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DamageNet: A Dilated Convolution Feature Pyramid Network Mask R-CNN for Automated Car Damage Detection and Segmentation

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dc.contributor.author Katayev, Nazbek
dc.contributor.author Yessengaliyeva, Zhanna
dc.contributor.author Kozhamkulova, Zhazira
dc.contributor.author Bakirova, Zhanel
dc.contributor.author Abuova, Assylzat
dc.contributor.author Kuandikova, Gulbagila
dc.date.accessioned 2026-03-18T07:38:40Z
dc.date.available 2026-03-18T07:38:40Z
dc.date.issued 2025
dc.identifier.issn 2156-5570
dc.identifier.uri http://repository.enu.kz/handle/enu/30513
dc.description.abstract Automated and precise assessment of vehicle damage is critical for modern insurance processing, accident analysis, and autonomous maintenance systems. In this work, we introduce DamageNet, a unified deep instance segmentation framework that embeds a multi‑rate dilated‑convolution context module within a Feature Pyramid Network (FPN) backbone and couples it with a Region Proposal Network (RPN), RoI‑Align, and parallel heads for classification, bounding‑box regression, and pixel‑level mask prediction. Evaluated on the large‑scale VehiDE dataset comprising 5 200 high‑resolution images annotated for dents, scratches, and broken glass, DamageNet achieves a mean Average Precision (mAP) of 85.7% for damage localization and a mean Intersection over Union (mIoU) of 82.3% for segmentation, outperforming baseline Mask R‑CNN by 6.2 and 7.8 percentage points, respectively. Ablation studies confirm that the dilated‑convolution module, multi‑scale fusion in the FPN, and post‑processing refinements each contribute substantially to segmentation fidelity. Qualitative results demonstrate robust delineation of both subtle scratch lines and extensive panel deformations under diverse lighting and occlusion conditions. Although the integration of atrous convolutions introduces a modest inference overhead, DamageNet offers a significant advancement in end‑to‑end vehicle damage analysis. Future extensions will investigate lightweight dilation approximations, dynamic rate selection, and semi‑supervised learning strategies to further enhance processing speed and generalization to additional damage modalities. ru
dc.language.iso en ru
dc.publisher (IJACSA) International Journal of Advanced Computer Science and Applications ru
dc.relation.ispartofseries Vol. 16, No. 5;
dc.subject Car damage detection ru
dc.subject instance segmentation ru
dc.subject dilated convolution ru
dc.subject feature pyramid network ru
dc.subject Mask R‑CNN ru
dc.subject deep learning ru
dc.subject vehicle damage assessment ru
dc.subject semantic segmentation ru
dc.title DamageNet: A Dilated Convolution Feature Pyramid Network Mask R-CNN for Automated Car Damage Detection and Segmentation ru
dc.type Article ru


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