Road rutting is a severe road distress that can cause premature failure of road incurring early and costly maintenance costs. Research on road damage detection using image processing techniques and deep learning are being actively conducted in the past few years. However, these researches are mostly focused on detection of cracks, potholes, and their variants. Very few research has been done on the detection of road rutting. This paper proposes a novel road rutting dataset comprising of 949 images and provides both object level and pixel level annotations. Object detection models and semantic segmentation models were deployed to detect road rutting on the proposed dataset, and quantitative and qualitative analysis of model predictions were done to evaluate model performance and identify challenges faced in the detection of road rutting using the proposed method. Object detection model YOLOX-s achieves mAP@IoU=0.5 of 61.6% and semantic segmentation model PSPNet (Resnet-50) achieves IoU of 54.69 and accuracy of 72.67, thus providing a benchmark accuracy for similar work in future. The proposed road rutting dataset and the results of our research study will help accelerate the research on detection of road rutting using deep learning.
翻译:在过去几年中,正在积极研究利用图像处理技术和深层学习技术对道路损坏进行探测,但是,这些研究主要侧重于查明裂缝、坑洞及其变式;关于探测道路损坏的研究很少;关于探测道路损坏的研究很少;本文件提议建立一个由949个图像组成的新的道路重整数据集,提供目标水平和像素水平的注释;采用了物体探测模型和语义分解模型,以探测对拟议数据集进行的道路重检,并对模型预测进行了定量和定性分析,以评价示范性业绩,并查明在利用拟议方法探测道路重整过程中面临的挑战;物体探测模型YOLOX-s达到MAP@IOU=0.5,占61.6%的 mAP@IOU=0.5,静音分解模型PSPNet(Resnet-50)达到IoU54.69,准确度为72.67,从而为今后类似工作提供了基准精确度;拟议的道路重检数据集和深深层研究结果将加快研究的进度。