Author:
Zhao Peng,Li Chen,Rahaman Md Mamunur,Xu Hao,Yang Hechen,Sun Hongzan,Jiang Tao,Grzegorzek Marcin
Abstract
In recent years, deep learning has made brilliant achievements inEnvironmental Microorganism(EM) image classification. However, image classification of small EM datasets has still not obtained good research results. Therefore, researchers need to spend a lot of time searching for models with good classification performance and suitable for the current equipment working environment. To provide reliable references for researchers, we conduct a series of comparison experiments on 21 deep learning models. The experiment includes direct classification, imbalanced training, and hyper-parameters tuning experiments. During the experiments, we find complementarities among the 21 models, which is the basis for feature fusion related experiments. We also find that the data augmentation method of geometric deformation is difficult to improve the performance of VTs (ViT, DeiT, BotNet, and T2T-ViT) series models. In terms of model performance, Xception has the best classification performance, the vision transformer (ViT) model consumes the least time for training, and the ShuffleNet-V2 model has the least number of parameters.
Funder
National Natural Science Foundation of China
Fundamental Research Funds for the Central Universities
Subject
Microbiology (medical),Microbiology
Cited by
28 articles.
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