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구성원
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gold
·인용수 5
·2024
Comparison of Deep Transfer Learning Models for the Quantification of Photoelastic Images
Seongmin Kim, Boo Hyun Nam, Young-Hoon Jung
IF 2.5Applied Sciences
초록

In the realm of geotechnical engineering, understanding the mechanical behavior of soil particles under external forces is paramount. The main topic of this study is how to use deep learning image analysis techniques, especially transfer learning models like VGG, ResNet, and DenseNet, to look at response images from models of reflective photoelastic soil particles. We applied a total of six transfer learning models to analyze photoelastic response images. We then compared the validation results with existing quantitative evaluation techniques. The researchers identified the most outstanding transfer learning model by comparing the validation results with existing quantitative evaluation techniques using performance metrics such as the coefficient of determination, mean average error, and root mean square error.

키워드
Transfer of learningComputer scienceArtificial intelligenceDeep learningMean squared errorMachine learningMathematicsStatistics
타입
article
IF / 인용수
2.5 / 5
게재 연도
2024