MULTI-SCALE NEURAL NETWORK-BASED CLASSIFICATION METHOD FOR SKIN PATHOLOGICAL IMAGES

Authors

  • Zhao CAIFENG Vinnitsia National Technical University

DOI:

https://doi.org/10.31891/2219-9365-2024-80-42

Keywords:

method, neural networks, pathological images, results, architecture changes

Abstract

Skin pathological images contain essential diagnostic information across various scales. To effectively utilize multi-scale features, this study proposes a classification method based on multi-scale neural networks. The method involves a variable multi-scale neural network structure with a backbone network and multiple scale input branches inserted at different layers, facilitating feature extraction and fusion. Two search algorithms – a minimum cost-based search algorithm and a hill-climbing search algorithm – are introduced to identify the optimal network structure. Experimental results demonstrate that the proposed multi-scale network outperforms original networks in skin pathological image classification and that both search algorithms efficiently find near-optimal structures with reduced computational costs.

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Published

2024-11-28

How to Cite

CAIFENG, Z. (2024). MULTI-SCALE NEURAL NETWORK-BASED CLASSIFICATION METHOD FOR SKIN PATHOLOGICAL IMAGES. MEASURING AND COMPUTING DEVICES IN TECHNOLOGICAL PROCESSES, (4), 348–354. https://doi.org/10.31891/2219-9365-2024-80-42