# TEXT DETECTION This section uses the icdar2015 dataset as an example to introduce the training, evaluation, and testing of the detection model in PaddleOCR. ## DATA PREPARATION The icdar2015 dataset can be obtained from [official website](https://rrc.cvc.uab.es/?ch=4&com=downloads). Registration is required for downloading. Decompress the downloaded dataset to the working directory, assuming it is decompressed under PaddleOCR/train_data/. In addition, PaddleOCR organizes many scattered annotation files into two separate annotation files for train and test respectively, which can be downloaded by wget: ```shell # Under the PaddleOCR path cd PaddleOCR/ wget -P ./train_data/ https://paddleocr.bj.bcebos.com/dataset/train_icdar2015_label.txt wget -P ./train_data/ https://paddleocr.bj.bcebos.com/dataset/test_icdar2015_label.txt ``` After decompressing the data set and downloading the annotation file, PaddleOCR/train_data/ has two folders and two files, which are: ``` /PaddleOCR/train_data/icdar2015/text_localization/ └─ icdar_c4_train_imgs/ Training data of icdar dataset └─ ch4_test_images/ Testing data of icdar dataset └─ train_icdar2015_label.txt Training annotation of icdar dataset └─ test_icdar2015_label.txt Test annotation of icdar dataset ``` The provided annotation file format is as follow, seperated by "\t": ``` " Image file name Image annotation information encoded by json.dumps" ch4_test_images/img_61.jpg [{"transcription": "MASA", "points": [[310, 104], [416, 141], [418, 216], [312, 179]]}, {...}] ``` The image annotation after **json.dumps()** encoding is a list containing multiple dictionaries. The `points` in the dictionary represent the coordinates (x, y) of the four points of the text box, arranged clockwise from the point at the upper left corner. `transcription` represents the text of the current text box. **When its content is "###" it means that the text box is invalid and will be skipped during training.** If you want to train PaddleOCR on other datasets, please build the annotation file according to the above format. ## TRAINING First download the pretrained model. The detection model of PaddleOCR currently supports two backbones, namely MobileNetV3 and ResNet50_vd. You can use the model in [PaddleClas](https://github.com/PaddlePaddle/PaddleClas/tree/master/ppcls/modeling/architectures) to replace backbone according to your needs. ```shell cd PaddleOCR/ # Download the pre-trained model of MobileNetV3 wget -P ./pretrain_models/ https://paddle-imagenet-models-name.bj.bcebos.com/MobileNetV3_large_x0_5_pretrained.tar # Download the pre-trained model of ResNet50 wget -P ./pretrain_models/ https://paddle-imagenet-models-name.bj.bcebos.com/ResNet50_vd_ssld_pretrained.tar # decompressing the pre-training model file, take MobileNetV3 as an example tar -xf ./pretrain_models/MobileNetV3_large_x0_5_pretrained.tar ./pretrain_models/ # Note: After decompressing the backbone pre-training weight file correctly, the file list in the folder is as follows: ./pretrain_models/MobileNetV3_large_x0_5_pretrained/ └─ conv_last_bn_mean └─ conv_last_bn_offset └─ conv_last_bn_scale └─ conv_last_bn_variance └─ ...... ``` #### START TRAINING *If CPU version installed, please set the parameter `use_gpu` to `false` in the configuration.* ```shell python3 tools/train.py -c configs/det/det_mv3_db.yml 2>&1 | tee train_det.log ``` In the above instruction, use `-c` to select the training to use the `configs/det/det_db_mv3.yml` configuration file. For a detailed explanation of the configuration file, please refer to [config](./config_en.md). You can also use `-o` to change the training parameters without modifying the yml file. For example, adjust the training learning rate to 0.0001 ```shell python3 tools/train.py -c configs/det/det_mv3_db.yml -o Optimizer.base_lr=0.0001 ``` #### load trained model and continue training If you expect to load trained model and continue the training again, you can specify the parameter `Global.checkpoints` as the model path to be loaded. For example: ```shell python3 tools/train.py -c configs/det/det_mv3_db.yml -o Global.checkpoints=./your/trained/model ``` **Note**: The priority of `Global.checkpoints` is higher than that of `Global.pretrain_weights`, that is, when two parameters are specified at the same time, the model specified by `Global.checkpoints` will be loaded first. If the model path specified by `Global.checkpoints` is wrong, the one specified by `Global.pretrain_weights` will be loaded. ## EVALUATION PaddleOCR calculates three indicators for evaluating performance of OCR detection task: Precision, Recall, and Hmean. Run the following code to calculate the evaluation indicators. The result will be saved in the test result file specified by `save_res_path` in the configuration file `det_db_mv3.yml` When evaluating, set post-processing parameters `box_thresh=0.6`, `unclip_ratio=1.5`. If you use different datasets, different models for training, these two parameters should be adjusted for better result. ```shell python3 tools/eval.py -c configs/det/det_mv3_db.yml -o Global.checkpoints="{path/to/weights}/best_accuracy" PostProcess.box_thresh=0.6 PostProcess.unclip_ratio=1.5 ``` The model parameters during training are saved in the `Global.save_model_dir` directory by default. When evaluating indicators, you need to set `Global.checkpoints` to point to the saved parameter file. Such as: ```shell python3 tools/eval.py -c configs/det/det_mv3_db.yml -o Global.checkpoints="./output/det_db/best_accuracy" PostProcess.box_thresh=0.6 PostProcess.unclip_ratio=1.5 ``` * Note: `box_thresh` and `unclip_ratio` are parameters required for DB post-processing, and not need to be set when evaluating the EAST model. ## TEST Test the detection result on a single image: ```shell python3 tools/infer_det.py -c configs/det/det_mv3_db.yml -o TestReader.infer_img="./doc/imgs_en/img_10.jpg" Global.checkpoints="./output/det_db/best_accuracy" ``` When testing the DB model, adjust the post-processing threshold: ```shell python3 tools/infer_det.py -c configs/det/det_mv3_db.yml -o TestReader.infer_img="./doc/imgs_en/img_10.jpg" Global.checkpoints="./output/det_db/best_accuracy" PostProcess.box_thresh=0.6 PostProcess.unclip_ratio=1.5 ``` Test the detection result on all images in the folder: ```shell python3 tools/infer_det.py -c configs/det/det_mv3_db.yml -o TestReader.infer_img="./doc/imgs_en/" Global.checkpoints="./output/det_db/best_accuracy" ```