Paper
11 December 2024 Adaptive and generic improvements to ResNet Backbone in image classification
Zhengdi Sima, Jingyu Tao, Zhaochen Liu
Author Affiliations +
Proceedings Volume 13445, International Conference on Electronics, Electrical and Information Engineering (ICEEIE 2024); 134453A (2024) https://doi.org/10.1117/12.3055002
Event: International Conference on Electronics. Electrical and Information Engineering (ICEEIE 2024), 2024, Haikou, China
Abstract
Image classification is one of the important basic tasks in computer vision. As the basic module of various complex tasks, ResNet of various types plays an important role as a back- bone for various tasks. This paper aims to use a series of effective methods to improve the performance of traditional ResNet and, to some extent, improve its generalization ability. We improve the methods of ResNet in terms of refined image conversion, optimizer improvement, adaptive learning rate scheduling, difference classification weighting, and experimentally using validation set integration, as well as in the structure of ResNet itself by incorporating residual structures in the network by using ResNet. With these bar improvements, our new baseline performance has made a significant difference, and we also have excellent performance in generalization migration to multiple tasks.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Zhengdi Sima, Jingyu Tao, and Zhaochen Liu "Adaptive and generic improvements to ResNet Backbone in image classification", Proc. SPIE 13445, International Conference on Electronics, Electrical and Information Engineering (ICEEIE 2024), 134453A (11 December 2024); https://doi.org/10.1117/12.3055002
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KEYWORDS
Image classification

Performance modeling

Machine learning

Education and training

Data modeling

Mathematical optimization

Image segmentation

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