188 lines
5.8 KiB
Python
Executable File
188 lines
5.8 KiB
Python
Executable File
"""
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快速测试脚本 - 自动查找并可视化第一个有效样本
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用途:自动从验证集中查找一个带标签的样本并进行可视化,用于测试脚本功能
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使用方法:
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python scripts_for_gt/test_visualization.py --data data/mono3d.yaml
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"""
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import argparse
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import sys
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from pathlib import Path
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import yaml
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# Add project root to path
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FILE = Path(__file__).resolve()
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ROOT = FILE.parents[1]
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if str(ROOT) not in sys.path:
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sys.path.append(str(ROOT))
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from visualize_single_frame import visualize_single_frame
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def find_first_valid_sample(data_yaml_path):
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"""从数据集配置中查找第一个有效样本
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Args:
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data_yaml_path: 数据集YAML配置文件路径
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Returns:
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tuple: (image_path, label_path, calib_path) 或 None
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"""
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# 读取数据集配置
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with open(data_yaml_path, 'r') as f:
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data = yaml.safe_load(f)
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# 获取验证集路径
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val_path = data.get('val')
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if val_path is None:
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print("错误:数据集配置中未找到'val'字段")
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return None
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# 如果是相对路径,相对于yaml文件的位置
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val_path = Path(val_path)
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if not val_path.is_absolute():
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val_path = Path(data_yaml_path).parent / val_path
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# 读取验证集图像列表
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if val_path.is_file():
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# 如果是文件列表
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with open(val_path, 'r') as f:
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image_files = [line.strip() for line in f.readlines() if line.strip()]
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else:
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# 如果是目录
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image_files = list(val_path.glob("**/*.jpg"))
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image_files.extend(list(val_path.glob("**/*.png")))
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print(f"在验证集中找到 {len(image_files)} 个图像文件")
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# 遍历查找第一个有标签的样本
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for image_path in image_files:
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image_rel_path = Path(image_path)
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image_path = val_path.parent / image_rel_path if not image_rel_path.is_absolute() else image_rel_path
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# 推断标签路径
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label_path = Path(str(image_path).replace('/images/', '/labels/').replace('.jpg', '.txt').replace('.png', '.txt'))
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# 推断标定路径
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calib_path = image_path.parent.parent / 'calib' / 'L2_calib' / 'camera4.json'
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if label_path.exists():
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print(f"\n找到有效样本:")
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print(f" 图像: {image_path}")
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print(f" 标签: {label_path}")
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print(f" 标定: {calib_path if calib_path.exists() else '未找到'}")
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return str(image_path), str(label_path), str(calib_path) if calib_path.exists() else None
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print("错误:未找到有效样本")
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return None
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def test_visualization(data_yaml_path, output_dir="./test_gt_viz", use_roi=True):
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"""测试可视化功能
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Args:
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data_yaml_path: 数据集YAML配置文件路径
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output_dir: 输出目录
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use_roi: 是否使用ROI变换
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"""
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# 读取数据集配置
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with open(data_yaml_path, 'r') as f:
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data = yaml.safe_load(f)
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# 查找第一个有效样本
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result = find_first_valid_sample(data_yaml_path)
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if result is None:
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return
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image_path, label_path, calib_path = result
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# 获取配置参数
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roi = data.get('roi') # [width, height]
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virtual_fx = data.get('virtual_fx')
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ori_img_size = data.get('ori_img_size') # [width, height]
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print(f"\n数据集配置:")
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print(f" ROI: {roi}")
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print(f" 虚拟焦距: {virtual_fx}")
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print(f" 原始图像尺寸: {ori_img_size}")
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# 类别名称
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names = {
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0: "vehicle",
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1: "pedestrian",
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2: "bicycle",
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3: "rider",
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13: "tricycle",
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}
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print(f"\n开始可视化...")
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try:
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# 测试1:不使用ROI
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print("\n=== 测试1:原始图像可视化(不使用ROI)===")
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visualize_single_frame(
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image_path=image_path,
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label_path=label_path,
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output_dir=f"{output_dir}/no_roi",
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calib_path=calib_path,
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roi_size=None,
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virtual_fx=None,
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ori_img_size=None,
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names=names,
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)
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print("✓ 测试1完成")
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# 测试2:使用ROI(如果配置了)
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if use_roi and roi is not None and virtual_fx is not None:
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print("\n=== 测试2:ROI变换后可视化 ===")
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visualize_single_frame(
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image_path=image_path,
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label_path=label_path,
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output_dir=f"{output_dir}/with_roi",
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calib_path=calib_path,
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roi_size=tuple(roi),
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virtual_fx=virtual_fx,
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ori_img_size=tuple(ori_img_size) if ori_img_size else None,
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names=names,
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)
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print("✓ 测试2完成")
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print(f"\n✅ 所有测试完成!结果保存在: {output_dir}")
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print("\n生成的文件:")
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output_path = Path(output_dir)
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for file in sorted(output_path.rglob("*.jpg")):
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print(f" {file.relative_to(output_path)}")
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except Exception as e:
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print(f"\n❌ 测试失败: {e}")
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import traceback
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traceback.print_exc()
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def parse_args():
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parser = argparse.ArgumentParser(description="快速测试真值可视化功能")
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parser.add_argument("--data", type=str, default="data/mono3d.yaml",
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help="数据集YAML配置文件")
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parser.add_argument("--output", type=str, default="./test_gt_viz",
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help="输出目录")
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parser.add_argument("--no-roi", action="store_true",
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help="不测试ROI变换")
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return parser.parse_args()
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def main():
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args = parse_args()
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test_visualization(
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data_yaml_path=args.data,
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output_dir=args.output,
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use_roi=not args.no_roi,
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)
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if __name__ == "__main__":
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main()
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