# coding: utf-8 # use DocLayout-YOLO model for layout analysis: https://github.com/opendatalab/DocLayout-YOLO import json import os import logging import shutil from collections import defaultdict from copy import deepcopy, copy from pathlib import Path from typing import Union, Optional from PIL import Image import numpy as np import torch import torchvision from .consts import MODEL_VERSION from .layout_parser import ElementType from .utils import ( list2box, clipbox, box2list, read_img, save_layout_img, data_dir, select_device, y_overlap, prepare_model_files2, ) from . import DocXLayoutParser from doclayout_yolo import YOLOv10 logger = logging.getLogger(__name__) CURRENT_DIR = os.path.dirname(__file__) class DocYoloLayoutParser(object): ignored_types = {"abandon", "table_footnote"} # names: {0: 'title', 1: 'plain text', 2: 'abandon', 3: 'figure', 4: 'figure_caption', 5: 'table', 6: 'table_caption', 7: 'table_footnote', 8: 'isolate_formula', 9: 'formula_caption'} type_mappings = { "title": ElementType.TITLE, "figure": ElementType.FIGURE, "plain text": ElementType.TEXT, "table": ElementType.TABLE, "table_caption": ElementType.TEXT, "figure_caption": ElementType.TEXT, "isolate_formula": ElementType.FORMULA, "inline formula": ElementType.FORMULA, "formula_caption": ElementType.PLAIN_TEXT, "ocr text": ElementType.TEXT, } # types that are isolated and usually don't cross different columns. They should not be merged with other elements is_isolated = {"table_caption", "figure_caption", "isolate_formula"} def __init__( self, device: str = None, model_fp: Optional[str] = None, root: Union[str, Path] = data_dir(), **kwargs, ): if model_fp is None: model_fp = self._prepare_model_files(root) device = select_device(device) # device = 'cpu' if device == 'mps' else device self.device = device self.mapping = { 0: "title", 1: "plain text", 2: "abandon", 3: "figure", 4: "figure_caption", 5: "table", 6: "table_caption", 7: "table_footnote", 8: "isolate_formula", 9: "formula_caption", } logger.info("Use DocLayout-YOLO model for Layout Analysis: {}".format(model_fp)) self.predictor = YOLOv10(model_fp) def _prepare_model_files(self, root): model_root_dir = Path(root).expanduser() / MODEL_VERSION model_dir = model_root_dir / "layout-docyolo" model_fp = model_dir / "doclayout_yolo_docstructbench_imgsz1024.pt" if model_fp.exists(): return model_fp model_fp = prepare_model_files2( model_fp_or_dir=model_fp, remote_repo="breezedeus/pix2text-layout-docyolo", file_or_dir="file", ) return model_fp @classmethod def from_config(cls, configs: Optional[dict] = None, device: str = None, **kwargs): configs = copy(configs or {}) device = select_device(device) model_fp = configs.pop("model_fp", None) root = configs.pop("root", data_dir()) configs.pop("device", None) return cls(device=device, model_fp=model_fp, root=root, **configs) def parse( self, img: Union[str, Path, Image.Image], table_as_image: bool = False, *, imgsz: int = 1024, # Prediction image size conf: float = 0.2, # Confidence threshold iou_threshold: float = 0.45, # NMS IoU threshold **kwargs, ): """ Args: img (): table_as_image (): imgsz (int): Prediction image size conf (float): Confidence threshold iou_threshold (float): NMS IoU threshold **kwargs (): * save_debug_res (str): if `save_debug_res` is set, the directory to save the debug results; default value is `None`, which means not to save * expansion_margin (int): expansion margin Returns: """ if isinstance(img, Image.Image): img0 = img.convert("RGB") else: img0 = read_img(img, return_type="Image") img_width, img_height = img0.size det_res = self.predictor.predict( img0, # Image to predict imgsz=imgsz, # Prediction image size conf=conf, # Confidence threshold )[0] scores = det_res.__dict__["boxes"].conf boxes = det_res.