Bayesian-Optimised Latent Encoding and Agent-Based Simulation for Enhanced Medical Image Character Recognition

Osagie, Efosa, Ji, Wei and Helian, Na (2025) Bayesian-Optimised Latent Encoding and Agent-Based Simulation for Enhanced Medical Image Character Recognition. International Journal of Scientific Research and Modern Technology, 4 (11). 84–94. ISSN 2583-4622
Copy

This paper presents a Bayesian-optimised Conditional Variational Autoencoder (CVAE) for synthetic data augmentation, embedded within an agent-based simulation framework. The CVAE systematically refines latent-space representations, generating high-quality synthetic character images that enhance dataset diversity and reduce the risk of overfitting. Bayesian optimisation ensures optimal latent variable selection, improving reconstruction accuracy while enabling scalable Medical Image Character Recognition (MICR) training. The proposed agent-based system introduces autonomous agents: patient agents, doctor agents, imaging device agents, and recognition agents that collaborate to simulate real-world MICR workflows. This structured pipeline enables dynamic dataset augmentation while supporting medical diagnostics and automated text extraction. Experimental evaluations demonstrate significant performance improvements, with CNN models achieving accuracy gains of +3.2%, +3.5%, and +1.79% on the public dataset and +2.41%, +6.85%, and +1.60% on the private dataset when augmented with 50, 100, and 150 synthetic images per class, respectively. This research validates the effectiveness of Bayesian-tuned latent-space encoding and a supporting agent-based data augmentation, offering a scalable, computationally efficient solution for MICR enhancement.

picture_as_pdf

picture_as_pdf
Bayesian-Optimised_Latent.pdf
subject
Published Version
Available under Creative Commons: BY-NC 4.0

View Download

EndNote BibTeX Reference Manager Refer Atom Dublin Core RIOXX2 XML OpenURL ContextObject in Span MODS METS Data Cite XML MPEG-21 DIDL OpenURL ContextObject HTML Citation ASCII Citation
Export

Downloads