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-import os
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-import sys
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-import time
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-import json
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-import argparse
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-import traceback
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-from pathlib import Path
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-from typing import List, Dict, Any
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-
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-from tqdm import tqdm
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-from dotenv import load_dotenv
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-load_dotenv(override=True)
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-
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-from paddlex import create_model
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-
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-# 复用你现有的输入收集与PDF转图像逻辑
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-from ppstructurev3_utils import get_input_files
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-
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-# 定义paddlex模型名称列表
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-MODEL_LIST = [
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- # OCR文本检测模型
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- {"model_name": "PP-OCRv5_mobile_det", "description": "轻量级OCR文本检测模型,适用于移动端部署"},
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- {"model_name": "PP-OCRv5_server_det", "description": "PP-OCRv5_rec 是新一代文本识别模型。该模型致力于以单一模型高效、精准地支持简体中文、繁体中文、英文、日文四种主要语言,以及手写、竖版、拼音、生僻字等复杂文本场景的识别。在保持识别效果的同时,兼顾推理速度和模型鲁棒性,为各种场景下的文档理解提供高效、精准的技术支撑。"},
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-
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- # OCR文本识别模型
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- {"model_name": "PP-OCRv5_mobile_rec", "description": "轻量级OCR文本识别模型,适用于移动端部署"},
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- {"model_name": "PP-OCRv5_server_rec", "description": "服务端OCR文本识别模型,高精度识别"},
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-
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- # 版面区域检测模型
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- {"model_name": "PP-DocLayout_plus-L", "description": "版面检测模型,包含20个常见的类别:文档标题、段落标题、文本、页码、摘要、目录、参考文献、脚注、页眉、页脚、算法、公式、公式编号、图像、表格、图和表标题(图标题、表格标题和图表标题)、印章、图表、侧栏文本和参考文献内容"},
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- {"model_name": "PP-DocBlockLayout", "description": "文档图像版面子模块检测,包含1个 版面区域 类别,能检测多栏的报纸、杂志的每个子文章的文本区域"},
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-
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- # 表格分类模型
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- {"model_name": "PP-LCNet_x1_0_table_cls", "description": "wired_table, wireless_table"},
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-
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- # 表格识别模型
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- {"model_name": "SLANet_plus", "description": "SLANet_plus 是百度飞桨视觉团队自研的表格结构识别模型 SLANet 的增强版。相较于 SLANet,SLANet_plus 对无线表、复杂表格的识别能力得到了大幅提升,并降低了模型对表格定位准确性的敏感度,即使表格定位出现偏移,也能够较准确地进行识别。"},
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- {"model_name": "SLANeXt_wired", "description": "SLANeXt 系列是百度飞桨视觉团队自研的新一代表格结构识别模型。相较于 SLANet 和 SLANet_plus,SLANeXt 专注于对表格结构进行识别,并且对有线表格(wired)和无线表格(wireless)的识别分别训练了专用的权重,对各类型表格的识别能力都得到了明显提高,特别是对有线表格的识别能力得到了大幅提升。"},
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- {"model_name": "SLANeXt_wireless", "description": "SLANeXt 系列是百度飞桨视觉团队自研的新一代表格结构识别模型。相较于 SLANet 和 SLANet_plus,SLANeXt 专注于对表格结构进行识别,并且对有线表格(wired)和无线表格(wireless)的识别分别训练了专用的权重,对各类型表格的识别能力都得到了明显提高,特别是对无线表格的识别能力得到了大幅提升。"},
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-
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- # 表格单元格识别模型
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- {"model_name": "RT-DETR-L_wired_table_cell_det", "description": "有线表格单元格检测模型"},
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- {"model_name": "RT-DETR-L_wireless_table_cell_det", "description": "无线表格单元格检测模型"},
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-
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- # 公式识别模型
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- {"model_name": "PP-FormulaNet_plus-L", "description": "负责将图像中的数学公式转换为可编辑的文本或计算机可识别的格式。该模块的性能直接影响到整个OCR系统的准确性和效率。公式识别模块通常会输出数学公式的 LaTeX 或 MathML 代码"},
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-
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- # 文档图像方向分类模型
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- {"model_name": "PP-LCNet_x1_0_doc_ori", "description": "基于PP-LCNet_x1_0的文档图像分类模型,含有四个类别,即0度,90度,180度,270度"},
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-
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- # 文本图像矫正模型
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- {"model_name": "UVDoc", "description": "针对图像进行几何变换,以纠正图像中的文档扭曲、倾斜、透视变形等问题,以供后续的文本识别进行更加准确"},
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-
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- # 印章检测模型
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- {"model_name": "PP-OCRv4_mobile_seal_det", "description": "PP-OCRv4的移动端印章文本检测模型,效率更高,适合在端侧部署"},
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- {"model_name": "PP-OCRv4_server_seal_det", "description": "PP-OCRv4的服务端印章文本检测模型,精度更高,适合在较好的服务器上部署"},
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-
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-]
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-
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-# 需要字典输入的模型(Doc VLM / 图表到表格)
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-DICT_INPUT_MODELS = {
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- "PP-Chart2Table",
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- "PP-DocBee-2B",
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- "PP-DocBee-7B",
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- "PP-DocBee2-3B",
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-}
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-
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-def init_model(model_name: str, device: str = "gpu:0"):
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- """
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- 初始化单一模型。若不支持device参数则回退到默认构造。
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- """
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- try:
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- model = create_model(model_name=model_name, device=device)
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- except TypeError:
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- model = create_model(model_name=model_name)
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- return model
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-
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-def predict_on_images(
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- model_name: str,
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- image_paths: List[str],
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- output_dir: str,
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- device: str = "gpu:0",
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- batch_size: int = 1,
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- layout_nms: bool = True,
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- query: str = "请将图表转换为表格格式"
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-) -> List[Dict[str, Any]]:
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- """
