considering published literature, a cyanobacteria monitoring system and corresponding image processing workflow using in situ sample collection buoys and on-shore sample processing was proposed. This system can be implemented using commercially available equipment to facilitate accurate, real-time water quality monitoring.
实时蓝藻/藻类监测是一种有价值的工具,可用于早期检测有害藻类水华、评估水处理效果,并通过考虑分类学和细胞计数来协助进行定制的水质风险评估。本综述通过首先评估发表的有关显微镜和图像识别的文献,对使用神经网络图像识别和显微镜成像设备的协同方法进行了评估和建议。定量相衬成像被认为是最有前途的成像技术之一,因为它提供了比其他技术更有价值的信息。这些信息对图像识别神经网络(如本综述中讨论的卷积神经网络)具有重要价值。考虑到已发表的文献,提出了一种使用原位样本采集浮标和岸上样本处理的蓝藻监测系统及相应的图像处理工作流程。该系统可以使用商业上可获得的设备来实现,以促进准确、实时的水质监测。