Handwritten Text Recognition (HTR) using TensorFlow 2.x

Overview

Handwritten Text Recognition (HTR) system implemented using TensorFlow 2.x and trained on the Bentham/IAM/Rimes/Saint Gall/Washington offline HTR datasets. This Neural Network model recognizes the text contained in the images of segmented texts lines.

Data partitioning (train, validation, test) was performed following the methodology of each dataset. The project implemented the HTRModel abstraction model (inspired by CTCModel) as a way to facilitate the development of HTR systems.

Notes:

  1. All references are commented in the code.
  2. This project doesn't offer post-processing, such as Statistical Language Model.
  3. Check out the presentation in the doc folder.
  4. For more information and demo run step by step, check out the tutorial on Google Colab/Drive.

Datasets supported

a. Bentham

b. IAM

c. Rimes

d. Saint Gall

e. Washington

Requirements

  • Python 3.x
  • OpenCV 4.x
  • editdistance
  • TensorFlow 2.x

Command line arguments

  • --source: dataset/model name (bentham, iam, rimes, saintgall, washington)
  • --arch: network to be used (puigcerver, bluche, flor)
  • --transform: transform dataset to the HDF5 file
  • --cv2: visualize sample from transformed dataset
  • --kaldi_assets: save all assets for use with kaldi
  • --image: predict a single image with the source parameter
  • --train: train model using the source argument
  • --test: evaluate and predict model using the source argument
  • --norm_accentuation: discard accentuation marks in the evaluation
  • --norm_punctuation: discard punctuation marks in the evaluation
  • --epochs: number of epochs
  • --batch_size: number of the size of each batch

Tutorial (Google Colab/Drive)

A Jupyter Notebook is available to demo run, check out the tutorial on Google Colab/Drive.

Sample

Bentham sample with default parameters in the tutorial file.

  1. Preprocessed image (network input)
  2. TE_L: Ground Truth Text (label)
  3. TE_P: Predicted text (network output)

Citation

If this project helped in any way in your research work, feel free to cite the following papers.

HTR-Flor++: A Handwritten Text Recognition System Based on a Pipeline of Optical and Language Models (here)

This work aimed to propose a different pipeline for Handwritten Text Recognition (HTR) systems in post-processing, using two steps to correct the output text. The first step aimed to correct the text at the character level (using N-gram model). The second step had the objective of correcting the text at the word level (using a word frequency dictionary). The experiment was validated in the IAM dataset and compared to the best works proposed within this data scenario.

@inproceedings{10.1145/3395027.3419603,
    author      = {Neto, Arthur F. S. and Bezerra, Byron L. D. and Toselli, Alejandro H. and Lima, Estanislau B.},
    title       = {{HTR-Flor++:} A Handwritten Text Recognition System Based on a Pipeline of Optical and Language Models},
    booktitle   = {Proceedings of the ACM Symposium on Document Engineering 2020},
    year        = {2020},
    publisher   = {Association for Computing Machinery},
    address     = {New York, NY, USA},
    location    = {Virtual Event, CA, USA},
    series      = {DocEng '20},
    isbn        = {9781450380003},
    url         = {https://doi.org/10.1145/3395027.3419603},
    doi         = {10.1145/3395027.3419603},
}

Towards the Natural Language Processing as Spelling Correction for Offline Handwritten Text Recognition Systems (here)

This work aimed a deep study within the research field of Natural Language Processing (NLP), and to bring its approaches to the research field of Handwritten Text Recognition (HTR). Thus, for the experiment and validation, we used 5 datasets (Bentham, IAM, RIMES, Saint Gall and Washington), 3 optical models (Bluche, Puigcerver, Flor), and 8 techniques for text correction in post-processing, including approaches statistics and neural networks, such as encoder-decoder models (seq2seq and Transformers).

