sekilab / RoadRutting

Road rutting is a severe road distress. A novel road rutting dataset with annotations at both object level and pixel level are provided. Experiments conducted on this dataset are presented.

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Detection of Road Rutting

Dataset

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 is 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 dataset presents a novel road rutting dataset comprising of 949 images and provides both object level and pixel level annotations.

Our proposed road rutting dataset is publicly available. It can be accessed using the DOI mentioned below and can be downloaded from here:

Saha, Poonam Kumari; Arya, Deeksha; Kumar, Ashutosh; Maeda, Hiroya; Sekimoto, Yoshihide (2022), “RoadRuttingDatasetSekilab”, Mendeley Data, V1, doi: 10.17632/v8mbnvx8pv.1

For more information on the experiments conducted on this dataset, please refer to the article available here.

Citations

If you use or find our dataset and/or article useful, please cite the following:

1. Dataset: 
    Saha, Poonam Kumari; Arya, Deeksha; Kumar, Ashutosh; Maeda, Hiroya; Sekimoto, Yoshihide (2022), “RoadRuttingDatasetSekilab”, Mendeley Data, V1, doi: 10.17632/v8mbnvx8pv.1

2. arXiv Pre-print: 
    @article{saha2022road,
    title={Road Rutting Detection using Deep Learning on Images},
    author={Saha, Poonam Kumari and Arya, Deeksha and Kumar, Ashutosh and Maeda, Hiroya and Sekimoto, Yoshihide},
    journal={arXiv preprint arXiv:2209.14225},
    year={2022}
    }

About

Road rutting is a severe road distress. A novel road rutting dataset with annotations at both object level and pixel level are provided. Experiments conducted on this dataset are presented.