Published
Robust and Structure-Aware Visual Representation Learning for Reliable Deep Neural Networks
Published in July-Dec 2025 (Vol. 1, Issue 1, 2025)

Keywords
Abstract
The focus of this study's strong and structure-aware visual representation learning framework is medical picture analysis, which aims to make deep neural networks more reliable, resilient, and easy to understand. To transcend accuracy-focused evaluation, edge-guided structural oversight, corruption-sensitive robustness assessment, and calibration-oriented reliability analysis are introduced. The structure-aware MobileNetV3 does well on the Chest X-Ray dataset, with an accuracy of 0.8574, a high average confidence of 0.9284, and a controlled Expected Calibration Error (ECE) of 0.0710. The structure-aware ResNet-18 achieved an accuracy of 0.9071 and a low ECE of 0.0160. DenseNet121 had an accuracy of 0.8894 and an ECE of 0.0319. A robustness study reveals that performance trends remain consistent with ROC-AUC values exceeding 0.92, even after multiple changes, including the presence of Gaussian noise and occlusion. Grad-CAM explainability analysis demonstrates an anatomically directed emphasis on pulmonary regions, reinforcing structural priors. To evaluate the system's ability to work outside of medical imaging, it is tested on CIFAR-10. The robust model gets 71.92% clean accuracy, and this number goes up a lot when noise and blur corruptions are included. The results indicate that structure-aware and reliability-driven learning enhances the behavior of trustworthy models, making the proposed framework appropriate for real-world, safety-critical visual recognition systems.
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Article Information
Published in:
July-Dec 2025 (Vol. 1, Issue 1, 2025)- Article ID:
- IRJSRR110012
- Paper ID:
- IRJSRR-01-000012
- Pages:
- 139-154
- Published Date:
- 2026-03-03
Article Impact
Views:4,878
Downloads:2,093
How to Cite
Sharma, M., & Agrawal & Sharma & Sharma, M. & Sharma (2026). Robust and Structure-Aware Visual Representation Learning for Reliable Deep Neural Networks. International Research Journal of Scientific Reports and Reviews, 1(1), 139-154. https://irjsrr.com/articles/10
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