| import copy |
|
|
| import numpy as np |
| from collections import defaultdict |
| import json |
| from xtuner.utils import DEFAULT_IMAGE_TOKEN, IMAGE_TOKEN_INDEX |
| from xtuner.tools.utils import is_cn_string |
| from xtuner.dataset.utils import expand2square |
| from PIL import Image |
| import os |
|
|
| def process_punctuation(inText): |
| import re |
| outText = inText |
| punct = [ |
| ';', r'/', '[', ']', '"', '{', '}', '(', ')', '=', '+', '\\', '_', '-', |
| '>', '<', '@', '`', ',', '?', '!' |
| ] |
| commaStrip = re.compile('(\d)(,)(\d)') |
| periodStrip = re.compile('(?!<=\d)(\.)(?!\d)') |
| for p in punct: |
| if (p + ' ' in inText or ' ' + p in inText) or (re.search( |
| commaStrip, inText) is not None): |
| outText = outText.replace(p, '') |
| else: |
| outText = outText.replace(p, ' ') |
| outText = periodStrip.sub('', outText, re.UNICODE) |
| return outText |
|
|
|
|
| def YOrN_Extraction(output): |
| s = output.lower() |
| words = process_punctuation(s).split() |
| if 'yes' in words and 'no' not in words: |
| return 'Yes' |
| if 'yes' not in words and 'no' in words: |
| return 'No' |
| return 'Unknown' |
|
|
|
|
| def MME_rating(data): |
| stats = defaultdict(dict) |
| lt = len(data) |
| for i in range(lt): |
| item = data.iloc[i] |
| category = item['category'] |
| image_path = item['image_path'] |
| score = item['score'] |
| if image_path not in stats[category]: |
| stats[category][image_path] = [] |
| stats[category][image_path].append(score) |
|
|
| def acc(key, mode='normal'): |
| res = stats[key] |
| values = [] |
| for val in res.values(): |
| if mode == 'normal': |
| values.extend(val) |
| elif mode == 'plus': |
| values.append(val[0] * val[1]) |
| return np.mean(values) * 100 |
|
|
| scores = {} |
| for k in stats: |
| scores[k] = acc(k) + acc(k, 'plus') |
|
|
| super_cates = dict( |
| perception=[ |
| 'OCR', 'artwork', 'celebrity', 'color', 'count', 'existence', |
| 'landmark', 'position', 'posters', 'scene' |
| ], |
| reasoning=['code_reasoning', 'commonsense_reasoning', 'numerical_calculation', 'text_translation'] |
| ) |
|
|
| ret = {} |
| for sc, cate_list in super_cates.items(): |
| base = 0 |
| for c in cate_list: |
| base += scores[c] |
| ret[sc] = base |
| ret.update(scores) |
| return ret |
|
|
|
|
| def Hallusion_rating(data): |
| def calc_fAcc(data): |
| res = defaultdict(list) |
| lt = len(data) |
| for i in range(lt): |
| line = data.iloc[i] |
| res[f"{line['l2-category']}_{line['set_id']}_{line['figure_id']}"].append(line['score']) |
| return np.mean([np.all(x) for x in res.values()]) * 100 |
|
|
| def calc_qAcc(data): |
| res = defaultdict(list) |
| lt = len(data) |
| for i in range(lt): |
| line = data.iloc[i] |
| res[f"{line['l2-category']}_{line['set_id']}_{line['question_id']}"].append(line['score']) |
| return np.mean([np.all(x) for x in res.values()]) * 100 |
|
|
| def calc_aAcc(data): |
| return np.mean(data['score']) * 100 |
|
|
| data['set_id'] = [x.split('_')[3] for x in data['index']] |
| data['figure_id'] = [x.split('_')[4] for x in data['index']] |
| data['question_id'] = [x.split('_')[5] for x in data['index']] |
|
|
| res = dict(split=[], aAcc=[], fAcc=[], qAcc=[]) |
| res['split'].append('Overall') |
| res['aAcc'].append(calc_aAcc(data)) |
| res['fAcc'].append(calc_fAcc(data)) |
| res['qAcc'].append(calc_qAcc(data)) |
|
|
| if 'category' in data: |
| cates = list(set(data['category'])) |
| for c in cates: |
| sub = data[data['category'] == c] |
| res['split'].append(c) |
| res['aAcc'].append(calc_aAcc(sub)) |
| res['fAcc'].append(calc_fAcc(sub)) |
| res['qAcc'].append(calc_qAcc(sub)) |
|
|
| if 'l2-category' in data: |
| cates = list(set(data['l2-category'])) |
| for c in cates: |
| sub = data[data['l2-category'] == c] |
| res['split'].append(c) |
| res['aAcc'].append(calc_aAcc(sub)) |
| res['fAcc'].append(calc_fAcc(sub)) |
| res['qAcc'].append(calc_qAcc(sub)) |
| return res |
|
|
|
|
| def load_jsonl(json_file): |
| with open(json_file) as f: |
| lines = f.readlines() |
| data = [] |
| for line in lines: |
| data.append(json.loads(line)) |
| return data |
|
|
| def custom_data_process(self, data, return_ori_image=False): |
| metainfo = self.metainfo |
| data_dict = {'img_id': data['img_id']} |
| |
| |
| if metainfo['name'] == 'multiple_choice': |
| |
| data_dict['index'] = data['index'] |
| if data['context'] is not None: |
| text = data['context'] + '\n' + data['question'] + '\n' + data['options'] |
| else: |
| text = data['question'] + '\n' + data['options'] |
| text = DEFAULT_IMAGE_TOKEN + '\n' + text |
|
|
| if is_cn_string(text): |
| text = text + '请直接回答选项字母。' |
| else: |
| text = text + ("Answer with the option's letter from the " 'given choices directly.') |
| elif metainfo['name'] in ['chartqa', 'gvqa']: |
| |
| text = data['question'] + '\nAnswer the question using a single word or phrase.' |
| text = DEFAULT_IMAGE_TOKEN + '\n' + text |
| elif metainfo['name'] == 'tallyqa': |
| text = data['question'] |
| text = text + "\nAnswer the question using a single number." |
| text = DEFAULT_IMAGE_TOKEN + '\n' + text |
| elif metainfo['name'] in ['hallusion', 'pope']: |
| |
| text = data['question'] + '\nPlease answer the question with yes or no.' |
| text = DEFAULT_IMAGE_TOKEN + '\n' + text |
| else: |
| text = data['question'] |
| if metainfo['name'] == 'mme': |
| text = data['question'].replace('Please answer yes or no.', |
| 'Please answer the question only a single word yes or no.') |
| text = DEFAULT_IMAGE_TOKEN + '\n' + text |
|
|
| |
| |
| if metainfo['name'] in ['textvqa', 'gqa', 'tallyqa']: |
| |
| image_folder = self.image_folder |
| image = Image.open(os.path.join(image_folder, data['image_path'])).convert('RGB') |
| else: |
| image = self.get_image(data['img']).convert('RGB') |
| ori_image = copy.deepcopy(image) |
| ori_width, ori_height = image.size |
|
|
| if self.pad_image_to_square: |
| image = expand2square(image, tuple(int(x * 255) for x in self.image_processor.image_mean)) |
|
|
| image = self.image_processor.preprocess( |
| image, return_tensors='pt')['pixel_values'][0] |
|
|
| data_dict['pixel_values'] = image |
| data_dict['text_prompts'] = text |
| data_dict['ori_image_size'] = (ori_width, ori_height) |
| if return_ori_image: |
| data_dict['ori_image'] = ori_image |
| return data_dict |