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- import cv2
- from app.core.config import settings
- from app.core.logger import get_logger
- from app.services.defect_service import DefectInferenceService
- from app.services.card_rectify_and_center import CardRectifyAndCenter
- from app.utils.score_inference.CardScorer import CardScorer
- import numpy as np
- import json
- logger = get_logger(__name__)
- class ScoreService:
- def __init__(self):
- self.scoring_config_path = settings.SCORE_CONFIG_PATH
- self.card_scorer = CardScorer(config_path=self.scoring_config_path)
- self.defect_service = DefectInferenceService()
- self.rectify_center_service = CardRectifyAndCenter()
- def score_inference(self, score_type: str, is_reflect_card: bool,
- img_bgr: np.ndarray) -> dict:
- # 解包返回值,获取转正后的外框数据
- img_bgr, transformed_outer_json = self.rectify_center_service.rectify_and_center(img_bgr)
- if img_bgr is None:
- raise ValueError("图像转正处理失败")
- imageHeight, imageWidth = img_bgr.shape[:2]
- logger.info("开始进行卡片分数推理, 使用变换后的外框")
- # 定义通用参数,传入 pre_calculated_outer_result
- defect_kwargs = {
- "img_bgr": img_bgr.copy(),
- "pre_calculated_outer_result": transformed_outer_json
- }
- if score_type == 'front_ring' or score_type == 'front_coaxial':
- center_data = self.defect_service.defect_inference("pokemon_front_card_center", **defect_kwargs)
- else:
- center_data = self.defect_service.defect_inference("pokemon_back_card_center", **defect_kwargs)
- if is_reflect_card:
- if score_type == 'front_ring':
- defect_data = self.defect_service.defect_inference('pokemon_front_face_reflect_ring_light_defect',
- **defect_kwargs)
- elif score_type == 'front_coaxial':
- defect_data = self.defect_service.defect_inference('pokemon_front_face_reflect_coaxial_light_defect',
- **defect_kwargs)
- elif score_type == 'back_ring':
- defect_data = self.defect_service.defect_inference('pokemon_back_face_ring_light_defect',
- **defect_kwargs)
- elif score_type == 'back_coaxial':
- defect_data = self.defect_service.defect_inference('pokemon_back_face_coaxial_light_defect',
- **defect_kwargs)
- else:
- return {}
- else:
- if score_type == 'front_ring':
- defect_data = self.defect_service.defect_inference('pokemon_front_face_no_reflect_ring_light_defect',
- **defect_kwargs)
- elif score_type == 'front_coaxial':
- defect_data = self.defect_service.defect_inference('pokemon_front_face_no_reflect_coaxial_light_defect',
- **defect_kwargs)
- elif score_type == 'back_ring':
- defect_data = self.defect_service.defect_inference('pokemon_back_face_ring_light_defect',
- **defect_kwargs)
- elif score_type == 'back_coaxial':
- defect_data = self.defect_service.defect_inference('pokemon_back_face_coaxial_light_defect',
- **defect_kwargs)
- else:
- return {}
- logger.info("模型推理结束, 开始计算分数")
- if score_type == 'front_ring' or score_type == 'front_coaxial':
- card_aspect = "front"
- else:
- card_aspect = "back"
- if score_type == 'front_ring' or score_type == 'back_ring':
- card_light_type = "ring"
- else:
- card_light_type = "coaxial"
- if card_light_type == 'ring':
- center_score_data = self.card_scorer.calculate_centering_score(card_aspect, center_data, True)
- # 计算角, 边, 面的分数, 会把分数写入json, 然后传入刚写好的, 继续写边的分数
- defect_data = self.card_scorer.calculate_defect_score('corner', card_aspect, card_light_type,
- defect_data, True)
- defect_data = self.card_scorer.calculate_defect_score('edge', card_aspect, card_light_type,
- defect_data, True)
- defect_score_data = self.card_scorer.calculate_defect_score('face', card_aspect, card_light_type,
- defect_data, True)
- elif card_light_type == 'coaxial':
- # 居中
- center_score_data = {}
- # 同轴光照片只计算面缺陷
