Applications of Artificial Neural Networks in Microorganism Image
Analysis: A Comprehensive Review from Conventional Multilayer Perceptron to
Popular Convolutional Neural Network and Potential Visual Transformer
- URL: http://arxiv.org/abs/2108.00358v1
- Date: Sun, 1 Aug 2021 03:46:48 GMT
- Title: Applications of Artificial Neural Networks in Microorganism Image
Analysis: A Comprehensive Review from Conventional Multilayer Perceptron to
Popular Convolutional Neural Network and Potential Visual Transformer
- Authors: Jinghua Zhang, Chen Li, Marcin Grzegorzek
- Abstract summary: Microorganisms play an essential role in environmental pollution control, disease prevention and treatment, and food and drug production.
The identification, counting, and detection are the basic steps for making full use of different microorganisms.
To overcome these limitations, artificial neural networks are applied for microorganism image analysis.
- Score: 10.951982445015085
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Microorganisms are widely distributed in the human daily living environment.
They play an essential role in environmental pollution control, disease
prevention and treatment, and food and drug production. The identification,
counting, and detection are the basic steps for making full use of different
microorganisms. However, the conventional analysis methods are expensive,
laborious, and time-consuming. To overcome these limitations, artificial neural
networks are applied for microorganism image analysis. We conduct this review
to understand the development process of microorganism image analysis based on
artificial neural networks. In this review, the background and motivation are
introduced first. Then, the development of artificial neural networks and
representative networks are introduced. After that, the papers related to
microorganism image analysis based on classical and deep neural networks are
reviewed from the perspectives of different tasks. In the end, the methodology
analysis and potential direction are discussed.
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