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English | 简体中文

PP-Structure

PP-Structure is an OCR toolkit that can be used for complex documents analysis. The main features are as follows:

  • Support the layout analysis of documents, divide the documents into 5 types of areas text, title, table, image and list (combined with Layout-Parser)
  • Support to extract the texts from the text, title, picture and list areas (combined with PP-OCR)
  • Support to extract excel files from the table areas
  • Support to use with python whl package and command line easily
  • Support custom training for layout analysis and table structure tasks

1. Visualization

2. Installation

2.1 Install requirements

  • (1) Install PaddlePaddle
pip3 install --upgrade pip

# GPU
python3 -m pip install paddlepaddle-gpu==2.1.1 -i https://mirror.baidu.com/pypi/simple

# CPU
 python3 -m pip install paddlepaddle==2.1.1 -i https://mirror.baidu.com/pypi/simple

For more,refer Installation .

  • (2) Install Layout-Parser
pip3 install -U https://paddleocr.bj.bcebos.com/whl/layoutparser-0.0.0-py3-none-any.whl

2.2 Install PaddleOCR(including PP-OCR and PP-Structure)

  • (1) PIP install PaddleOCR whl package(inference only)
pip install "paddleocr>=2.2"
  • (2) Clone PaddleOCR(Inference+training)
git clone https://github.com/PaddlePaddle/PaddleOCR

3. Quick Start

3.1 Use by command line

paddleocr --image_dir=../doc/table/1.png --type=structure

3.2 Use by python API

import os
import cv2
from paddleocr import PPStructure,draw_structure_result,save_structure_res

table_engine = PPStructure(show_log=True)

save_folder = './output/table'
img_path = '../doc/table/1.png'
img = cv2.imread(img_path)
result = table_engine(img)
save_structure_res(result, save_folder,os.path.basename(img_path).split('.')[0])

for line in result:
    line.pop('img')
    print(line)

from PIL import Image

font_path = '../doc/fonts/simfang.ttf'
image = Image.open(img_path).convert('RGB')
im_show = draw_structure_result(image, result,font_path=font_path)
im_show = Image.fromarray(im_show)
im_show.save('result.jpg')

3.3 Returned results format

The returned results of PP-Structure is a list composed of a dict, an example is as follows

[
  {   'type': 'Text',
      'bbox': [34, 432, 345, 462],
      'res': ([[36.0, 437.0, 341.0, 437.0, 341.0, 446.0, 36.0, 447.0], [41.0, 454.0, 125.0, 453.0, 125.0, 459.0, 41.0, 460.0]],
                [('Tigure-6. The performance of CNN and IPT models using difforen', 0.90060663), ('Tent  ', 0.465441)])
  }
]

The description of each field in dict is as follows

Parameter Description
type Type of image area
bbox The coordinates of the image area in the original image, respectively [left upper x, left upper y, right bottom x, right bottom y]
res OCR or table recognition result of image area。
Table: HTML string of the table;
OCR: A tuple containing the detection coordinates and recognition results of each single line of text

3.4 Parameter description:

Parameter Description Default value
output The path where excel and recognition results are saved ./output/table
table_max_len The long side of the image is resized in table structure model 488
table_model_dir inference model path of table structure model None
table_char_type dict path of table structure model ../ppocr/utils/dict/table_structure_dict.tx

Most of the parameters are consistent with the paddleocr whl package, see doc of whl

After running, each image will have a directory with the same name under the directory specified in the output field. Each table in the picture will be stored as an excel and figure area will be cropped and saved, the excel and image file name will be the coordinates of the table in the image.

4. PP-Structure Pipeline

the process is as follows pipeline

In PP-Structure, the image will be analyzed by layoutparser first. In the layout analysis, the area in the image will be classified, including text, title, image, list and table 5 categories. For the first 4 types of areas, directly use the PP-OCR to complete the text detection and recognition. The table area will be converted to an excel file of the same table style via Table OCR.

