## TEXT ANGLE CLASSIFICATION ### DATA PREPARATION Please organize the dataset as follows: The default storage path for training data is `PaddleOCR/train_data/cls`, if you already have a dataset on your disk, just create a soft link to the dataset directory: ``` ln -sf /train_data/cls/dataset ``` please refer to the following to organize your data. - Training set First put the training images in the same folder (train_images), and use a txt file (cls_gt_train.txt) to store the image path and label. * Note: by default, the image path and image label are split with `\t`, if you use other methods to split, it will cause training error 0 and 180 indicate that the angle of the image is 0 degrees and 180 degrees, respectively. ``` " Image file name Image annotation " train/word_001.jpg 0 train/word_002.jpg 180 ``` The final training set should have the following file structure: ``` |-train_data |-cls |- cls_gt_train.txt |- train |- word_001.png |- word_002.jpg |- word_003.jpg | ... ``` - Test set Similar to the training set, the test set also needs to be provided a folder containing all images (test) and a cls_gt_test.txt. The structure of the test set is as follows: ``` |-train_data |-cls |- cls_gt_test.txt |- test |- word_001.jpg |- word_002.jpg |- word_003.jpg | ... ``` ### TRAINING Write the prepared txt file and image folder path into the configuration file under the `Train/Eval.dataset.label_file_list` and `Train/Eval.dataset.data_dir` fields, the absolute path of the image consists of the `Train/Eval.dataset.data_dir` field and the image name recorded in the txt file. PaddleOCR provides training scripts, evaluation scripts, and prediction scripts. Start training: ``` # Set PYTHONPATH path export PYTHONPATH=$PYTHONPATH:. # GPU training Support single card and multi-card training, specify the card number through --gpus. If your paddle version is less than 2.0rc1, please use '--selected_gpus' # Start training, the following command has been written into the train.sh file, just modify the configuration file path in the file python3 -m paddle.distributed.launch --gpus '0,1,2,3,4,5,6,7' tools/train.py -c configs/cls/cls_mv3.yml ``` - Data Augmentation PaddleOCR provides a variety of data augmentation methods. If you want to add disturbance during training, Please uncomment the `RecAug` and `RandAugment` fields under `Train.dataset.transforms` in the configuration file. The default perturbation methods are: cvtColor, blur, jitter, Gasuss noise, random crop, perspective, color reverse, RandAugment. Except for RandAugment, each disturbance method is selected with a 50% probability during the training process. For specific code implementation, please refer to: [rec_img_aug.py](../../ppocr/data/imaug/rec_img_aug.py) [randaugment.py](../../ppocr/data/imaug/randaugment.py) - Training PaddleOCR supports alternating training and evaluation. You can modify `eval_batch_step` in `configs/cls/cls_mv3.yml` to set the evaluation frequency. By default, it is evaluated every 1000 iter. The following content will be saved during training: ```bash ├── best_accuracy.pdopt # Optimizer parameters for the best model ├── best_accuracy.pdparams # Parameters of the best model ├── best_accuracy.states # Metric info and epochs of the best model ├── config.yml # Configuration file for this experiment ├── latest.pdopt # Optimizer parameters for the latest model ├── latest.pdparams # Parameters of the latest model ├── latest.states # Metric info and epochs of the latest model └── train.log # Training log ``` If the evaluation set is large, the test will be time-consuming. It is recommended to reduce the number of evaluations, or evaluate after training. **Note that the configuration file for prediction/evaluation must be consistent with the training.** ### EVALUATION The evaluation dataset can be set by modifying the `Eval.dataset.label_file_list` field in the `configs/cls/cls_mv3.yml` file. ``` export CUDA_VISIBLE_DEVICES=0 # GPU evaluation, Global.checkpoints is the weight to be tested python3 tools/eval.py -c configs/cls/cls_mv3.yml -o Global.checkpoints={path/to/weights}/best_accuracy ``` ### PREDICTION * Training engine prediction Using the model trained by paddleocr, you can quickly get prediction through the following script. Use `Global.infer_img` to specify the path of the predicted picture or folder, and use `Global.checkpoints` to specify the weight: ``` # Predict English results python3 tools/infer_cls.py -c configs/cls/cls_mv3.yml -o Global.pretrained_model={path/to/weights}/best_accuracy Global.load_static_weights=false Global.infer_img=doc/imgs_words_en/word_10.png ``` Input image: ![](../imgs_words_en/word_10.png) Get the prediction result of the input image: ``` infer_img: doc/imgs_words_en/word_10.png result: ('0', 0.9999995) ```