_base_ = [ '../../_base_/default_runtime.py', '../../_base_/schedules/schedule_adam_step_6e.py', '../../_base_/recog_pipelines/nrtr_pipeline.py', '../../_base_/recog_datasets/ST_MJ_train.py', '../../_base_/recog_datasets/academic_test.py' ] train_list = {{_base_.train_list}} test_list = {{_base_.test_list}} train_pipeline = {{_base_.train_pipeline}} test_pipeline = {{_base_.test_pipeline}} label_convertor = dict( type='AttnConvertor', dict_type='DICT90', with_unknown=True) model = dict( type='NRTR', backbone=dict( type='ResNet31OCR', layers=[1, 2, 5, 3], channels=[32, 64, 128, 256, 512, 512], stage4_pool_cfg=dict(kernel_size=(2, 1), stride=(2, 1)), last_stage_pool=False), encoder=dict(type='NRTREncoder'), decoder=dict(type='NRTRDecoder'), loss=dict(type='TFLoss'), label_convertor=label_convertor, max_seq_len=40) data = dict( samples_per_gpu=64, workers_per_gpu=4, train=dict( type='UniformConcatDataset', datasets=train_list, pipeline=train_pipeline), val=dict( type='UniformConcatDataset', datasets=test_list, pipeline=test_pipeline), test=dict( type='UniformConcatDataset', datasets=test_list, pipeline=test_pipeline)) evaluation = dict(interval=1, metric='acc')