4.1 LayoutParser

Layout analysis divides the document data into regions, including the use of Python scripts for layout analysis tools, extraction of special category detection boxes, performance indicators, and custom training layout analysis models. For details, please refer to document.

4.2 Table Recognition

Table Recognition converts table image into excel documents, which include the detection and recognition of table text and the prediction of table structure and cell coordinates. For detailed, please refer to document

5. Prediction by inference engine

Use the following commands to complete the inference.

cd PaddleOCR/ppstructure

# download model
mkdir inference && cd inference
# Download the detection model of the ultra-lightweight Chinese OCR model and uncompress it
wget https://paddleocr.bj.bcebos.com/dygraph_v2.0/ch/ch_ppocr_mobile_v2.0_det_infer.tar && tar xf ch_ppocr_mobile_v2.0_det_infer.tar
# Download the recognition model of the ultra-lightweight Chinese OCR model and uncompress it
wget https://paddleocr.bj.bcebos.com/dygraph_v2.0/ch/ch_ppocr_mobile_v2.0_rec_infer.tar && tar xf ch_ppocr_mobile_v2.0_rec_infer.tar
# Download the table structure model of the ultra-lightweight Chinese OCR model and uncompress it
wget https://paddleocr.bj.bcebos.com/dygraph_v2.0/table/en_ppocr_mobile_v2.0_table_structure_infer.tar && tar xf en_ppocr_mobile_v2.0_table_structure_infer.tar
cd ..

python3 predict_system.py --det_model_dir=inference/ch_ppocr_mobile_v2.0_det_infer --rec_model_dir=inference/ch_ppocr_mobile_v2.0_rec_infer --table_model_dir=inference/en_ppocr_mobile_v2.0_table_structure_infer --image_dir=../doc/table/1.png --rec_char_dict_path=../ppocr/utils/ppocr_keys_v1.txt --table_char_dict_path=../ppocr/utils/dict/table_structure_dict.txt --rec_char_type=ch --output=../output/table --vis_font_path=../doc/fonts/simfang.ttf

After running, each image will have a directory with the same name under the directory specified in the output field. Each table in the picture will be stored as an excel and figure area will be cropped and saved, the excel and image file name will be the coordinates of the table in the image.

Model List

model name description config model size download
en_ppocr_mobile_v2.0_table_structure Table structure prediction for English table scenarios table_mv3.yml 18.6M inference model

Model List

LayoutParser model

model name description download
ppyolov2_r50vd_dcn_365e_publaynet The layout analysis model trained on the PubLayNet data set can be divided into 5 types of areas text, title, table, picture and list PubLayNet
ppyolov2_r50vd_dcn_365e_tableBank_word The layout analysis model trained on the TableBank Word dataset can only detect tables TableBank Word
ppyolov2_r50vd_dcn_365e_tableBank_latex The layout analysis model trained on the TableBank Latex dataset can only detect tables TableBank Latex

OCR and table recognition model

model name description model size download
ch_ppocr_mobile_slim_v2.0_det Slim pruned lightweight model, supporting Chinese, English, multilingual text detection 2.6M inference model / trained model
ch_ppocr_mobile_slim_v2.0_rec Slim pruned and quantized lightweight model, supporting Chinese, English and number recognition 6M inference model / trained model
en_ppocr_mobile_v2.0_table_det Text detection of English table scenes trained on PubLayNet dataset 4.7M inference model / trained model
en_ppocr_mobile_v2.0_table_rec Text recognition of English table scene trained on PubLayNet dataset 6.9M inference model trained model
en_ppocr_mobile_v2.0_table_structure Table structure prediction of English table scene trained on PubLayNet dataset 18.6M inference model / trained model

If you need to use other models, you can download the model in model_list or use your own trained model to configure it to the three fields of det_model_dir, rec_model_dir, table_model_dir .