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Table Classification Module Usage Tutorial

1. Overview

The Table Classification Module is a key component in computer vision systems, responsible for classifying input table images. The performance of this module directly affects the accuracy and efficiency of the entire table recognition process. The Table Classification Module typically receives table images as input and, using deep learning algorithms, classifies them into predefined categories based on the characteristics and content of the images, such as wired and wireless tables. The classification results from the Table Classification Module serve as output for use in table recognition pipelines.

2. Supported Model List

ModelModel Download Link Top1 Acc(%) GPU Inference Time (ms)
[Regular Mode / High-Performance Mode]
CPU Inference Time (ms)
[Regular Mode / High-Performance Mode]
Model Storage Size (M)
PP-LCNet_x1_0_table_clsInference Model/Training Model 94.2 2.35 / 0.47 4.03 / 1.35 6.6M

Test Environment Description:

  • Performance Test Environment
    • Test Dataset: Internal evaluation dataset built by PaddleX.
    • Hardware Configuration:
      • GPU: NVIDIA Tesla T4
      • CPU: Intel Xeon Gold 6271C @ 2.60GHz
      • Other Environment: Ubuntu 20.04 / cuDNN 8.6 / TensorRT 8.5.2.2
  • Inference Mode Explanation
Mode GPU Configuration CPU Configuration Acceleration Technology Combination
Regular Mode FP32 Precision / No TRT Acceleration FP32 Precision / 8 Threads PaddleInference
High-Performance Mode Optimal combination of prior precision type and acceleration strategy FP32 Precision / 8 Threads Choose the optimal prior backend (Paddle/OpenVINO/TRT, etc.)

3. Quick Start

❗ Before starting quickly, please first install the PaddleOCR wheel package. For details, please refer to the installation tutorial.

You can quickly experience it with one command:

paddleocr table_classification -i https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/table_recognition.jpg

You can also integrate model inference from the table classification module into your project. Before running the following code, please download the sample image locally.

from paddleocr import TableClassification
model = TableClassification(model_name="PP-LCNet_x1_0_table_cls")
output = model.predict("table_recognition.jpg", batch_size=1)
for res in output:
    res.print(json_format=False)
    res.save_to_json("./output/res.json")

After running, the result obtained is:

{'res': {'input_path': 'table_recognition.jpg', 'page_index': None, 'class_ids': array([0, 1], dtype=int32), 'scores': array([0.84421, 0.15579], dtype=float32), 'label_names': ['wired_table', 'wireless_table']}}

The parameter meanings are as follows: - input_path: Path of the input image - page_index: If the input is a PDF file, it indicates which page of the PDF it is; otherwise, it is None - class_ids: Class IDs of the prediction results - scores: Confidence scores of the prediction results - label_names: Class names of the prediction results

The visualized image is as follows:

The relevant methods, parameters, etc., are described as follows:

  • TableClassification instantiates the table classification model (taking PP-LCNet_x1_0_table_cls as an example here), with specific explanations as follows:
Parameter Description Type Options Default Value
model_name Model Name str None None
model_dir Model Storage Path str None None
device Model Inference Device str Supports specifying specific GPU card numbers, such as “gpu:0”, specific hardware card numbers, such as “npu:0”, CPU as “cpu”. gpu:0
use_hpip Whether to enable high-performance inference plugin bool None False
hpi_config High-Performance Inference Configuration dict | None None None
  • Among them, model_name must be specified. After specifying model_name, the default model parameters built into PaddleX are used. When model_dir is specified, the user-defined model is used.

  • Call the predict() method of the table classification model for inference prediction. This method will return a result list. Additionally, this module also provides a predict_iter() method. Both methods are consistent in terms of parameter acceptance and result return. The difference is that predict_iter() returns a generator, which can process and obtain prediction results step by step, suitable for handling large datasets or scenarios where memory saving is desired. You can choose to use either of these methods according to your actual needs. The predict() method has parameters input and batch_size, with specific explanations as follows:

Parameter Description Type Options Default Value
input Data to be predicted, supports multiple input types Python Var/str/list
  • Python Variable, such as numpy.ndarray representing image data
  • File Path, such as the local path of an image file: /root/data/img.jpg
  • URL Link, such as the network URL of an image file: Example
  • Local Directory, which should contain data files to be predicted, such as the local path: /root/data/
  • List, where list elements must be of the above types, such as [numpy.ndarray, numpy.ndarray], ["/root/data/img1.jpg", "/root/data/img2.jpg"], ["/root/data1", "/root/data2"]
None
batch_size Batch Size int Any integer 1
  • Process the prediction results. The prediction result for each sample is a corresponding Result object, which supports printing, saving as an image, and saving as a json file:
Method Description Parameter Type Parameter Description Default Value
print() Print result to terminal format_json bool Whether to format the output content using JSON indentation True
indent int Specifies the indentation level to beautify the output JSON data, making it more readable, effective only when format_json is True 4
ensure_ascii bool Controls whether to escape non-ASCII characters into Unicode. When set to True, all non-ASCII characters will be escaped; False will retain the original characters, effective only when format_json is True False
save_to_json() Save the result as a json format file save_path str The path to save the file. When specified as a directory, the saved file is named consistent with the input file type. None
indent int Specifies the indentation level to beautify the output JSON data, making it more readable, effective only when format_json is True 4
ensure_ascii bool Controls whether to escape non-ASCII characters into Unicode. When set to True, all non-ASCII characters will be escaped; False will retain the original characters, effective only when format_json is True False
  • Additionally, the result can be obtained through attributes that provide the visualized images with results and the prediction results, as follows:
Attribute Description
json Get the prediction result in json format
img Get the visualized image

4. Secondary Development

Since PaddleOCR does not directly provide training for the table classification module, if you need to train a table classification model, you can refer to the PaddleX Table Classification Module Secondary Development section for training. The trained model can be seamlessly integrated into the PaddleOCR API for inference.

5. FAQ

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