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3 months ago

SHREC 2022: pothole and crack detection in the road pavement using images and RGB-D data

Elia Moscoso Thompson Andrea Ranieri Silvia Biasotti Miguel Chicchon Ivan Sipiran Minh-Khoi Pham Thang-Long Nguyen-Ho Hai-Dang Nguyen Minh-Triet Tran

SHREC 2022: pothole and crack detection in the road pavement using images and RGB-D data

Abstract

This paper describes the methods submitted for evaluation to the SHREC 2022 track on pothole and crack detection in the road pavement. A total of 7 different runs for the semantic segmentation of the road surface are compared, 6 from the participants plus a baseline method. All methods exploit Deep Learning techniques and their performance is tested using the same environment (i.e.: a single Jupyter notebook). A training set, composed of 3836 semantic segmentation image/mask pairs and 797 RGB-D video clips collected with the latest depth cameras was made available to the participants. The methods are then evaluated on the 496 image/mask pairs in the validation set, on the 504 pairs in the test set and finally on 8 video clips. The analysis of the results is based on quantitative metrics for image segmentation and qualitative analysis of the video clips. The participation and the results show that the scenario is of great interest and that the use of RGB-D data is still challenging in this context.

Code Repositories

https://gitlab.com/4ndr3aR/pothole-mix-segmentation
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
semantic-segmentation-on-pothole-mixHCMUS-SegFormer
Test Dice Multiclass: 0 .747
Test mIoU: 0 .628
Validation Dice Multiclass: 0 .637
Validation mIoU: 0 .523
semantic-segmentation-on-pothole-mixBaseline - DeepLabv3+
Test Dice Multiclass: 0 .789
Test mIoU: 0 .676
Validation Dice Multiclass: 0 .814
Validation mIoU: 0 .711
semantic-segmentation-on-pothole-mixHCMUS-CPS-DLU-Net
Test Dice Multiclass: 0 .789
Test mIoU: 0 .677
Validation Dice Multiclass: 0 .763
Validation mIoU: 0 .647
semantic-segmentation-on-pothole-mixPUCP-Unet++
Test Dice Multiclass: 0 .832
Test mIoU: 0 .731
Validation Dice Multiclass: 0 .800
Validation mIoU: 0 .694
semantic-segmentation-on-pothole-mixPUCP-Unet
Test Dice Multiclass: 0 .824
Test mIoU: 0 .720
Validation Dice Multiclass: 0 .804
Validation mIoU: 0 .698
semantic-segmentation-on-pothole-mixHCMUS-DeepLabv3+
Test Dice Multiclass: 0 .823
Test mIoU: 0 .719
Validation Dice Multiclass: 0 .802
Validation mIoU: 0 .695
semantic-segmentation-on-pothole-mixPUCP-MAnet
Test Dice Multiclass: 0 .827
Test mIoU: 0 .725
Validation Dice Multiclass: 0 .810
Validation mIoU: 0 .705

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SHREC 2022: pothole and crack detection in the road pavement using images and RGB-D data | Papers | HyperAI