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import re |
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import json |
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import os |
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import torch.distributed as dist |
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from BLIP_main import utils |
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def pre_caption(caption,max_words=50): |
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caption = re.sub( |
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r"([.!\"()*#:;~])", |
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' ', |
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caption.lower(), |
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) |
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caption = re.sub( |
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r"\s{2,}", |
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' ', |
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caption, |
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) |
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caption = caption.rstrip('\n') |
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caption = caption.strip(' ') |
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caption_words = caption.split(' ') |
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if len(caption_words)>max_words: |
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caption = ' '.join(caption_words[:max_words]) |
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return caption |
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def pre_question(question,max_ques_words=50): |
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question = re.sub( |
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r"([.!\"()*#:;~])", |
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'', |
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question.lower(), |
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) |
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question = question.rstrip(' ') |
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question_words = question.split(' ') |
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if len(question_words)>max_ques_words: |
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question = ' '.join(question_words[:max_ques_words]) |
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return question |
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def save_result(result, result_dir, filename, remove_duplicate=''): |
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result_file = os.path.join(result_dir, '%s_rank%d.json' % (filename, utils.get_rank())) |
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final_result_file = os.path.join(result_dir, '%s.json'%filename) |
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json.dump(result,open(result_file,'w')) |
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dist.barrier() |
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if utils.is_main_process(): |
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result = [] |
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for rank in range(utils.get_world_size()): |
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result_file = os.path.join(result_dir, '%s_rank%d.json'%(filename,rank)) |
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res = json.load(open(result_file,'r')) |
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result += res |
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if remove_duplicate: |
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result_new = [] |
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id_list = [] |
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for res in result: |
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if res[remove_duplicate] not in id_list: |
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id_list.append(res[remove_duplicate]) |
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result_new.append(res) |
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result = result_new |
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json.dump(result,open(final_result_file,'w')) |
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print('result file saved to %s'%final_result_file) |
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return final_result_file |
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from pycocotools.coco import COCO |
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from pycocoevalcap.eval import COCOEvalCap |
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from torchvision.datasets.utils import download_url |
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def coco_caption_eval(coco_gt_root, results_file, split): |
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urls = {'val':'https://storage.googleapis.com/sfr-vision-language-research/datasets/coco_karpathy_val_gt.json', |
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'test':'https://storage.googleapis.com/sfr-vision-language-research/datasets/coco_karpathy_test_gt.json'} |
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filenames = {'val':'coco_karpathy_val_gt.json','test':'coco_karpathy_test_gt.json'} |
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download_url(urls[split],coco_gt_root) |
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annotation_file = os.path.join(coco_gt_root,filenames[split]) |
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coco = COCO(annotation_file) |
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coco_result = coco.loadRes(results_file) |
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coco_eval = COCOEvalCap(coco, coco_result) |
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coco_eval.evaluate() |
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for metric, score in coco_eval.eval.items(): |
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print(f'{metric}: {score:.3f}') |
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return coco_eval |