dawnnao / APESS2018_Steel_Girder_Crack_ID_dataset

Data set of APESS2018 for one of the final projects - Steel Girder Crack Identification

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APESS2018 Steel Girder Crack ID Data Set

The data set is used for one of the two final group projects in APESS2018.

Download link 1: https://pan.baidu.com/s/1dduIb1_mwxaMAJbMSb3GnA (size: 2.01GB)

Download link 2: https://drive.google.com/open?id=1bpB0FEB_VM2wI6-1gnK2cdLpkETETHd1 (size: 2.01GB)

Goal of the data set

In this project, each group of participants needs to build and train a neural network, or use a popular existing network and conduct transfer learning to detect cracks in images. Except cracks, there are ruler, handwriting, and steel girder surface as another 3 classes. These images show the practical situation of manual crack inspection for long-span bridge in China.

Contents in the data set

In the data set package, there are 4 folders:

In folder '0_raw_images':

50 Raw crack images.

In folder '1_image-wise_labels':

50 image-wise labels of the same resolution with the raw images.

In folder '2_subimages_and_labels':

If you load the .mat file by MATLAB, you can readily see two variables named as 'subimage_array' and 'subimage_label'. If you use Python, the variables in .mat file will be stored in a dictionary, and the keys are 'subimage_array' and 'subimage_label'. subimage_array is a 4D array of size [3927, 64, 64, 3], which is stacked by the 3D subimages ([64, 64, 3]). These subimages are generated by column from each raw image. subimage_label is a 2D numpy array in Python (or a vector in MATLAB) of size [3927, 1], which is corresponding to the subimage_array.

In folder '3_help_codes':

You can use the python codes to generate new subimages and corresponding labels with diffrent subimage size.

Future work

  • More images could be added into the data set depending on the feedback.
  • More label format would be added into the data set depending on the feedback also.
  • If you want to contribute to the data set, for example, labeling raw images, or submit your labeled image at hand, please contact us.
  • There is no formal paper to introduce the data set yet, so just cite the web page of the data set repository: https://github.com/dawnnao/APESS2018_Steel_Girder_Crack_ID_dataset

Contibutors: Zhiyi Tang, Fangqiao Hu, Yuhu Quan
Photographer: Kun Fang

© 2018 Center of Structural Monitoring and Control, Harbin Institute of Technology

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Data set of APESS2018 for one of the final projects - Steel Girder Crack Identification

License:MIT License