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Fine art image classification and design methods integrating lightweight deep learning.

Kexiang Ma1, SungWon Lee2, Xiaopeng Ma3

  • 1Department of Art and Design, Zhengzhou University of Aeronautics, Zhengzhou, 450046, China.

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|September 27, 2025
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Summary
This summary is machine-generated.

This study introduces a lightweight deep learning model for efficient fine art image classification, improving accuracy and generalization. The MobileNet-Transformer Hybrid (MTH) network enhances feature extraction for art analysis and digitization.

Keywords:
Contrastive learningDepthwise separable convolutionImage classificationLightweight hybrid networkMulti-head self-attention mechanism

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Digital Art History

Background:

  • Fine art image classification faces challenges with low efficiency and poor generalization.
  • Existing deep learning models can be computationally intensive and struggle with subtle style variations.

Purpose of the Study:

  • To develop an efficient and robust fine art image classification method using lightweight deep learning.
  • To improve the accuracy and generalization capabilities of art image classification models.

Main Methods:

  • A lightweight hybrid network, MobileNet-Transformer Hybrid (MTH), combining depthwise separable convolution and multi-head self-attention.
  • A dynamic channel-spatial attention module (DCSAM) for adaptive feature enhancement.
  • A cross-style feature transfer (CSFT) framework utilizing contrastive learning for improved robustness.

Main Results:

  • The MTH model achieved high classification accuracy (85.2% on ArtBench-10) with significantly reduced parameters (1.2M).
  • DCSAM effectively enhanced local style-discriminative features (brushstrokes, colors), reducing misclassifications of similar styles.
  • CSFT improved generalization for rare styles in long-tailed datasets by constraining cross-style feature distances.

Conclusions:

  • The proposed lightweight deep learning approach offers an efficient solution for fine art image classification.
  • The method demonstrates practical value for art design automation and cultural heritage digitization.
  • This study contributes theoretical innovation in efficient deep learning for specialized image analysis tasks.