gpcv_incontext_bench / sample_box.py
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import json
import random
from pathlib import Path
from collections import defaultdict
def sample_prompt_boxes(bboxes, k):
"""
从 bboxes 中随机抽取 k 个作为 prompt
如果 bboxes 数量 < k,则全部返回
"""
if len(bboxes) <= k:
return bboxes.copy(), []
else:
# 随机抽取 k 个作为 prompt
prompt_indices = random.sample(range(len(bboxes)), k)
prompt_boxes = [bboxes[i] for i in prompt_indices]
# 剩余的作为 target(可选)
target_boxes = [bboxes[i] for i in range(len(bboxes)) if i not in prompt_indices]
return prompt_boxes, target_boxes
def format_bbox_for_prompt(bbox):
"""
将 bbox 格式化为字符串,用于 prompt
格式: [x1, y1, x2, y2]
"""
return f"[{bbox[0]}, {bbox[1]}, {bbox[2]}, {bbox[3]}]"
def process_jsonl_for_fewshot(input_jsonl_path, output_dir, k_values=[1, 2, 4]):
"""
处理原始 JSONL,生成 few-shot 格式的数据
Args:
input_jsonl_path: 输入的 JSONL 文件路径
output_dir: 输出目录
k_values: few-shot 的 k 值列表
"""
output_dir = Path(output_dir)
output_dir.mkdir(parents=True, exist_ok=True)
# 为每个 k 值创建输出文件
output_files = {}
stats = {k: {'total_images': 0, 'total_prompts': 0, 'insufficient_count': 0}
for k in k_values}
for k in k_values:
output_files[k] = open(output_dir / f"fewshot_k{k}.jsonl", 'w', encoding='utf-8')
# 读取原始 JSONL
with open(input_jsonl_path, 'r', encoding='utf-8') as f:
for line_num, line in enumerate(f, 1):
data = json.loads(line.strip())
image_path = data['image']
image_rel_path = data.get('image_path', image_path)
width = data['width']
height = data['height']
bboxes = data['bboxes']
# 为每个 k 值生成数据
for k in k_values:
# 随机抽取 prompt boxes
prompt_boxes, remaining_boxes = sample_prompt_boxes(bboxes, k)
# 统计信息
stats[k]['total_images'] += 1
stats[k]['total_prompts'] += len(prompt_boxes)
if len(bboxes) < k:
stats[k]['insufficient_count'] += 1
# 构建 few-shot 数据结构
fewshot_data = {
"image": image_path,
"image_path": image_rel_path,
"width": width,
"height": height,
"k": k, # 记录 k 值
"total_gt_boxes": len(bboxes),
"prompt_boxes": prompt_boxes, # 用于 few-shot 的框
"all_boxes": bboxes, # 所有 GT 框(用于评估)
"prompt_boxes_count": len(prompt_boxes),
"remaining_boxes_count": len(remaining_boxes)
}
# 写入对应的文件
output_files[k].write(json.dumps(fewshot_data, ensure_ascii=False) + '\n')
# 关闭所有文件
for f in output_files.values():
f.close()
# 打印统计信息
print("\n" + "="*60)
print("Few-shot 数据生成完成!")
print("="*60)
for k in k_values:
print(f"\nK={k}:")
print(f" - 总图片数: {stats[k]['total_images']}")
print(f" - 总 prompt 框数: {stats[k]['total_prompts']}")
print(f" - 平均 prompt 框数: {stats[k]['total_prompts']/stats[k]['total_images']:.2f}")
print(f" - 框数不足 k 的图片数: {stats[k]['insufficient_count']}")
print(f" - 输出文件: {output_dir}/fewshot_k{k}.jsonl")
return stats
def convert_to_conversation_format(fewshot_jsonl_path, output_conversation_path):
"""
将 few-shot JSONL 转换为对话格式
"""
with open(fewshot_jsonl_path, 'r', encoding='utf-8') as infile, \
open(output_conversation_path, 'w', encoding='utf-8') as outfile:
for line in infile:
data = json.loads(line.strip())
# 格式化 prompt boxes
prompt_boxes_str = ", ".join([format_bbox_for_prompt(box['bbox']) for box in data['prompt_boxes']])
# 构建对话
conversation = {
"image": data['image'],
"conversations": [
{
"from": "human",
"value": f"Please detect all objects belonging to the same category as the boxes [{prompt_boxes_str}] in the image."
},
{
"from": "gpt",
"value": json.dumps({
"category": data['all_boxes'][0]['category'] if data['all_boxes'] else "unknown",
"bboxes": [box['bbox'] for box in data['all_boxes']]
})
}
],
"metadata": {
"k": data['k'],
"total_gt_boxes": data['total_gt_boxes'],
"prompt_boxes_count": data['prompt_boxes_count']
}
}
outfile.write(json.dumps(conversation, ensure_ascii=False) + '\n')
print(f"对话格式已保存到: {output_conversation_path}")
def main():
# 输入文件路径
input_jsonl = "/home/disk2/hjl/ICL_QWEN/ICL_benchmark/dataset.jsonl"
# 输出目录
output_dir = "/home/disk2/hjl/ICL_QWEN/ICL_benchmark/fewshot_data"
# 生成 few-shot JSONL 文件(k=1,2,4)
print("步骤1: 生成 few-shot 结构化数据...")
stats = process_jsonl_for_fewshot(input_jsonl, output_dir, k_values=[1, 2, 4])
# 可选:转换为对话格式
print("\n步骤2: 转换为对话格式...")
for k in [1, 2, 4]:
fewshot_file = output_dir / f"fewshot_k{k}.jsonl"
conversation_file = output_dir / f"conversation_k{k}.jsonl"
if fewshot_file.exists():
convert_to_conversation_format(fewshot_file, conversation_file)
print("\n所有处理完成!")
if __name__ == "__main__":
# 设置随机种子,保证可重复性
random.seed(42)
main()