Pavementscapes: a large-scale hierarchical image dataset for asphalt
pavement damage segmentation
- URL: http://arxiv.org/abs/2208.00775v1
- Date: Sun, 24 Jul 2022 03:40:27 GMT
- Title: Pavementscapes: a large-scale hierarchical image dataset for asphalt
pavement damage segmentation
- Authors: Zheng Tong, Tao Ma, Ju Huyan, Weiguang Zhang
- Abstract summary: This study has proposed Pavementscapes, a large-scale dataset to develop and evaluate methods for pavement damage segmentation.
A total of 8,680 damage instances are manually labeled with six damage classes at the pixel level.
The numeral experiments propose the top-performing deep neural networks capable of segmenting pavement damages.
- Score: 9.160763314165367
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Pavement damage segmentation has benefited enormously from deep learning. %
and large-scale datasets. However, few current public datasets limit the
potential exploration of deep learning in the application of pavement damage
segmentation. To address this problem, this study has proposed Pavementscapes,
a large-scale dataset to develop and evaluate methods for pavement damage
segmentation. Pavementscapes is comprised of 4,000 images with a resolution of
$1024 \times 2048$, which have been recorded in the real-world pavement
inspection projects with 15 different pavements. A total of 8,680 damage
instances are manually labeled with six damage classes at the pixel level. The
statistical study gives a thorough investigation and analysis of the proposed
dataset. The numeral experiments propose the top-performing deep neural
networks capable of segmenting pavement damages, which provides the baselines
of the open challenge for pavement inspection. The experiment results also
indicate the existing problems for damage segmentation using deep learning, and
this study provides potential solutions.
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