Global: use_gpu: True epoch_num: 8 log_smooth_window: 20 print_batch_step: 5 save_model_dir: ./output/rec/pren_new save_epoch_step: 3 # evaluation is run every 2000 iterations after the 4000th iteration eval_batch_step: [4000, 2000] cal_metric_during_train: True pretrained_model: checkpoints: save_inference_dir: use_visualdl: False infer_img: doc/imgs_words/ch/word_1.jpg # for data or label process character_dict_path: max_text_length: &max_text_length 25 infer_mode: False use_space_char: False save_res_path: ./output/rec/predicts_pren.txt Optimizer: name: Adadelta lr: name: Piecewise decay_epochs: [2, 5, 7] values: [0.5, 0.1, 0.01, 0.001] Architecture: model_type: rec algorithm: PREN in_channels: 3 Backbone: name: EfficientNetb3_PREN Neck: name: PRENFPN n_r: 5 d_model: 384 max_len: *max_text_length dropout: 0.1 Head: name: PRENHead Loss: name: PRENLoss PostProcess: name: PRENLabelDecode Metric: name: RecMetric main_indicator: acc Train: dataset: name: LMDBDataSet data_dir: ./train_data/data_lmdb_release/training/ transforms: - DecodeImage: img_mode: BGR channel_first: False - PRENLabelEncode: - RecAug: - PRENResizeImg: image_shape: [64, 256] # h,w - KeepKeys: keep_keys: ['image', 'label'] loader: shuffle: True batch_size_per_card: 128 drop_last: True num_workers: 8 Eval: dataset: name: LMDBDataSet data_dir: ./train_data/data_lmdb_release/validation/ transforms: - DecodeImage: img_mode: BGR channel_first: False - PRENLabelEncode: - PRENResizeImg: image_shape: [64, 256] # h,w - KeepKeys: keep_keys: ['image', 'label'] loader: shuffle: False drop_last: False batch_size_per_card: 64 num_workers: 8