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- 对一组图片运行任意单一模型,保存可视化与原始结果,并返回汇总信息。
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- """
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- output_base = Path(output_dir).resolve()
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- output_base.mkdir(parents=True, exist_ok=True)
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-
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- model = init_model(model_name, device=device)
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-
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- # 一些检测/版面模型支持 layout_nms
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- predict_kwargs = {}
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- if hasattr(model, "_predictor") and hasattr(model._predictor, "layout_nms"):
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- predict_kwargs["layout_nms"] = layout_nms
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-
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- results_summary: List[Dict[str, Any]] = []
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-
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- with tqdm(total=len(image_paths), desc=f"{model_name} predicting", unit="img",
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- bar_format='{l_bar}{bar}| {n_fmt}/{total_fmt} [{elapsed}<{remaining}, {rate_fmt}]') as pbar:
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- for img_path in image_paths:
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- img_path = str(img_path)
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- # img_name = Path(img_path).stem
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- # img_out_dir = output_base / img_name
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- # img_out_dir.mkdir(parents=True, exist_ok=True)
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-
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- start = time.time()
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- try:
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- # 针对需要字典输入的模型
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- if model_name in DICT_INPUT_MODELS:
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- input_data = {"image": img_path, "query": query}
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- outputs = model.predict(input_data, batch_size=1, **predict_kwargs)
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- else:
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- outputs = model.predict(img_path, batch_size=batch_size, **predict_kwargs)
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-
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- elapsed = time.time() - start
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-
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- # 保存模型输出(可视化与结构化)
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- saved_files = []
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- for i, res in enumerate(outputs):
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- # 子目录区分多结果
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- # sub_dir = img_out_dir / f"res_{i:02d}"
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- # sub_dir.mkdir(parents=True, exist_ok=True)
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- # # 可视化与所有产物
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- # res.save_all(save_path=sub_dir.as_posix())
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- # saved_files.append(sub_dir.as_posix())
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- res.save_all(save_path=output_base.as_posix())
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- saved_files.append(output_base.as_posix())
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-
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- results_summary.append({
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- "image_path": img_path,
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- "success": True,
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- "model_name": model_name,
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- "device": device,
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- "batch_size": batch_size,
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- "layout_nms": layout_nms,
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- "time_sec": elapsed,
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- "saved_paths": saved_files
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- })
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-
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- pbar.update(1)
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- pbar.set_postfix(time=f"{elapsed:.2f}s", ok=len([r for r in results_summary if r['success']]))
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-
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- except Exception as e:
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- elapsed = time.time() - start
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- traceback.print_exc()
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- results_summary.append({
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- "image_path": img_path,
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- "success": False,
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- "model_name": model_name,
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- "device": device,
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- "batch_size": batch_size,
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- "layout_nms": layout_nms,
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- "time_sec": elapsed,
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- "error": str(e)
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- })
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- pbar.update(1)
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- pbar.set_postfix_str("error")
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-
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- return results_summary
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-
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-def save_summary(summary: List[Dict[str, Any]], output_dir: str, model_name: str):
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- out_dir = Path(output_dir).resolve()
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- out_dir.mkdir(parents=True, exist_ok=True)
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- stats = {
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- "model_name": model_name,
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- "total": len(summary),
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- "success": sum(1 for r in summary if r.get("success")),
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- "failed": sum(1 for r in summary if not r.get("success")),
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- "avg_time": (sum(r.get("time_sec", 0) for r in summary) / len(summary)) if summary else 0,
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- "timestamp": time.strftime("%Y-%m-%d %H:%M:%S"),
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- }
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- final = {"stats": stats, "results": summary}
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- out_file = out_dir / f"{model_name}_results.json"
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- with open(out_file, "w", encoding="utf-8") as f:
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- json.dump(final, f, ensure_ascii=False, indent=2)
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- print(f"💾 Summary saved to: {out_file}")
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-
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-def main():
