학술논문

Lightweight Visual Transformers Outperform Convolutional Neural Networks for Gram-Stained Image Classification: An Empirical Study
Document Type
Academic Journal
Source
Biomedicines. April 2023, Vol. 11 Issue 5
Subject
Comparative analysis
Health aspects
Neural network
Natural language processing -- Health aspects -- Comparative analysis
Artificial neural networks -- Comparative analysis -- Health aspects
Automation -- Health aspects -- Comparative analysis
Natural language interfaces -- Health aspects -- Comparative analysis
Computational linguistics -- Health aspects -- Comparative analysis
Language processing -- Health aspects -- Comparative analysis
Mechanization -- Health aspects -- Comparative analysis
Neural networks -- Comparative analysis -- Health aspects
Language
English
ISSN
2227-9059
Abstract
Author(s): Hee E. Kim (corresponding author) [1,*]; Mate E. Maros [1]; Thomas Miethke [2]; Maximilian Kittel [3]; Fabian Siegel [1,†]; Thomas Ganslandt [4,†] 1. Introduction The progress of deep learning [...]
We aimed to automate Gram-stain analysis to speed up the detection of bacterial strains in patients suffering from infections. We performed comparative analyses of visual transformers (VT) using various configurations including model size (small vs. large), training epochs (1 vs. 100), and quantization schemes (tensor- or channel-wise) using float32 or int8 on publicly available (DIBaS, n = 660) and locally compiled (n = 8500) datasets. Six VT models (BEiT, DeiT, MobileViT, PoolFormer, Swin and ViT) were evaluated and compared to two convolutional neural networks (CNN), ResNet and ConvNeXT. The overall overview of performances including accuracy, inference time and model size was also visualized. Frames per second (FPS) of small models consistently surpassed their large counterparts by a factor of 1-2×. DeiT small was the fastest VT in int8 configuration (6.0 FPS). In conclusion, VTs consistently outperformed CNNs for Gram-stain classification in most settings even on smaller datasets.