| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210 |
- import cv2
- import os
- import time
- from pathlib import Path
- import re
- from tqdm import tqdm
- import concurrent.futures
- from fry_project_classes.stitch_img_template_match import ImageStitcherTemplateMatch
- def natural_sort_key(s):
- return [int(text) if text.isdigit() else text.lower() for text in re.split(r'(\d+)', str(s))]
- # --- 新增:用于并行处理的"任务单元"函数 ---
- def stitch_single_row(row_index, row_image_paths, stitch_params):
- """
- 负责拼接单一一行的图片。这个函数将在独立的进程中运行。
- Args:
- row_index (int): 当前行的索引(从0开始),用于日志和调试文件命名。
- row_image_paths (list): 这一行所有图片的路径列表。
- stitch_params (dict): 包含所有拼接所需参数的字典。
- Returns:
- tuple: 包含行索引和拼接完成的图像 (row_index, stitched_row_image)。
- """
- # 从参数字典中解包
- NUM_COLS = len(row_image_paths)
- OUTPUT_DIR = stitch_params['OUTPUT_DIR']
- ESTIMATE_OVERLAP_HORIZONTAL_PIXELS = stitch_params['ESTIMATE_OVERLAP_HORIZONTAL_PIXELS']
- BLEND_TYPE = stitch_params['BLEND_TYPE']
- LIGHT_COMPENSATION = stitch_params['LIGHT_COMPENSATION']
- DEBUG_MODE = stitch_params['DEBUG_MODE']
- # 加载行的第一张图片
- current_row_image = cv2.imread(str(row_image_paths[0]))
- if current_row_image is None:
- print(f"错误: 无法读取图片 {row_image_paths[0]}")
- return row_index, None
- # 依次将该行的后续图片拼接到右侧
- for j in range(1, NUM_COLS):
- stitcher_h = ImageStitcherTemplateMatch(
- estimate_overlap_pixels=ESTIMATE_OVERLAP_HORIZONTAL_PIXELS,
- stitch_type="horizontal",
- blend_type=BLEND_TYPE,
- light_uniformity_compensation_enabled=LIGHT_COMPENSATION,
- light_uniformity_compensation_width=30,
- debug=DEBUG_MODE,
- # 注意调试目录的命名,确保不同进程不会写入同一个文件夹
- debug_dir=str(OUTPUT_DIR / f'debug_h_row{row_index + 1}_col{j}vs{j + 1}')
- )
- next_image = cv2.imread(str(row_image_paths[j]))
- if next_image is None:
- print(f"错误: 无法读取图片 {row_image_paths[j]}")
- # 如果中间一张图片读取失败,返回当前已拼接的部分
- return row_index, current_row_image
- current_row_image = stitcher_h.stitch_main(current_row_image, next_image)
- # 返回拼接结果和行索引,以便主进程能按正确顺序排列
- return row_index, current_row_image
- # --- 优化后的主拼接函数 ---
- def stitch_img(IMAGE_DIR, OUTPUT_DIR, NUM_COLS: int, NUM_ROWS: int,
- ESTIMATE_OVERLAP_HORIZONTAL_PIXELS: int, ESTIMATE_OVERLAP_VERTICAL_PIXELS: int,
- BLEND_TYPE: str, LIGHT_COMPENSATION: bool,
- DEBUG_MODE: bool):
- OUTPUT_DIR.mkdir(exist_ok=True)
- print("--- 图像拼接开始 ---")
- print(f"配置: {NUM_ROWS}行 x {NUM_COLS}列")
- print(f"图片目录: {IMAGE_DIR}")
- print(f"输出目录: {OUTPUT_DIR}")
- print(f"水平重叠预估: {ESTIMATE_OVERLAP_HORIZONTAL_PIXELS}px, 垂直重叠预估: {ESTIMATE_OVERLAP_VERTICAL_PIXELS}px")
- print(f"融合模式: {BLEND_TYPE}, 光照补偿: {'启用' if LIGHT_COMPENSATION else '禁用'}")
- # --- 2. 加载并排序图片 ---
- image_paths = sorted(list(IMAGE_DIR.glob("*.jpg")), key=natural_sort_key)
- if len(image_paths) != NUM_COLS * NUM_ROWS:
- print(f"错误: 找到 {len(image_paths)} 张图片, 但预期需要 {NUM_COLS * NUM_ROWS} 张。")
- return
- # --- 3. 阶段一:并行水平拼接每一行 (核心优化点) ---
- print("\n--- 阶段一: 并行水平拼接每一行 ---")
- # 准备传递给每个进程的参数
- stitch_params = {
- 'OUTPUT_DIR': OUTPUT_DIR,
- 'ESTIMATE_OVERLAP_HORIZONTAL_PIXELS': ESTIMATE_OVERLAP_HORIZONTAL_PIXELS,
- 'BLEND_TYPE': BLEND_TYPE,
- 'LIGHT_COMPENSATION': LIGHT_COMPENSATION,
- 'DEBUG_MODE': DEBUG_MODE
- }
- stitched_rows = [None] * NUM_ROWS # 预先分配列表,用于按顺序存放结果
- # 使用进程池执行器
- with concurrent.futures.ProcessPoolExecutor() as executor:
- # 提交所有行的拼接任务