@article{10.3390/app10217711,
    author  = {Neto, Arthur F. S. and Bezerra, Byron L. D. and Toselli, Alejandro H.},
    title   = {Towards the Natural Language Processing as Spelling Correction for Offline Handwritten Text Recognition Systems},
    journal = {Applied Sciences},
    pages   = {1-29},
    month   = {10},
    year    = {2020},
    volume  = {10},
    number  = {21},
    url     = {https://doi.org/10.3390/app10217711},
    doi     = {10.3390/app10217711},
}

HDSR-Flor: A Robust End-to-End System to Solve the Handwritten Digit String Recognition Problem in Real Complex Scenarios (here)

This work aimed to propose the optical model for Handwritten Digit String Recognition (HDSR) and compare it with the state-of-the-art models. The International Conference on Frontiers of Handwriting Recognition (ICFHR) 2014 competition on HDSR were used as baselines toevaluate the effectiveness of our proposal, whose metrics, datasets and recognition methods were adopted for fair comparison. Furthermore, we also use a private dataset (Brazilian Bank Check - Courtesy Amount Recognition), and 11 different approaches from the state-of-the-art in HDSR, as well as 2 optical models from the state-of-the-art in Handwritten Text Recognition (HTR).

@article{10.1109/ACCESS.2020.3039003,
    author  = {Neto, Arthur F. S. and Bezerra, Byron L. D. and Lima, Estanislau B. and Toselli, Alejandro H.},
    title   = {{HDSR-Flor:} A Robust End-to-End System to Solve the Handwritten Digit String Recognition Problem in Real Complex Scenarios},
    journal = {IEEE Access},
    pages   = {208543-208553},
    month   = {11},
    year    = {2020},
    volume  = {8},
    isbn    = {2169-3536},
    url     = {https://doi.org/10.1109/ACCESS.2020.3039003},
    doi     = {10.1109/ACCESS.2020.3039003},
}

HTR-Flor: A Deep Learning System for Offline Handwritten Text Recognition (here)

This work aimed to propose the optical model for Handwritten Text Recognition (HTR) and compare it with the state-of-the-art models. The performance comparison was validated in 5 different datasets (Bentham, IAM, RIMES, Saint Gall and Washington). In addition, it was considered one of the best papers in the 33rd SIBGRAPI (2020).

@inproceedings{10.1109/SIBGRAPI51738.2020.00016,
    author      = {Neto, Arthur F. S. and Bezerra, Byron L. D. and Toselli, Alejandro H. and Lima, Estanislau B.},
    title       = {{HTR-Flor:} A Deep Learning System for Offline Handwritten Text Recognition},
    booktitle   = {2020 33rd SIBGRAPI Conference on Graphics, Patterns and Images (SIBGRAPI)},
    pages       = {54-61},
    month       = {11},
    year        = {2020},
    location    = {Recife/Porto de Galinhas, PE, Brazil},
    series      = {SIBGRAPI' 33},
    publisher   = {IEEE Computer Society},
    address     = {Los Alamitos, CA, USA},
    url         = {https://doi.org/10.1109/SIBGRAPI51738.2020.00016},
    doi         = {10.1109/SIBGRAPI51738.2020.00016},
}
You might also like...
A Tensorflow model for text recognition (CNN + seq2seq with visual attention) available as a Python package and compatible with Google Cloud ML Engine.
A Tensorflow model for text recognition (CNN + seq2seq with visual attention) available as a Python package and compatible with Google Cloud ML Engine.

Attention-based OCR Visual attention-based OCR model for image recognition with additional tools for creating TFRecords datasets and exporting the tra

A curated list of resources for text detection/recognition (optical character recognition ) with deep learning methods.
A curated list of resources for text detection/recognition (optical character recognition ) with deep learning methods.

awesome-deep-text-detection-recognition A curated list of awesome deep learning based papers on text detection and recognition. Text Detection Papers

Text recognition (optical character recognition) with deep learning methods.
Text recognition (optical character recognition) with deep learning methods.

