A comprehensive review of image analysis methods for microorganism counting: from classical image processing to deep learning approaches

被引:0
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作者
Jiawei Zhang
Chen Li
Md Mamunur Rahaman
Yudong Yao
Pingli Ma
Jinghua Zhang
Xin Zhao
Tao Jiang
Marcin Grzegorzek
机构
[1] Northeastern University,Microscopic Image and Medical Image Analysis Group, College of Medicine and Biological Information Engineering
[2] Stevens Institute of Technology,Department of Electrical and Computer Engineering
[3] Northeastern University,School of Resources and Civil Engineering
[4] Chengdu University of Information Technology,School of Control Engineering
[5] University of Luebeck,Institute of Medical Informatics
来源
关键词
Microorganism counting; Digital image processing; Microscopic images; Image analysis; Image segmentation;
D O I
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中图分类号
学科分类号
摘要
Microorganisms such as bacteria and fungi play essential roles in many application fields, like biotechnique, medical technique and industrial domain. Microorganism counting techniques are crucial in microorganism analysis, helping biologists and related researchers quantitatively analyze the microorganisms and calculate their characteristics, such as biomass concentration and biological activity. However, traditional microorganism manual counting methods, such as plate counting method, hemocytometry and turbidimetry, are time-consuming, subjective and need complex operations, which are difficult to be applied in large-scale applications. In order to improve this situation, image analysis is applied for microorganism counting since the 1980s, which consists of digital image processing, image segmentation, image classification and suchlike. Image analysis-based microorganism counting methods are efficient comparing with traditional plate counting methods. In this article, we have studied the development of microorganism counting methods using digital image analysis. Firstly, the microorganisms are grouped as bacteria and other microorganisms. Then, the related articles are summarized based on image segmentation methods. Each part of the article is reviewed by methodologies. Moreover, commonly used image processing methods for microorganism counting are summarized and analyzed to find common technological points. More than 144 papers are outlined in this article. In conclusion, this paper provides new ideas for the future development trend of microorganism counting, and provides systematic suggestions for implementing integrated microorganism counting systems in the future. Researchers in other fields can refer to the techniques analyzed in this paper.
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页码:2875 / 2944
页数:69
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