Weakly-Supervised Crack Detection Dataset
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下载链接:
https://zenodo.org/record/4244083
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资源简介:
This repo contains two files: crack detection dataset (weakly_sup_crackdet_dataset.zip), and pretrained TensorFlow model for Xception65 (pascal_voc_seg.zip).
The dataset consists of rough annotations used in weakly-supervised crack detection. It contains roughly annotated ground truths for the following datasets:
Aigle
Crack Forest Dataset
DeepCrack
Annotations of different "roughness" are stored. Directories suffixed "*_dil*" are synthetically-generated annotations, while directories suffixed "*_rough" and "*_rougher" are manually-generated annotations. The detail of the dataset is described in [1]. Please also refer to our GitHub repo https://github.com/hitachi-rd-cv/weakly-sup-crackdet for more details.
This dataset is made available by Hitachi, Ltd.
The pretrained model is used by [1]. Please use it for comparison experiments. Please refer to our GitHub repor for more details.
[1] Inoue, Y., Nagayoshi, H.: Crack detection as a weakly-supervised problem: Towards achieving less annotation-intensive crack detectors. In: International Conference on Pattern Recognition (ICPR) (2020)
创建时间:
2020-11-04