- defect_score_data = self.card_scorer.calculate_defect_score('face', card_aspect, card_light_type,
- defect_data, True)
- else:
- return {}
- result_json = self.card_scorer.formate_one_card_result(center_score_data, defect_score_data,
- card_light_type=card_light_type,
- card_aspect=card_aspect,
- imageHeight=imageHeight,
- imageWidth=imageWidth)
- temp_score_json_path = settings.TEMP_WORK_DIR / f'{score_type}_score.json'
- with open(temp_score_json_path, 'w', encoding='utf-8') as f:
- json.dump(result_json, f, ensure_ascii=False, indent=2)
- logger.info("分数推理完成 ")
- return result_json
- @staticmethod
- def _has_valid_center_box(center_json: dict) -> bool:
- """判断 center_result 是否包含可用于居中重算的内外框 shapes。
- StitchFusion(同轴光)输出的 center_result 里 inner_box/outer_box 的 shapes 为空,
- 无法做居中重算; 此时应降级为只算面缺陷, 避免索引空列表报错。
- """
- if not center_json:
- return False
- box_result = center_json.get('box_result') or {}
- inner_shapes = (box_result.get('inner_box') or {}).get('shapes') or []
- outer_shapes = (box_result.get('outer_box') or {}).get('shapes') or []
- return len(inner_shapes) > 0 and len(outer_shapes) > 0
- def recalculate_defect_score(self, score_type: str, json_data: dict):
- center_json_data = json_data["result"]['center_result']
- defect_json_data = json_data["result"]['defect_result']
- imageHeight = json_data["result"].get('imageHeight', 0)
- imageWidth = json_data["result"].get('imageWidth', 0)
- # 正反面类型分类
- if score_type == 'front_ring' or score_type == 'front_coaxial':
- card_aspect = "front"
- else:
- card_aspect = "back"
- if score_type == 'front_ring' or score_type == 'back_ring':
- card_light_type = "ring"
- else:
- card_light_type = "coaxial"
- # 环光重算依赖 center_result 的内外框; 若缺失(如同轴光/StitchFusion 数据),
- # 自动降级为同轴光面缺陷重算, 避免 list index out of range。
- if card_light_type == 'ring' and not self._has_valid_center_box(center_json_data):
- logger.warning("score_type 为环光但 center_result 无有效内外框, 自动降级为同轴光(coaxial)面缺陷重算")
- card_light_type = "coaxial"
- logger.info("开始进行缺陷信息重计算")
- defect_data = self.defect_service.re_inference_from_json(card_light_type=card_light_type,
- center_json=center_json_data,
- defect_json=defect_json_data)
- logger.info("开始重新计算分数")
- if card_light_type == 'ring':
- logger.info("开始进行居中信息重计算")
- center_data = self.defect_service.re_inference_from_json(card_light_type="center",
- center_json=center_json_data,
- defect_json=defect_json_data)
- center_score_data = self.card_scorer.calculate_centering_score(card_aspect, center_data, True)
- # 计算角, 边, 面的分数, 会把分数写入json, 然后传入刚写好的, 继续写边的分数
- logger.info("开始重新计算:边角面")
- defect_data = self.card_scorer.calculate_defect_score('corner', card_aspect, card_light_type,
- defect_data, True)
- defect_data = self.card_scorer.calculate_defect_score('edge', card_aspect, card_light_type,
- defect_data, True)
- defect_score_data = self.card_scorer.calculate_defect_score('face', card_aspect, card_light_type,
- defect_data, True)
- elif card_light_type == 'coaxial':
- # 居中
- center_score_data = {}
- # 同轴光照片只计算面缺陷
- logger.info("开始重新计算:面")
- defect_score_data = self.card_scorer.calculate_defect_score('face', card_aspect, card_light_type,
- defect_data, True)
- else:
- return {}
- result_json = self.card_scorer.formate_one_card_result(center_score_data, defect_score_data,
- card_light_type=card_light_type,
- card_aspect=card_aspect,
- imageHeight=imageHeight,
- imageWidth=imageWidth)
- temp_score_json_path = settings.TEMP_WORK_DIR / f're_{score_type}_score.json'
- with open(temp_score_json_path, 'w', encoding='utf-8') as f:
- json.dump(result_json, f, ensure_ascii=False, indent=2)
- logger.info("分数推理完成 ")
- return result_json
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