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SCUT-EnsExam Release

SCUT-EnsExam is a real-world handwritten text erasure dataset for examination paper scenarios, which consists of 545 examination paper images. The dataset is randomly divided into training set and test set of 430 and 115 images, respectively. SCUT-EnsExam is now released by the Deep Learning and Visual Computing Lab of South China University of Technology. The dataset can be downloaded through the following link:

Note: The SCUT-EnsExam dataset can only be used for non-commercial research purposes. For scholars or organizations who want to use the SCUT-EnsExam database, please first fill in this Application Form and send it via email to us (lianwen.jin@gmail.com or eelwjin@scut.edu.cn). We will give you passwords for the dataset after your letter has been received and approved.

License

The SCUT-EnsExam dataset should be used and distributed under the Creative Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) License for non-commercial research purposes.

Directory Format

The dataset is organized in the following directory format:

├── SCUT-EnsExam
    ├── train
    │   ├── all_images
    │   │── all_labels
    │   └── quad_annotation
    ├── test
        ├── all_images
        └── all_labels
        └──quad_annotation


Citation and Contact

Please consider to cite our paper when you use our dataset:

@InProceedings{
    author    = {Huang, Liufeng and Chen, Bangdong and Liu, Chongyu and Peng, Dezhi and Zhou, Weiying and Wu, Yaqiang and Li, Hui and Ni, Hao and Jin, Lianwen},
    title     = {EnsExam: A Dataset for Handwritten Text Erasure on Examination Papers.},
    booktitle = {Document Analysis and Recognition – ICDAR 2023},
    month     = {August},
    year      = {2023},
    pages     = {470–485}
}

For any questions about the dataset, please contact the authors by sending an email to Prof. Jin(eelwjin@scut.edu.cn, or lianwen.jin@gmail.com).