# Copyright (c) OpenMMLab. All rights reserved. import math import os.path as osp import tempfile from mmocr.datasets.ocr_dataset import OCRDataset def _create_dummy_ann_file(ann_file): ann_info1 = 'sample1.jpg hello' ann_info2 = 'sample2.jpg world' with open(ann_file, 'w') as fw: for ann_info in [ann_info1, ann_info2]: fw.write(ann_info + '\n') def _create_dummy_loader(): loader = dict( type='HardDiskLoader', repeat=1, parser=dict(type='LineStrParser', keys=['file_name', 'text'])) return loader def test_detect_dataset(): tmp_dir = tempfile.TemporaryDirectory() # create dummy data ann_file = osp.join(tmp_dir.name, 'fake_data.txt') _create_dummy_ann_file(ann_file) # test initialization loader = _create_dummy_loader() dataset = OCRDataset(ann_file, loader, pipeline=[]) tmp_dir.cleanup() # test pre_pipeline img_info = dataset.data_infos[0] results = dict(img_info=img_info) dataset.pre_pipeline(results) assert results['img_prefix'] == dataset.img_prefix assert results['text'] == img_info['text'] # test evluation metric = 'acc' results = [{'text': 'hello'}, {'text': 'worl'}] eval_res = dataset.evaluate(results, metric) assert math.isclose(eval_res['word_acc'], 0.5, abs_tol=1e-4) assert math.isclose(eval_res['char_precision'], 1.0, abs_tol=1e-4) assert math.isclose(eval_res['char_recall'], 0.9, abs_tol=1e-4)