Authors: Kai Yang, Ye Wang, Bin Wang, Wentao Liu, Xiaolu Ding, Jun Zhu, Ming Chen, Peng Yao, Zhixin Qiu

Affiliation: CCB Financial Technology Co. Ltd, China

Description: 1. Data Analysis
This competition provided 5000 pieces of training data officially. Upon analyzing the data, we found that it can be classified into four categories: round, oval, square, and triangular, with the round and oval categories being the primary ones. The training set contains various conditions, including multi-directional rotations, uneven colors, overlapping seals, and indistinct seal patterns.
2. Data Processing
When it comes to data analysis, we began by re-annotating the training set images and enlarging them to squares. We then rotated the data and produced a total of 15,000 images. Data generation was carried out on difficult samples, including those with overlapping or blurry stamps. Prior to generating the seal data, we gathered a large number of company and organization names from the internet. Then, we generated the rotation angle and position of each individual character based on its length and merged them into the seal's background image. Moreover, we output the coordinates of the outer edge points of the text. To create a more realistic representation of seals in the generated data, we incorporated various colors, fonts, backgrounds, and textures. The base image for each seal was created by randomly cropping backgrounds, and we used RGBA format during data generation to allow for control over the color depth of the seal by adding a transparency channel. We also included two types of seal borders: solid and fragmented.
3. Model Introduction
In this segmentation task, we employed a “voting ensemble” method to detect the content of the seal title. Five models are utilized in the method, namely Mask R-CNN, K-Net, Segformer, Segmenter, and UperNet. Each model generates a mask. And we utilize a majority vote to derive the final mask, which allows us to identify the seal title area on the mask.

