diff --git a/configs/e2e/e2e_r50_vd_pg.yml b/configs/e2e/e2e_r50_vd_pg.yml index 3196095587b9525d5d0aef3ca8ed2ec298480e03..8128bde15faa089933022e4ecc46de77da92627c 100644 --- a/configs/e2e/e2e_r50_vd_pg.yml +++ b/configs/e2e/e2e_r50_vd_pg.yml @@ -72,7 +72,7 @@ Train: dataset: name: PGDataSet data_dir: ./train_data/total_text/train - label_file_list: [./train_data/total_text/train/total_text.txt] + label_file_list: [./train_data/total_text/train/train.txt] ratio_list: [1.0] transforms: - DecodeImage: # load image @@ -96,7 +96,7 @@ Eval: dataset: name: PGDataSet data_dir: ./train_data/total_text/test - label_file_list: [./train_data/total_text/test/total_text.txt] + label_file_list: [./train_data/total_text/test/test.txt] transforms: - DecodeImage: # load image img_mode: RGB diff --git a/doc/doc_ch/pgnet.md b/doc/doc_ch/pgnet.md index 265853860854317ab00f40b1f447edfad47dc557..e79c2388ea0047a75ceec3dcb3c1d762c3702b2b 100644 --- a/doc/doc_ch/pgnet.md +++ b/doc/doc_ch/pgnet.md @@ -83,19 +83,19 @@ python3 tools/infer/predict_e2e.py --e2e_algorithm="PGNet" --image_dir="./doc/im 本节以totaltext数据集为例,介绍PaddleOCR中端到端模型的训练、评估与测试。 ### 准备数据 -下载解压[totaltext](https://github.com/cs-chan/Total-Text-Dataset/blob/master/Dataset/README.md) 数据集到PaddleOCR/train_data/目录,数据集组织结构: +下载解压[totaltext](https://paddleocr.bj.bcebos.com/dataset/total_text.tar) 数据集到PaddleOCR/train_data/目录,数据集组织结构: ``` /PaddleOCR/train_data/total_text/train/ |- rgb/ # total_text数据集的训练数据 - |- gt_0.png + |- img11.jpg | ... - |- total_text.txt # total_text数据集的训练标注 + |- train.txt # total_text数据集的训练标注 ``` total_text.txt标注文件格式如下,文件名和标注信息中间用"\t"分隔: ``` " 图像文件名 json.dumps编码的图像标注信息" -rgb/gt_0.png [{"transcription": "EST", "points": [[1004.0,689.0],[1019.0,698.0],[1034.0,708.0],[1049.0,718.0],[1064.0,728.0],[1079.0,738.0],[1095.0,748.0],[1094.0,774.0],[1079.0,765.0],[1065.0,756.0],[1050.0,747.0],[1036.0,738.0],[1021.0,729.0],[1007.0,721.0]]}, {...}] +rgb/img11.jpg [{"transcription": "ASRAMA", "points": [[214.0, 325.0], [235.0, 308.0], [259.0, 296.0], [286.0, 291.0], [313.0, 295.0], [338.0, 305.0], [362.0, 320.0], [349.0, 347.0], [330.0, 337.0], [310.0, 329.0], [290.0, 324.0], [269.0, 328.0], [249.0, 336.0], [231.0, 346.0]]}, {...}] ``` json.dumps编码前的图像标注信息是包含多个字典的list,字典中的 `points` 表示文本框的四个点的坐标(x, y),从左上角的点开始顺时针排列。 `transcription` 表示当前文本框的文字,**当其内容为“###”时,表示该文本框无效,在训练时会跳过。** diff --git a/doc/doc_en/pgnet_en.md b/doc/doc_en/pgnet_en.md index 2ab1116ce7085e2e322b4be45ee5628c247040ea..9c46802b5b5273110a80cd5da8916f43e5f4883f 100644 --- a/doc/doc_en/pgnet_en.md +++ b/doc/doc_en/pgnet_en.md @@ -76,19 +76,19 @@ The visualized end-to-end results are saved to the `./inference_results` folder This section takes the totaltext dataset as an example to introduce the training, evaluation and testing of the end-to-end model in PaddleOCR. ### Data Preparation -Download and unzip [totaltext](https://github.com/cs-chan/Total-Text-Dataset/blob/master/Dataset/README.md) dataset to PaddleOCR/train_data/, dataset organization structure is as follow: +Download and unzip [totaltext](https://paddleocr.bj.bcebos.com/dataset/total_text.tar) dataset to PaddleOCR/train_data/, dataset organization structure is as follow: ``` /PaddleOCR/train_data/total_text/train/ |- rgb/ # total_text training data of dataset - |- gt_0.png + |- img11.png | ... - |- total_text.txt # total_text training annotation of dataset + |- train.txt # total_text training annotation of dataset ``` total_text.txt: the format of dimension file is as follows,the file name and annotation information are separated by "\t": ``` " Image file name Image annotation information encoded by json.dumps" -rgb/gt_0.png [{"transcription": "EST", "points": [[1004.0,689.0],[1019.0,698.0],[1034.0,708.0],[1049.0,718.0],[1064.0,728.0],[1079.0,738.0],[1095.0,748.0],[1094.0,774.0],[1079.0,765.0],[1065.0,756.0],[1050.0,747.0],[1036.0,738.0],[1021.0,729.0],[1007.0,721.0]]}, {...}] +rgb/img11.jpg [{"transcription": "ASRAMA", "points": [[214.0, 325.0], [235.0, 308.0], [259.0, 296.0], [286.0, 291.0], [313.0, 295.0], [338.0, 305.0], [362.0, 320.0], [349.0, 347.0], [330.0, 337.0], [310.0, 329.0], [290.0, 324.0], [269.0, 328.0], [249.0, 336.0], [231.0, 346.0]]}, {...}] ``` The image annotation after **json.dumps()** encoding is a list containing multiple dictionaries.