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Auteurs principaux: Xiao, Xi, Li, Zhengji, Wang, Wentao, Xie, Jiacheng, Lin, Houjie, Roy, Swalpa Kumar, Wang, Tianyang, Xu, Min
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2501.14302
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author Xiao, Xi
Li, Zhengji
Wang, Wentao
Xie, Jiacheng
Lin, Houjie
Roy, Swalpa Kumar
Wang, Tianyang
Xu, Min
author_facet Xiao, Xi
Li, Zhengji
Wang, Wentao
Xie, Jiacheng
Lin, Houjie
Roy, Swalpa Kumar
Wang, Tianyang
Xu, Min
contents Object detection has witnessed remarkable advancements over the past decade, largely driven by breakthroughs in deep learning and the proliferation of large scale datasets. However, the domain of road damage detection remains relatively under explored, despite its critical significance for applications such as infrastructure maintenance and road safety. This paper addresses this gap by introducing a novel top down benchmark that offers a complementary perspective to existing datasets, specifically tailored for road damage detection. Our proposed Top Down Road Damage Detection Dataset (TDRD) includes three primary categories of road damage cracks, potholes, and patches captured from a top down viewpoint. The dataset consists of 7,088 high resolution images, encompassing 12,882 annotated instances of road damage. Additionally, we present a novel real time object detection framework, TDYOLOV10, designed to handle the unique challenges posed by the TDRD dataset. Comparative studies with state of the art models demonstrate competitive baseline results. By releasing TDRD, we aim to accelerate research in this crucial area. A sample of the dataset will be made publicly available upon the paper's acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2501_14302
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TD-RD: A Top-Down Benchmark with Real-Time Framework for Road Damage Detection
Xiao, Xi
Li, Zhengji
Wang, Wentao
Xie, Jiacheng
Lin, Houjie
Roy, Swalpa Kumar
Wang, Tianyang
Xu, Min
Computer Vision and Pattern Recognition
Object detection has witnessed remarkable advancements over the past decade, largely driven by breakthroughs in deep learning and the proliferation of large scale datasets. However, the domain of road damage detection remains relatively under explored, despite its critical significance for applications such as infrastructure maintenance and road safety. This paper addresses this gap by introducing a novel top down benchmark that offers a complementary perspective to existing datasets, specifically tailored for road damage detection. Our proposed Top Down Road Damage Detection Dataset (TDRD) includes three primary categories of road damage cracks, potholes, and patches captured from a top down viewpoint. The dataset consists of 7,088 high resolution images, encompassing 12,882 annotated instances of road damage. Additionally, we present a novel real time object detection framework, TDYOLOV10, designed to handle the unique challenges posed by the TDRD dataset. Comparative studies with state of the art models demonstrate competitive baseline results. By releasing TDRD, we aim to accelerate research in this crucial area. A sample of the dataset will be made publicly available upon the paper's acceptance.
title TD-RD: A Top-Down Benchmark with Real-Time Framework for Road Damage Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2501.14302