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Feeding_control_system/vision/resize_tuili_image_main.py

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import os
from pathlib import Path
import cv2
import numpy as np
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:
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
if total > 0:
score = (w1 * p1 + w2 * p2) / total
else:
score = 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=0.4):
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})")
# class1/class2 使用加权得分
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
# ---------------------------
# 实时视频流推理函数
# ---------------------------
def real_time_inference(rtsp_url, model_path, roi_file, target_size=640, threshold=0.4):
"""
从RTSP流实时推理
:param rtsp_url: RTSP流URL
:param model_path: 模型路径
:param roi_file: ROI文件路径
:param target_size: 目标尺寸
:param threshold: 分类阈值
"""
# 加载模型
model = YOLO(model_path)
# 加载ROI
rois = load_global_rois(roi_file)
if not rois:
print("❌ 没有有效 ROI退出")
return
# 打开RTSP流
cap = cv2.VideoCapture(rtsp_url)
if not cap.isOpened():
print(f"❌ 无法打开视频流: {rtsp_url}")
return
print(f"✅ 成功连接到视频流: {rtsp_url}")
print("'q' 键退出,按 's' 键保存当前帧")
frame_count = 0
while True:
ret, frame = cap.read()
if not ret:
print("❌ 无法读取帧,可能连接已断开")
break
frame_count += 1
print(f"\n处理第 {frame_count}")
try:
# 裁剪并调整ROI
crops = crop_and_resize(frame, rois, target_size)
for roi_resized, roi_idx in crops:
final_class, score, p1, p2 = classify_image_weighted(roi_resized, model, threshold=threshold)
print(f"ROI {roi_idx} -> 类别: {final_class}, 加权分数: {score:.2f}, "
f"class1 置信度: {p1:.2f}, class2 置信度: {p2:.2f}")
# 判断是否溢料
if "大堆料" in final_class or "浇筑满" in final_class:
print(f"🚨 检测到溢料: ROI {roi_idx} - {final_class}")
# 可视化(可选)
cv2.imshow(f'ROI {roi_idx}', roi_resized)
# 显示原始帧
cv2.imshow('Original Frame', frame)
except Exception as e:
print(f"处理帧时出错: {e}")
continue
# 键盘控制
key = cv2.waitKey(1) & 0xFF
if key == ord('q'): # 按q退出
break
elif key == ord('s'): # 按s保存当前帧
cv2.imwrite(f"frame_{frame_count}.jpg", frame)
print(f"保存帧到 frame_{frame_count}.jpg")
# 清理资源
cap.release()
cv2.destroyAllWindows()
print("✅ 视频流处理结束")
# ---------------------------
# 主函数 - 实时推理示例
# ---------------------------
# if __name__ == "__main__":
# # RTSP流URL
# rtsp_url = "rtsp://admin:XJ123456@192.168.1.51:554/streaming/channels/101"
#
# # 配置参数
# model_path = r"models/overflow.pt"
# roi_file = r"./roi_coordinates/1_rois.txt"
# target_size = 640
# threshold = 0.4
#
# print("开始实时视频流推理...")
# real_time_inference(rtsp_url, model_path, roi_file, target_size, threshold)