__dict__["boxes"].xyxy _classes = det_res.__dict__["boxes"].cls indices = torchvision.ops.nms( boxes=torch.Tensor(boxes), scores=torch.Tensor(scores), iou_threshold=iou_threshold, ) boxes, scores, _classes = boxes[indices], scores[indices], _classes[indices] # dtype to int _classes = _classes.int().tolist() page_layout_result = [] for box, score, _cls in zip(boxes, scores, _classes): page_layout_result.append( { "type": self.mapping[_cls], "position": list2box(*box.tolist()), "score": float(score), } ) ignored_layout_result = [ item for item in page_layout_result if item["type"] in self.ignored_types ] for x in ignored_layout_result: x["col_number"] = -1 ignored_layout_out, _ = self._format_outputs( img_width, img_height, ignored_layout_result, table_as_image ) if page_layout_result: # 目前 MFR 对带 tag 的公式识别效果不太好,所以暂时不合并 # page_layout_result = self._merge_isolated_formula_and_caption(page_layout_result) # 去掉 ignored 类型 _page_layout_result = [ item for item in page_layout_result if item["type"] not in self.ignored_types ] layout_out = fetch_column_info(_page_layout_result, img_width, img_height) layout_out, column_meta = self._format_outputs( img_width, img_height, layout_out, table_as_image ) else: layout_out, column_meta = [], {} debug_dir = None if kwargs.get("save_debug_res", None): debug_dir = Path(kwargs.get("save_debug_res")) debug_dir.mkdir(exist_ok=True, parents=True) if debug_dir is not None: with open(debug_dir / "layout_out.json", "w", encoding="utf-8") as f: json_out = deepcopy(layout_out) for item in json_out: item["position"] = item["position"].tolist() item["type"] = item["type"].name json.dump( json_out, f, indent=2, ensure_ascii=False, ) # layout_out = DocXLayoutParser._merge_overlapped_boxes(layout_out) expansion_margin = kwargs.get("expansion_margin", 8) layout_out = DocXLayoutParser._expand_boxes( layout_out, expansion_margin, height=img_height, width=img_width ) save_layout_fp = kwargs.get( "save_layout_res", debug_dir / "layout_res.jpg" if debug_dir is not None else None, ) layout_out.extend(ignored_layout_out) if save_layout_fp: element_type_list = [t for t in ElementType] save_layout_img( img0, element_type_list, layout_out, save_path=save_layout_fp, key="position", ) return layout_out, column_meta def _merge_isolated_formula_and_caption(self, page_layout_result): # 合并孤立的公式和公式标题 # 对于每个公式标题,找到与它在同一行且在其左侧距离最近的孤立公式,并把它们合并 isolated_formula = [ item for item in page_layout_result if item["type"] == "isolate_formula" ] formula_caption = [ item for item in page_layout_result if item["type"] == "formula_caption" ] remaining_elements = [ item for item in page_layout_result if item["type"] not in ["isolate_formula", "formula_caption"] ] for caption in formula_caption: caption_xmin, caption_ymin, caption_xmax, caption_ymax = box2list( caption["position"] ) min_dist = float("inf") nearest_formula = None for formula in isolated_formula: formula_xmin, formula_ymin, formula_xmax, formula_ymax = box2list( formula["position"] ) if y_overlap(caption, formula, key="position") >= 0.7: dist = caption_xmin - formula_xmax if 0 <= dist < min_dist: min_dist = dist nearest_formula = formula if nearest_formula is not None: new_formula = deepcopy(nearest_formula) formula_xmin, formula_ymin, formula_xmax, formula_ymax = box2list( new_formula["position"] ) new_formula["position"] = list2box( min(caption_xmin, formula_xmin), min(caption_ymin, formula_ymin), max(caption_xmax, formula_xmax), max(caption_ymax, formula_ymax), ) remaining_elements.append(new_formula) isolated_formula.remove(nearest_formula) else: # not found remaining_elements.append(caption) return remaining_elements + isolated_formula def _format_outputs(self, width, height, layout_out, table_as_image: bool): # 获取每一列的信息 column_numbers = set([item["col_number"] for item in layout_out]) column_meta = defaultdict(dict) for col_idx in column_numbers: cur_col_res = [item for item in layout_out if item["col_number"] == col_idx] mean_score = np.mean([item["score"] for item in cur_col_res]) xmin, ymin, xmax, ymax = box2list(cur_col_res[0]["position"]) for item in cur_col_res[1:]: cur_xmin, cur_ymin, cur_xmax, cur_ymax = box2list(item["position"]) xmin = min(xmin, cur_xmin) ymin = min(ymin, cur_ymin) xmax = max(xmax, cur_xmax) ymax = max(ymax, cur_ymax) column_meta[col_idx]["position"] = clipbox( list2box(xmin, ymin, xmax, ymax), height, width ) column_meta[col_idx]["score"] = mean_score final_out = [] for box_info in layout_out: image_type = box_info["type"] isolated = image_type in self.is_isolated if image_type in self.ignored_types: image_type = ElementType.IGNORED else: image_type = self.type_mappings.get(image_type, ElementType.UNKNOWN) if table_as_image and image_type == ElementType.TABLE: image_type = ElementType.FIGURE final_out.append( { "type": image_type, "position": clipbox(box_info["position"], height, width), "score": box_info["score"], "col_number": box_info["col_number"], "isolated": isolated, } ) return final_out, column_meta def cal_column_width(layout_res, img_width, img_height): widths = [item["position"][1][0] - item["position"][0][0] for item in layout_res] if len(widths) <= 2: return min(widths + [img_width]) # 计算所有box的宽度和相对面积 boxes_info = [] for item in layout_res: x0, y0 = item["position"][0] x1, y1 = item["position"][2] width = x1 - x0 height = y1 - y0 area = width * height boxes_info.append({"width": width, "area": area, "y0": y0, "height": height}) # 按面积排序,获取最大的几个box boxes_info.sort(key=lambda x: x["area"], reverse=True) # 使用面积权重计算加权平均宽度 total_weight = 0 weighted_width_sum = 0 # 只考虑面积最大的前30%的boxes top_boxes = boxes_info[: max(2, int(len(boxes_info) * 0.3))] for box in top_boxes: # 使用面积作为权重 weight = box["area"] # 给予页面下半部分的box更高权重(因为通常是正文区域) if box["y0"] > img_height * 0.5: weight *= 1.5 weighted_width_sum += box["width"] * weight total_weight += weight estimated_width = ( weighted_width_sum / total_weight if total_weight > 0 else img_width ) # 设置合理的界限 min_width = img_width * 0.3 # 列宽不应该太窄 max_width = img_width * 0.95 # 留一些页边距 return min(max(estimated_width, min_width), max_width) def locate_full_column(layout_res, col_width, img_width): # 找出跨列的模块 for item in layout_res: cur_width = item["position"][1][0] - item["position"][0][0] if cur_width > col_width * 1.5 or cur_width > img_width * 0.7: item["category"] = "full column" item["col_number"] = 0 else: item["category"] = "sub column" item["col_number"] = -1 return layout_res def fetch_column_info(layout_res, img_width, img_height): # 获取所有模块的横坐标范围 layout_res.sort(key=lambda x: x["position"][0][0]) col_width = cal_column_width(layout_res, img_width, img_height) layout_res = locate_full_column(layout_res, col_width, img_width) col_width = max( [ item["position"][1][0] - item["position"][0][0] for item in layout_res if item["category"] == "sub column" ], default=col_width, ) # 分配模块到列中 col_left = img_width cur_col = 1 for idx, info in enumerate(layout_res): if info["category"] == "full column": continue xmin, xmax = info["position"][0][0], info["position"][1][0] if col_left == img_width: col_left = xmin if xmin < col_left + col_width * 0.99 and xmax <= xmin + col_width * 1.02: info["col_number"] = cur_col col_left = min(col_left, xmin) else: cur_col += 1 col_left = xmin info["col_number"] = cur_col logger.debug(f"Column number: {cur_col}, with column width: {col_width}") if cur_col == 1: # 只有一列,直接返回 for item in layout_res: item["col_number"] = 1 layout_res.sort( key=lambda x: (x["col_number"], x["position"][0][1], x["position"][0][0]) ) return layout_res