Artificial Intelligence for Geometry-Based Feature Extraction, Analysis and Synthesis in Artistic Images: A Survey

Mridula Vijendran, Jingjing Deng, Shuang Chen, Edmond S. L. Ho and Hubert P. H. Shum
Artificial Intelligence Review (AIRE), 2024

Impact Factor: 13.9Top 10% Journal in Computer Science, Artificial IntelligenceCitation: 10#

Artificial Intelligence for Geometry-Based Feature Extraction, Analysis and Synthesis in Artistic Images: A Survey
# According to Google Scholar 2025

Abstract

Artificial Intelligence significantly enhances the visual art industry by analyzing, identifying and generating digitized artistic images. This review highlights the substantial benefits of integrating geometric data into AI models, addressing challenges such as high inter-class variations, domain gaps, and the separation of style from content by incorporating geometric information. Models not only improve AI-generated graphics synthesis quality, but also effectively distinguish between style and content, utilizing inherent model biases and shared data traits. We explore methods like geometric data extraction from artistic images, the impact on human perception, and its use in discriminative tasks. The review also discusses the potential for improving data quality through innovative annotation techniques and the use of geometric data to enhance model adaptability and output refinement. Overall, incorporating geometric guidance boosts model performance in classification and synthesis tasks, providing crucial insights for future AI applications in the visual arts domain.


Downloads


YouTube


Cite This Research

Plain Text

Mridula Vijendran, Jingjing Deng, Shuang Chen, Edmond S. L. Ho and Hubert P. H. Shum, "Artificial Intelligence for Geometry-Based Feature Extraction, Analysis and Synthesis in Artistic Images: A Survey," Artificial Intelligence Review, vol. 58, no. 2, pp. 64, Springer, 2024.

BibTeX

@article{vijendran25artificial,
 author={Vijendran, Mridula and Deng, Jingjing and Chen, Shuang and Ho, Edmond S. L. and Shum, Hubert P. H.},
 journal={Artificial Intelligence Review},
 title={Artificial Intelligence for Geometry-Based Feature Extraction, Analysis and Synthesis in Artistic Images: A Survey},
 year={2024},
 volume={58},
 number={2},
 pages={64},
 numpages={47},
 doi={10.1007/s10462-024-11051-3},
 issn={1573-7462},
 publisher={Springer},
}

RIS

TY  - JOUR
AU  - Vijendran, Mridula
AU  - Deng, Jingjing
AU  - Chen, Shuang
AU  - Ho, Edmond S. L.
AU  - Shum, Hubert P. H.
T2  - Artificial Intelligence Review
TI  - Artificial Intelligence for Geometry-Based Feature Extraction, Analysis and Synthesis in Artistic Images: A Survey
PY  - 2024
VL  - 58
IS  - 2
SP  - 64
EP  - 64
DO  - 10.1007/s10462-024-11051-3
SN  - 1573-7462
PB  - Springer
ER  - 


Supporting Grants


Similar Research

Mridula Vijendran, Shuang Chen, Jingjing Deng and Hubert P. H. Shum, "BOOST: Out-of-Distribution-Informed Adaptive Sampling for Bias Mitigation in Stylistic Convolutional Neural Networks", Expert Systems with Applications (ESWA), 2025
Mridula Vijendran, Frederick W. B. Li and Hubert P. H. Shum, "Tackling Data Bias in Painting Classification with Style Transfer", Proceedings of the 2023 International Conference on Computer Vision Theory and Applications (VISAPP), 2023

HomeGoogle ScholarYouTubeLinkedInTwitter/XGitHubORCIDResearchGateEmail
 
Print