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- parser = argparse.ArgumentParser(description="Run any single PaddleX model on images/PDFs (similar to ppstructurev3_single_process.py)")
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- # 输入源(与 ppstructurev3_single_process 一致)
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- group = parser.add_mutually_exclusive_group(required=True)
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- group.add_argument("--input_file", type=str, help="单个文件(图片或PDF)")
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- group.add_argument("--input_dir", type=str, help="目录(扫描图片或PDF)")
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- group.add_argument("--input_file_list", type=str, help="文件列表(每行一个路径)")
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- group.add_argument("--input_csv", type=str, help="CSV,含 image_path 与 status 列")
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-
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- parser.add_argument("--model_name", type=str, required=True, help="要运行的模型名,如 PP-OCRv5_server_det / PP-DocLayout_plus-L / SLANeXt_wireless 等")
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- parser.add_argument("--output_dir", type=str, required=True, help="输出目录")
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- parser.add_argument("--device", type=str, default="gpu:0", help="设备,如 gpu:0 或 cpu")
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- parser.add_argument("--pdf_dpi", type=int, default=200, help="PDF 转图像的 DPI")
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- parser.add_argument("--batch_size", type=int, default=1, help="预测 batch size(多数单图模型支持)")
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- parser.add_argument("--no_layout_nms", action="store_true", help="关闭 layout_nms(若模型支持)")
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- parser.add_argument("--query", type=str, default="请将图表转换为表格格式", help="仅对需要字典输入的模型生效,如 PP-Chart2Table")
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- parser.add_argument("--test_mode", action="store_true", help="仅处理前 20 个文件")
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-
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- args = parser.parse_args()
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-
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- # 复用 ppstructurev3_utils 的文件收集能力(含PDF转图像)
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- class DummyArgs:
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- input_file = args.input_file
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- input_dir = args.input_dir
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- input_file_list = args.input_file_list
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- input_csv = args.input_csv
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- output_dir = args.output_dir
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- pdf_dpi = args.pdf_dpi
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- test_mode = args.test_mode
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-
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- input_files = get_input_files(DummyArgs)
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- if not input_files:
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- print("❌ No input files found.")
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- return 1
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- if args.test_mode:
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- input_files = input_files[:20]
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- print(f"Test mode: {len(input_files)} files")
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-
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- print(f"🚀 Model: {args.model_name} | Device: {args.device} | Files: {len(input_files)}")
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-
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- summary = predict_on_images(
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- model_name=args.model_name,
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- image_paths=input_files,
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- output_dir=args.output_dir,
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- device=args.device,
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- batch_size=args.batch_size,
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- layout_nms=not args.no_layout_nms,
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- query=args.query
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- )
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- save_summary(summary, args.output_dir, args.model_name)
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- return 0
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-
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-if __name__ == "__main__":
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- # 无参数示例(便于快速体验)
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- if len(sys.argv) == 1:
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- model_name = "RT-DETR-L_wired_table_cell_det"
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- # demo = {
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- # "--model_name": model_name,
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- # "--input_dir": "/Users/zhch158/workspace/data/流水分析/A用户_单元格扫描流水.img",
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- # "--output_dir": f"/Users/zhch158/workspace/data/流水分析/A用户_单元格扫描流水/{model_name}_Results",
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- # "--device": "cpu",
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- # }
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-
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- # model_name = "RT-DETR-L_wireless_table_cell_det"
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- # demo = {
|
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|
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- # "--model_name": model_name,
|
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|
|
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- # "--input_dir": "/Users/zhch158/workspace/data/流水分析/B用户_扫描流水.img",
|
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|
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- # "--output_dir": f"/Users/zhch158/workspace/data/流水分析/B用户_扫描流水/{model_name}_Results",
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|
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- # "--device": "cpu",
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|
|
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- # }
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|
|
|
-
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|
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- model_name = "SLANet_plus"
|
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|
|
|
- demo = {
|
|
|
|
|
- "--model_name": model_name,
|
|
|
|
|
- "--input_dir": "/Users/zhch158/workspace/data/流水分析/B用户_扫描流水.img",
|
|
|
|
|
- "--output_dir": f"/Users/zhch158/workspace/data/流水分析/B用户_扫描流水/{model_name}_Results",
|
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|
|
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- "--device": "cpu",
|
|
|
|
|
- }
|
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|
|
|
-
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- sys.argv = [sys.argv[0]] + [kv for pair in demo.items() for kv in pair]
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- print("ℹ️ No args provided. Running demo with:", demo)
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-
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- sys.exit(main())
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