method: MapTest2024-05-05

Authors: Hongen Liu

Affiliation: Tianjin University

Authors: Yu Xie, Jielei Zhang, Ziyue Wang, Yuchen He, Yihan Meng, Weihang Wang, Peiyi Li, Longwen Gao, Qian Qiao

Affiliation: Bilibili Inc.

Description: In the Detection-linking task of MapText, we used ViTAE-v2 to extract global features, utilizing an encoder-decoder network architecture (DeepSolo). Data augmentation techniques such as cropping, scaling, saturation, and contrast adjustment were applied. Pre-training was conducted using available real datasets (TextOCR, TotalText, IC15, MLT2017). The model was fine-tuned on the MapText dataset, and post-processing methods were employed.

Zhang, Q., Xu, Y., Zhang, J., & Tao, D. (2023). Vitaev2: Vision transformer advanced by exploring inductive bias for image recognition and beyond. International Journal of Computer Vision, 131(5), 1141-1162.

Ye, M., Zhang, J., Zhao, S., Liu, J., Liu, T., Du, B., & Tao, D. (2023). Deepsolo: Let transformer decoder with explicit points solo for text spotting. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 19348-19357).

method: Baseline TESTR Checkpoint2024-03-26

Authors: Organizers

Affiliation: ICDAR'24 RRC-MapText

Description: TESTR checkpoint is used without any additional modifications or finetuning. The model checkpoint version with polygon prediction head and fine-tuned on TotalText was used. (Note that no links are predicted.)

Ranking Table

Description Paper Source Code
DateMethodQualityF-scoreTightnessPrecisionRecall
2024-05-05MapTest41.94%56.35%74.42%44.16%77.84%
2024-05-06MapText Detection-Linking Strong Pipeline41.55%55.08%75.44%43.24%75.83%
2024-03-26Baseline TESTR Checkpoint35.47%47.29%75.00%37.77%63.22%
2024-03-26DS-LP35.04%50.25%69.73%39.39%69.37%

Ranking Graphic

Ranking Graphic

Ranking Graphic