Alarood, Ala Abdulsalam and Atoum, Mohammed Salem and Abdul Manaf, Azizah and Abubakar, Adamu and Alsmadi, Izzat (2025) Enhanced obstacle detection using bilateral vision-aided transformer neural network for visually impaired persons. Cluster Computing, 28 (997). pp. 1-23. ISSN 1386-7857 E-ISSN 1573-7543
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Abstract
Obstacle detection remains vital in autonomous navigation and assistive technologies, especially for visually impaired individuals. This work introduces an enhanced obstacle detection framework based on a Bilateral Vision Transformer and Convolution Kernel Neural Network (BViT-CKNN). The system incorporates stereo vision data and applies a bilateral filter to reduce noise while preserving edge details. A Vision Transformer (ViT) model is then used for global feature extraction, and a Convolution Kernel Neural Network (CKNN) captures fine-grained local features. Evaluated using the COCO dataset, the proposed BViT-CKNN achieves superior performance in precision (0.93), recall (0.91), F1-score (0.92), and Mean Absolute Error (MAE) reduction (3.16%) compared to existing methods
| Item Type: | Article (Journal) |
|---|---|
| Uncontrolled Keywords: | Visually impaired, Obstacle detection, Bilateral filter vision transformer, Convolution Kernel Neural Network |
| Subjects: | Q Science > Q Science (General) > Q300 Cybernetics > Q350 Information theory |
| Kulliyyahs/Centres/Divisions/Institutes (Can select more than one option. Press CONTROL button): | Kulliyyah of Information and Communication Technology > Department of Computer Science Kulliyyah of Information and Communication Technology > Department of Computer Science |
| Depositing User: | Dr Adamu Abubakar |
| Date Deposited: | 27 Oct 2025 12:20 |
| Last Modified: | 27 Oct 2025 12:20 |
| URI: | http://irep.iium.edu.my/id/eprint/123877 |
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