- futures = []
- for i in range(NUM_ROWS):
- row_start_index = i * NUM_COLS
- row_image_paths = image_paths[row_start_index: row_start_index + NUM_COLS]
- # 提交任务到进程池
- future = executor.submit(stitch_single_row, i, row_image_paths, stitch_params)
- futures.append(future)
- # 使用tqdm来显示进度条,并收集结果
- # as_completed会在任务完成时立即返回,这比直接等待所有任务更具响应性
- for future in tqdm(concurrent.futures.as_completed(futures), total=NUM_ROWS, desc="处理行"):
- try:
- row_index, result_image = future.result()
- if result_image is not None:
- stitched_rows[row_index] = result_image
- # 保存拼接好的行
- row_output_path = OUTPUT_DIR / f"stitched_row_{row_index + 1}.jpg"
- cv2.imwrite(str(row_output_path), result_image)
- tqdm.write(f"第 {row_index + 1} 行拼接完成, 已保存至 {row_output_path}")
- else:
- tqdm.write(f"第 {row_index + 1} 行拼接失败。")
- except Exception as exc:
- tqdm.write(f"一个行拼接任务生成了异常: {exc}")
- # 检查是否有失败的行
- if any(row is None for row in stitched_rows):
- print("错误: 存在拼接失败的行,无法进行垂直拼接。")
- return
- # --- 4. 阶段二:垂直拼接所有行 (这部分保持串行) ---
- print("\n--- 阶段二: 垂直拼接所有行 ---")
- final_image = stitched_rows[0]
- for i in tqdm(range(1, NUM_ROWS), desc="拼接行"):
- stitcher_v = ImageStitcherTemplateMatch(
- estimate_overlap_pixels=ESTIMATE_OVERLAP_VERTICAL_PIXELS,
- stitch_type="vertical",
- blend_type=BLEND_TYPE,
- light_uniformity_compensation_enabled=LIGHT_COMPENSATION,
- light_uniformity_compensation_width=30,
- debug=DEBUG_MODE,
- debug_dir=str(OUTPUT_DIR / f'debug_v_row{i}vs{i + 1}')
- )
- next_row_image = stitched_rows[i]
- final_image = stitcher_v.stitch_main(final_image, next_row_image)
- # --- 5. 保存最终结果 ---
- final_output_path = OUTPUT_DIR / "final_stitched_image.jpg"
- cv2.imwrite(str(final_output_path), final_image)
- print("\n--- 所有拼接任务完成!---")
- print(f"最终的全景图已保存至: {final_output_path}")
- def main():
- """
- 主执行函数
- """
- # --- 1. 配置参数 ---
- # 图片和输出目录设置
- IMAGE_DIR = Path(r"C:\Code\ML\Project\StitchImageServer\temp\Input\_250801_1146_0034")
- # 拼图网格设置
- NUM_COLS = 4
- NUM_ROWS = 6
- # 预估重叠像素
- ESTIMATE_OVERLAP_HORIZONTAL_PIXELS = 405
- ESTIMATE_OVERLAP_VERTICAL_PIXELS = 440
- # 融合模式列表
- # 默认 half_importance_add_weight
- blend_type_list = ["half_importance_add_weight",
- "half_importance_global_brightness", "half_importance_partial_brightness",
- "blend_half_importance_partial_HV", "blend_half_importance_partial_SV",
- "blend_half_importance_partial_HSV", "blend_half_importance_partial_brightness_add_weight"]
- LIGHT_COMPENSATION = True
- DEBUG_MODE = False
- for i, BLEND_TYPE in enumerate(blend_type_list):
- base_dir_path = r"C:\Code\ML\Project\StitchImageServer\temp\output"
- img_dir_name = f"{i}_{BLEND_TYPE}"
- OUTPUT_DIR = Path(os.path.join(base_dir_path, img_dir_name))
- one_img_time = time.time()
- stitch_img(IMAGE_DIR=IMAGE_DIR, OUTPUT_DIR=OUTPUT_DIR, NUM_COLS=NUM_COLS, NUM_ROWS=NUM_ROWS,
- ESTIMATE_OVERLAP_HORIZONTAL_PIXELS=ESTIMATE_OVERLAP_HORIZONTAL_PIXELS,
- ESTIMATE_OVERLAP_VERTICAL_PIXELS=ESTIMATE_OVERLAP_VERTICAL_PIXELS,
- BLEND_TYPE=BLEND_TYPE, LIGHT_COMPENSATION=LIGHT_COMPENSATION,
- DEBUG_MODE=DEBUG_MODE)
- print()
- print("_" * 20)
- print(f"单个用时: {img_dir_name}: {time.time() - one_img_time}")
- print("_" * 20)
- if __name__ == '__main__':
- start_time = time.time()
- main()
- end_time = time.time()
- print(f"\n总耗时: {end_time - start_time:.2f} 秒")
|