Handwritten Chinese and Japanese OCR with OpenVINO™

This tutorial is also available as a Jupyter notebook that can be cloned directly from GitHub. See the installation guide for instructions to run this tutorial locally on Windows, Linux or macOS. To run without installing anything, click the launch binder button.

Binder Github

In this tutorial, we perform optical character recognition (OCR) for handwritten Chinese (simplified) and Japanese. An OCR tutorial using the Latin alphabet is available in notebook 208. This model is capable of processing only one line of symbols at a time.

The models used in this notebook are handwritten-japanese-recognition and handwritten-simplified-chinese. To decode model outputs as readable text kondate_nakayosi and scut_ept charlists are used. Both models are available on Open Model Zoo.


from collections import namedtuple
from itertools import groupby
from pathlib import Path

import cv2
import matplotlib.pyplot as plt
import numpy as np
from openvino.runtime import Core


Set up all constants and folders used in this notebook

# Directories where data will be placed.
model_folder = "model"
data_folder = "../data"
charlist_folder = f"{data_folder}/text"

# Precision used by the model.
precision = "FP16"

To group files, you have to define the collection. In this case, use namedtuple.

Language = namedtuple(
    typename="Language", field_names=["model_name", "charlist_name", "demo_image_name"]
chinese_files = Language(
japanese_files = Language(

Select a Language

Depending on your choice you will need to change a line of code in the cell below.

If you want to perform OCR on a text in Japanese, set language = "japanese". For Chinese, set language = "chinese".

# Select the language by using either language="chinese" or language="japanese".
language = "chinese"

languages = {"chinese": chinese_files, "japanese": japanese_files}

selected_language = languages.get(language)

Download the Model

In addition to images and charlists, you need to download the model file. In the sections below, there are cells for downloading either the Chinese or Japanese model.

If it is your first time running the notebook, the model will be downloaded. It may take a few minutes.

Use omz_downloader, which is a command-line tool from the openvino-dev package. It automatically creates a directory structure and downloads the selected model.

path_to_model_weights = Path(f'{model_folder}/intel/{selected_language.model_name}/{precision}/{selected_language.model_name}.bin')
if not path_to_model_weights.is_file():
    download_command = f'omz_downloader --name {selected_language.model_name} --output_dir {model_folder} --precision {precision}'
    ! $download_command
omz_downloader --name handwritten-simplified-chinese-recognition-0001 --output_dir model --precision FP16
################|| Downloading handwritten-simplified-chinese-recognition-0001 ||################

========== Downloading model/intel/handwritten-simplified-chinese-recognition-0001/FP16/handwritten-simplified-chinese-recognition-0001.xml

========== Downloading model/intel/handwritten-simplified-chinese-recognition-0001/FP16/handwritten-simplified-chinese-recognition-0001.bin

Load the Network and Execute

When all files are downloaded and language is selected, read and compile the network to run inference. The path to the model is defined based on the selected language.

ie = Core()
path_to_model = path_to_model_weights.with_suffix(".xml")
model = ie.read_model(model=path_to_model)

Select a Device Name

You may choose to run the network on multiple devices. By default, it will load the model on CPU (CPU, GPU, etc. can be set manually) or let the engine choose the best available device (AUTO).

To list all available devices, uncomment and run the line print(ie.available_devices).

# To check available device names run the line below
# print(ie.available_devices)

compiled_model = ie.compile_model(model=model, device_name="CPU")

Fetch Information About Input and Output Layers

Now that the model is loaded, fetch information about the input and output layers (shape).

recognition_output_layer = compiled_model.output(0)
recognition_input_layer = compiled_model.input(0)

Load an Image

Next, load an image. The model expects a single-channel image as input, so the image is read in grayscale.

After loading the input image, get information to use for calculating the scale ratio between required input layer height and the current image height. In the cell below, the image will be resized and padded to keep letters proportional and meet input shape.

# Read a filename of a demo file based on the selected model.

file_name = selected_language.demo_image_name

# Text detection models expect an image in grayscale format.
# IMPORTANT! This model enables reading only one line at time.

# Read the image.
image = cv2.imread(filename=f"{data_folder}/image/{file_name}", flags=cv2.IMREAD_GRAYSCALE)

# Fetch the shape.
image_height, _ = image.shape

# B,C,H,W = batch size, number of channels, height, width.
_, _, H, W = recognition_input_layer.shape

# Calculate scale ratio between the input shape height and image height to resize the image.
scale_ratio = H / image_height

# Resize the image to expected input sizes.
resized_image = cv2.resize(
    image, None, fx=scale_ratio, fy=scale_ratio, interpolation=cv2.INTER_AREA

# Pad the image to match input size, without changing aspect ratio.
resized_image = np.pad(
    resized_image, ((0, 0), (0, W - resized_image.shape[1])), mode="edge"

# Reshape to network input shape.
input_image = resized_image[None, None, :, :]

Visualise Input Image

After preprocessing, you can display the image.

plt.figure(figsize=(20, 1))
plt.imshow(resized_image, cmap="gray", vmin=0, vmax=255);

Prepare Charlist

The model is loaded and the image is ready. The only element left is the charlist, which is downloaded. You must add a blank symbol at the beginning of the charlist before using it. This is expected for both the Chinese and Japanese models.

# Get a dictionary to encode the output, based on model documentation.
used_charlist = selected_language.charlist_name

# With both models, there should be blank symbol added at index 0 of each charlist.
blank_char = "~"

with open(f"{charlist_folder}/{used_charlist}", "r", encoding="utf-8") as charlist:
    letters = blank_char + "".join(line.strip() for line in charlist)

Run Inference

Now, run inference. The compiled_model() function takes a list with input(s) in the same order as model input(s). Then, fetch the output from output tensors.

# Run inference on the model
predictions = compiled_model([input_image])[recognition_output_layer]

Process the Output Data

The output of a model is in the W x B x L format, where:

  • W - output sequence length

  • B - batch size

  • L - confidence distribution across the supported symbols in Kondate and Nakayosi.

To get a more human-readable format, select a symbol with the highest probability. When you hold a list of indexes that are predicted to have the highest probability, due to limitations in CTC Decoding, you will remove concurrent symbols and then remove the blanks.

Finally, get the symbols from corresponding indexes in the charlist.

# Remove a batch dimension.
predictions = np.squeeze(predictions)

# Run the `argmax` function to pick the symbols with the highest probability.
predictions_indexes = np.argmax(predictions, axis=1)
# Use the `groupby` function to remove concurrent letters, as required by CTC greedy decoding.
output_text_indexes = list(groupby(predictions_indexes))

# Remove grouper objects.
output_text_indexes, _ = np.transpose(output_text_indexes, (1, 0))

# Remove blank symbols.
output_text_indexes = output_text_indexes[output_text_indexes != 0]

# Assign letters to indexes from the output array.
output_text = [letters[letter_index] for letter_index in output_text_indexes]