Global: use_gpu: True epoch_num: 10 log_smooth_window: 20 print_batch_step: 10 save_model_dir: ./output/rec/r45_abinet/ save_epoch_step: 1 # evaluation is run every 2000 iterations eval_batch_step: [0, 2000] cal_metric_during_train: True pretrained_model: ./pretrain_models/abinet_vl_pretrained checkpoints: save_inference_dir: use_visualdl: False infer_img: doc/imgs_words_en/word_10.png # for data or label process character_dict_path: character_type: en max_text_length: 25 infer_mode: False use_space_char: False save_res_path: ./output/rec/predicts_abinet.txt Optimizer: name: Adam beta1: 0.9 beta2: 0.99 clip_norm: 20.0 lr: name: Piecewise decay_epochs: [6] values: [0.0001, 0.00001] regularizer: name: 'L2' factor: 0. Architecture: model_type: rec algorithm: ABINet in_channels: 3 Transform: Backbone: name: ResNet45 Head: name: ABINetHead use_lang: True iter_size: 3 Loss: name: CELoss ignore_index: &ignore_index 100 # Must be greater than the number of character classes PostProcess: name: ABINetLabelDecode Metric: name: RecMetric main_indicator: acc Train: dataset: name: LMDBDataSet data_dir: ./train_data/data_lmdb_release/training/ transforms: - DecodeImage: # load image img_mode: RGB channel_first: False - ABINetRecAug: - ABINetLabelEncode: # Class handling label ignore_index: *ignore_index - ABINetRecResizeImg: image_shape: [3, 32, 128] - KeepKeys: keep_keys: ['image', 'label', 'length'] # dataloader will return list in this order loader: shuffle: True batch_size_per_card: 96 drop_last: True num_workers: 4 Eval: dataset: name: LMDBDataSet data_dir: ./train_data/data_lmdb_release/evaluation/ transforms: - DecodeImage: # load image img_mode: RGB channel_first: False - ABINetLabelEncode: # Class handling label ignore_index: *ignore_index - ABINetRecResizeImg: image_shape: [3, 32, 128] - KeepKeys: keep_keys: ['image', 'label', 'length'] # dataloader will return list in this order loader: shuffle: False drop_last: False batch_size_per_card: 256 num_workers: 4 use_shared_memory: False