import os from pathlib import Path import cv2 import numpy as np import shutil # ⭐ 新增 from ultralytics import YOLO # --------------------------- # 类别映射 # --------------------------- CLASS_NAMES = { 0: "未堆料", 1: "小堆料", 2: "大堆料", 3: "未浇筑满", 4: "浇筑满" } # --------------------------- # 加载 ROI 列表 # --------------------------- def load_global_rois(txt_path): rois = [] if not os.path.exists(txt_path): print(f"❌ ROI 文件不存在: {txt_path}") return rois with open(txt_path, 'r') as f: for line in f: s = line.strip() if s: try: x, y, w, h = map(int, s.split(',')) rois.append((x, y, w, h)) except Exception as e: print(f"⚠️ 无法解析 ROI 行 '{s}': {e}") return rois # --------------------------- # 裁剪并 resize ROI # --------------------------- def crop_and_resize(img, rois, target_size=640): crops = [] h_img, w_img = img.shape[:2] for i, (x, y, w, h) in enumerate(rois): if x < 0 or y < 0 or x + w > w_img or y + h > h_img: print(f"⚠️ ROI 超出图像边界,跳过: ({x}, {y}, {w}, {h})") continue roi = img[y:y+h, x:x+w] roi_resized = cv2.resize(roi, (target_size, target_size), interpolation=cv2.INTER_AREA) crops.append((roi_resized, i)) return crops # --------------------------- # class1/class2 加权判断 # --------------------------- def weighted_small_large(pred_probs, threshold=0.4, w1=0.3, w2=0.7): p1 = float(pred_probs[1]) p2 = float(pred_probs[2]) total = p1 + p2 score = (w1 * p1 + w2 * p2) / total if total > 0 else 0.0 final_class = "大堆料" if score >= threshold else "小堆料" return final_class, score, p1, p2 # --------------------------- # 单张图片推理函数 # --------------------------- def classify_image_weighted(image, model, threshold=0.5): results = model(image) pred_probs = results[0].probs.data.cpu().numpy().flatten() class_id = int(pred_probs.argmax()) confidence = float(pred_probs[class_id]) class_name = CLASS_NAMES.get(class_id, f"未知类别({class_id})") if class_id in [1, 2]: final_class, score, p1, p2 = weighted_small_large(pred_probs, threshold=threshold) else: final_class = class_name score = confidence p1 = float(pred_probs[1]) p2 = float(pred_probs[2]) return final_class, score, p1, p2 # --------------------------- # 批量推理主函数(改为移动原图) # --------------------------- def batch_classify_images(model_path, input_folder, output_root, roi_file, target_size=640, threshold=0.5): model = YOLO(model_path) output_root = Path(output_root) output_root.mkdir(parents=True, exist_ok=True) class_dirs = {} for name in CLASS_NAMES.values(): d = output_root / name d.mkdir(exist_ok=True) class_dirs[name] = d rois = load_global_rois(roi_file) if not rois: print("❌ 没有有效 ROI,退出程序") return severity_rank = { "未堆料": 0, "大堆料": 1, "小堆料": 2, "未浇筑满": 3, "浇筑满": 4 } input_folder = Path(input_folder) image_extensions = {'.jpg', '.jpeg', '.png', '.bmp', '.tif', '.tiff'} processed_count = 0 for img_path in input_folder.glob("*.*"): if img_path.suffix.lower() not in image_extensions: continue try: print(f"\n处理: {img_path.name}") img = cv2.imread(str(img_path)) if img is None: print(f"无法读取图像: {img_path.name}") continue crops = crop_and_resize(img, rois, target_size) if not crops: print(f"无有效 ROI 裁剪区域: {img_path.name}") continue detected_classes = [] for roi_img, roi_idx in crops: final_class, score, p1, p2 = classify_image_weighted(roi_img, model, threshold=threshold) detected_classes.append(final_class) print(f" ROI{roi_idx}: {final_class} (score={score:.2f})") most_severe_class = min(detected_classes, key=lambda x: severity_rank.get(x, 99)) # ----------------------------- # ⭐ 修改:保存 → 移动原文件 # ----------------------------- dst_path = class_dirs[most_severe_class] / img_path.name shutil.move(str(img_path), str(dst_path)) print(f"已移动 -> [{most_severe_class}] {dst_path}") processed_count += 1 except Exception as e: print(f"❌ 处理失败 {img_path.name}: {e}") print(f"\n🎉 批量处理完成!共处理 {processed_count} 张图像。") # 主程序入口 if __name__ == "__main__": model_path = "/home/hx/yolo/ultralytics_yolo11-main/runs/train/cls_resize/exp_cls13_new/weights/best.pt" input_folder = "/media/hx/04e879fa-d697-4b02-ac7e-a4148876ebb0/dataset/1/1226c01" output_root = "/media/hx/04e879fa-d697-4b02-ac7e-a4148876ebb0/dataset/1/1226c01" roi_file = "./roi_coordinates/3.txt" target_size = 640 threshold = 0.4 batch_classify_images( model_path=model_path, input_folder=input_folder, output_root=output_root, roi_file=roi_file, target_size=target_size, threshold=threshold )