整合去雾网页工具

This commit is contained in:
admin
2026-06-10 17:42:11 +08:00
commit 6db15ebc3f
101 changed files with 10167 additions and 0 deletions

View File

@@ -0,0 +1,156 @@
import numpy as np
from PIL import Image
from skimage import color
from scipy.optimize import minimize
import os
import time
from concurrent.futures import ProcessPoolExecutor, as_completed
# ================= 配置区域 =================
max_workers = 8 # 【并行】 并行处理的进程数 (建议设为 CPU 核心数,如 4, 8, 16)
# 图片后缀
prefix = "_AOD-Net" # "_10_0.2_result" # "_result"
# 输入文件夹 (带 prefix 后缀的图片)
src_dir = "AOD-Net"
# 参考文件夹 (GT/Ground Truth无 prefix 后缀)
ref_dir = "去雾图像-北航合作-雾图"
# 输出文件夹
out_dir = "AOD-Net+后处理"
# ===========================================
# 尝试导入 tqdm如果没安装则定义一个简单的占位符
try:
from tqdm import tqdm
except ImportError:
def tqdm(iterable, **kwargs):
return iterable
def process_single_image(filename, src_folder, ref_folder, output_folder, prefix=prefix):
"""
处理单张图片的函数,用于并行调用
"""
source_path = os.path.join(src_folder, filename)
try:
# --- 寻找对应的参考图 ---
# 逻辑:去除文件名后缀 "prefix"
name_no_ext, ext = os.path.splitext(filename)
if name_no_ext.endswith(prefix):
ref_name_no_ext = name_no_ext[:-len(prefix)] # 去掉最后n个字符 (prefix)
else:
ref_name_no_ext = name_no_ext
ref_filename = ref_name_no_ext + ext
ref_path = os.path.join(ref_folder, ref_filename)
# 检查参考图是否存在
if not os.path.exists(ref_path):
return f"[跳过] 找不到参考图: {ref_filename} (对应: {filename})"
# --- 读取图片并归一化 ---
img_src_pil = Image.open(source_path).convert('RGB')
img_src = np.array(img_src_pil) / 255.0
img_ref_pil = Image.open(ref_path).convert('RGB')
# 确保参考图尺寸和源图一致
if img_src_pil.size != img_ref_pil.size:
img_ref_pil = img_ref_pil.resize(img_src_pil.size, Image.BILINEAR)
img_ref = np.array(img_ref_pil) / 255.0
# --- 转换到 HSV ---
hsv_src = color.rgb2hsv(img_src)
hsv_ref = color.rgb2hsv(img_ref)
# --- 定义损失函数 ---
# 注意在多进程中loss_function 必须定义在 worker 内部才能访问到 hsv_src/ref
def loss_function(params):
ks, kv = params
adj_s = np.clip(hsv_src[:,:,1] * ks, 0, 1)
adj_v = np.clip(hsv_src[:,:,2] * kv, 0, 1)
loss_s = np.mean((adj_s - hsv_ref[:,:,1])**2)
loss_v = np.mean((adj_v - hsv_ref[:,:,2])**2)
return loss_s + loss_v
# --- 开始优化 ---
res = minimize(loss_function, [1.0, 1.0], method='Nelder-Mead', tol=1e-4)
best_s, best_v = res.x
s_percent = int(best_s * 100)
v_percent = int(best_v * 100)
# --- 应用最佳参数 ---
hsv_new = hsv_src.copy()
hsv_new[:, :, 1] = np.clip(hsv_new[:, :, 1] * best_s, 0, 1)
hsv_new[:, :, 2] = np.clip(hsv_new[:, :, 2] * best_v, 0, 1)
# --- 转回 RGB 并保存 ---
img_result_rgb = color.hsv2rgb(hsv_new)
img_save = Image.fromarray((img_result_rgb * 255).astype(np.uint8))
new_filename = f"{name_no_ext}_S_{s_percent}_V_{v_percent}{ext}"
save_path = os.path.join(output_folder, new_filename)
img_save.save(save_path)
return f"OK: {filename} -> S={s_percent}%, V={v_percent}%"
except Exception as e:
return f"[错误] 处理文件 {filename} 时出错: {str(e)}"
def calculate_and_process_batch_parallel(src_folder, ref_folder, output_folder, max_workers=None):
# 1. 确保输出目录存在
if not os.path.exists(output_folder):
os.makedirs(output_folder)
print(f"已创建输出目录: {output_folder}")
# 2. 获取源文件夹内所有图片文件
valid_extensions = ('.png', '.jpg', '.jpeg', '.bmp', '.tif')
file_list = [f for f in os.listdir(src_folder) if f.lower().endswith(valid_extensions)]
total_files = len(file_list)
print(f"共发现 {total_files} 张图片,准备开始并行处理 (进程数: {max_workers if max_workers else '自动'})...\n")
# 3. 并行处理
results = []
# ProcessPoolExecutor 自动管理进程池
# max_workers=None 意味着使用 CPU 核心数
with ProcessPoolExecutor(max_workers=max_workers) as executor:
# 提交所有任务
future_to_file = {
executor.submit(process_single_image, filename, src_folder, ref_folder, output_folder): filename
for filename in file_list
}
# 使用 tqdm 显示进度条as_completed 会在任何一个任务完成时yield
pbar = tqdm(total=total_files, unit="img")
for future in as_completed(future_to_file):
result_msg = future.result()
pbar.update(1)
# 如果是错误或跳过信息打印出来如果是OK只更新进度条不刷屏可选
if not result_msg.startswith("OK"):
tqdm.write(result_msg) # 使用 tqdm.write 防止打断进度条
# else:
# tqdm.write(result_msg) # 如果想看每张图的详细结果,取消注释这行
pbar.close()
print("\n" + "="*30)
print("所有处理已完成。")
# 执行
if __name__ == "__main__":
# Windows 下使用多进程必须放在 if __name__ == "__main__": 之下
if os.path.exists(src_dir) and os.path.exists(ref_dir):
# max_workers 可以手动指定,例如 max_workers=4。如果不填则默认跑满 CPU。
calculate_and_process_batch_parallel(src_dir, ref_dir, out_dir, max_workers = max_workers)
else:
print("错误: 找不到输入文件夹或参考文件夹,请检查路径。")