method: det314_42023-03-14

Authors: Huajian Zhou

Affiliation: China Mobile Cloud Centre

Description: det method: vitdet
data: official train_data, synthetic data

method: det3172023-03-17

Authors: Huajian Zhou

Affiliation: China Mobile Cloud Centre

Description: det method: vitdet
data: official train_data, synthetic data

Ranking Table

Description Paper Source Code
DateMethodPrecision-0.7Recall-0.7Hmean-0.7PrecisionRecallHmean
2023-03-19Dao Xianghu light of TianQuan99.06%99.06%99.06%99.92%99.92%99.92%
2023-03-14det314_498.18%98.18%98.18%99.90%99.90%99.90%
2023-03-17det31798.18%98.18%98.18%99.90%99.90%99.90%
2023-03-21INTIME_OCR98.14%98.06%98.10%99.82%99.74%99.78%
2023-03-21AntFin-UperNet97.72%97.70%97.71%99.86%99.84%99.85%
2023-03-20UperNet97.70%97.70%97.70%99.84%99.84%99.84%
2023-03-16SPDB LAB97.60%97.60%97.60%99.92%99.92%99.92%
2023-03-20Aaaaa_v397.34%97.32%97.33%99.36%99.34%99.35%
2023-03-20Aaaaa_v297.22%97.14%97.18%99.26%99.18%99.22%
2023-03-20Aaaaa97.14%97.12%97.13%99.36%99.34%99.35%
2023-03-21PAN_ReST_496.86%96.86%96.86%99.70%99.70%99.70%
2023-03-21DB with SegFormer98.11%95.42%96.75%99.65%96.92%98.27%
2023-03-14Aaaaa_v196.72%96.64%96.68%99.16%99.08%99.12%
2023-03-21PAN_ReST_296.66%96.66%96.66%99.68%99.68%99.68%
2023-03-21DB with SegFormer97.37%95.68%96.52%99.17%97.44%98.30%
2023-03-16DB with SegFormer97.72%95.34%96.52%99.61%97.18%98.38%
2023-03-21DB with SegFormer97.04%95.70%96.36%99.01%97.64%98.32%
2023-03-21PAN_ReST_196.34%96.34%96.34%99.30%99.30%99.30%
2023-03-21AppAI for Seal 96.00%96.00%96.00%99.76%99.76%99.76%
2023-03-20ratio_4.095.96%95.96%95.96%99.38%99.38%99.38%
2023-03-21DB with SegFormer95.95%95.78%95.87%98.00%97.82%97.91%
2023-03-20rest_submit_0320_merged_new95.34%95.34%95.34%98.26%98.26%98.26%
2023-03-19Baseline_v195.24%95.24%95.24%99.78%99.78%99.78%
2023-03-20rest_submit_0320_90_new95.24%95.24%95.24%98.10%98.10%98.10%
2023-03-21rest_submit_0321_rotate60_new95.16%95.10%95.13%98.06%98.00%98.03%
2023-03-20rest_submit_0320_295.24%94.36%94.80%98.08%97.18%97.63%
2023-03-20rest_submit_0320_195.11%93.78%94.44%98.03%96.66%97.34%
2023-03-21Baseline_v394.36%94.36%94.36%99.74%99.74%99.74%
2023-03-17印章分割结果提交2023031793.93%93.76%93.84%99.26%99.08%99.17%
2023-03-2020230320_max_polygon_193.73%93.60%93.67%99.34%99.20%99.27%
2023-03-15first93.36%93.36%93.36%98.56%98.56%98.56%
2023-03-15second93.36%93.36%93.36%98.56%98.56%98.56%
2023-03-21deeplabv3plus_r50-d8_40k_seal_20230319_120231_20093.16%91.74%92.44%98.13%96.64%97.38%
2023-03-19PAN++ with Res10192.22%92.22%92.22%97.48%97.48%97.48%
2023-03-20ratio_3.590.52%90.52%90.52%99.38%99.38%99.38%
2023-03-13Seal Detect88.32%88.32%88.32%99.48%99.48%99.48%
2023-03-07185.96%85.96%85.96%99.00%99.00%99.00%
2023-03-07detect_test85.96%85.96%85.96%99.00%99.00%99.00%
2023-03-07185.94%85.94%85.94%98.98%98.98%98.98%
2023-03-08Keypoint-based curved text detection82.42%82.42%82.42%92.72%92.72%92.72%
2023-03-20Seal Detect82.28%82.28%82.28%99.50%99.50%99.50%
2023-03-17Seal Detect80.84%80.84%80.84%99.62%99.62%99.62%
2023-03-21AppAI for Seal76.68%76.68%76.68%99.48%99.48%99.48%
2023-03-21task1_Sealtitledet_DBNet++_result_v166.54%66.54%66.54%96.30%96.30%96.30%
2023-03-20AppAI for Seal64.62%64.62%64.62%99.54%99.54%99.54%
2023-03-07Seal Detect61.40%61.40%61.40%97.28%97.28%97.28%
2023-03-20ratio_3.056.74%56.74%56.74%99.20%99.20%99.20%
2023-03-21task1_DBNet++_result_alltrain52.40%52.40%52.40%92.40%92.40%92.40%
2023-03-21task1_Sealtitledet_DBNet++_result_44844.00%44.00%44.00%92.08%92.08%92.08%
2023-03-18DB_swinL42.98%42.98%42.98%98.86%98.86%98.86%
2023-03-21task1_yolov5n_seg_result_v134.08%34.08%34.08%95.86%95.86%95.86%
2023-03-20ratio_2.532.06%32.06%32.06%97.98%97.98%97.98%
2023-03-19DB-based segmtntation model831.05%31.06%31.06%98.96%98.98%98.97%
2023-03-16DB-based segmtntation model30.04%30.04%30.04%99.04%99.04%99.04%
2023-03-18DB-based segmtntation model30.03%30.04%30.04%99.02%99.04%99.03%
2023-03-21task1_yolov5m_seg_result_v128.36%28.36%28.36%96.04%96.04%96.04%
2023-03-08Baseline24.16%24.16%24.16%97.88%97.88%97.88%
2023-03-20ReST18.19%17.92%18.06%97.36%95.90%96.62%
2023-03-09base method (DBNet_resnet18_fpn)13.94%13.94%13.94%88.60%88.60%88.60%
2023-03-13AppAI for Seal10.54%10.54%10.54%98.02%98.02%98.02%
2023-03-16DBNet_resnet18_fpn_Adaboost9.42%9.42%9.42%86.72%86.72%86.72%
2023-03-20AppAI for Seal8.22%8.22%8.22%98.60%98.60%98.60%
2023-03-20ratio_2.07.60%7.60%7.60%68.66%68.66%68.66%
2023-03-08first3.78%3.78%3.78%6.50%6.50%6.50%
2023-03-21PAN_ReST3.72%3.72%3.72%6.48%6.48%6.48%
2023-03-21PAN_ReST3.64%3.64%3.64%6.44%6.44%6.44%
2023-03-20ratio_1.51.60%1.60%1.60%30.22%30.22%30.22%
2023-03-20Mask way1.28%1.28%1.28%4.30%4.30%4.30%
2023-03-07test0.00%0.00%0.00%0.00%0.00%0.00%
2023-03-07t1-20.00%0.00%0.00%0.00%0.00%0.00%
2023-03-19weiwei_20230320_10.00%0.00%0.00%0.00%0.00%0.00%

Ranking Graphic

Ranking Graphic