What Is Wrong With Scene Text Recognition Model Comparisons? Dataset and Model Analysis | paper | training and evaluation data | failure cases and cle

text detection mainly based on ctpn model in tensorflow, id card detect, connectionist text proposal network
text detection mainly based on ctpn model in tensorflow, id card detect, connectionist text proposal network

text-detection-ctpn Scene text detection based on ctpn (connectionist text proposal network). It is implemented in tensorflow. The origin paper can be

Code for the paper STN-OCR: A single Neural Network for Text Detection and Text Recognition

STN-OCR: A single Neural Network for Text Detection and Text Recognition This repository contains the code for the paper: STN-OCR: A single Neural Net

OCR, Scene-Text-Understanding, Text Recognition

Scene-Text-Understanding Survey [2015-PAMI] Text Detection and Recognition in Imagery: A Survey paper [2014-Front.Comput.Sci] Scene Text Detection and

Sign Language Recognition service utilizing a deep learning model with Long Short-Term Memory to perform sign language recognition.
Sign Language Recognition service utilizing a deep learning model with Long Short-Term Memory to perform sign language recognition.

Sign Language Recognition Service This is a Sign Language Recognition service utilizing a deep learning model with Long Short-Term Memory to perform s

CUTIE (TensorFlow implementation of Convolutional Universal Text Information Extractor)
CUTIE (TensorFlow implementation of Convolutional Universal Text Information Extractor)

CUTIE TensorFlow implementation of the paper "CUTIE: Learning to Understand Documents with Convolutional Universal Text Information Extractor." Xiaohu

Comments
  • Bump tensorflow from 2.9.1 to 2.9.3

    Bump tensorflow from 2.9.1 to 2.9.3

    Bumps tensorflow from 2.9.1 to 2.9.3.

    Release notes

    Sourced from tensorflow's releases.

    TensorFlow 2.9.3

    Release 2.9.3

    This release introduces several vulnerability fixes:

    TensorFlow 2.9.2

    Release 2.9.2

    This releases introduces several vulnerability fixes:

    ... (truncated)

    Changelog

    Sourced from tensorflow's changelog.

    Release 2.9.3

    This release introduces several vulnerability fixes:

    Release 2.8.4

    This release introduces several vulnerability fixes:

    ... (truncated)

    Commits
    • a5ed5f3 Merge pull request #58584 from tensorflow/vinila21-patch-2
    • 258f9a1 Update py_func.cc
    • cd27cfb Merge pull request #58580 from tensorflow-jenkins/version-numbers-2.9.3-24474
    • 3e75385 Update version numbers to 2.9.3
    • bc72c39 Merge pull request #58482 from tensorflow-jenkins/relnotes-2.9.3-25695
    • 3506c90 Update RELEASE.md
    • 8dcb48e Update RELEASE.md
    • 4f34ec8 Merge pull request #58576 from pak-laura/c2.99f03a9d3bafe902c1e6beb105b2f2417...
    • 6fc67e4 Replace CHECK with returning an InternalError on failing to create python tuple
    • 5dbe90a Merge pull request #58570 from tensorflow/r2.9-7b174a0f2e4
    • Additional commits viewable in compare view

    Dependabot compatibility score

    Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase.


    Dependabot commands and options

    You can trigger Dependabot actions by commenting on this PR:

    • @dependabot rebase will rebase this PR
    • @dependabot recreate will recreate this PR, overwriting any edits that have been made to it
    • @dependabot merge will merge this PR after your CI passes on it
    • @dependabot squash and merge will squash and merge this PR after your CI passes on it
    • @dependabot cancel merge will cancel a previously requested merge and block automerging
    • @dependabot reopen will reopen this PR if it is closed
    • @dependabot close will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually
    • @dependabot ignore this major version will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this minor version will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this dependency will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)
    • @dependabot use these labels will set the current labels as the default for future PRs for this repo and language
    • @dependabot use these reviewers will set the current reviewers as the default for future PRs for this repo and language
    • @dependabot use these assignees will set the current assignees as the default for future PRs for this repo and language
    • @dependabot use this milestone will set the current milestone as the default for future PRs for this repo and language

    You can disable automated security fix PRs for this repo from the Security Alerts page.

    dependencies 
    opened by dependabot[bot] 0
  • Bump tensorflow from 2.3.0 to 2.3.1

    Bump tensorflow from 2.3.0 to 2.3.1

    Bumps tensorflow from 2.3.0 to 2.3.1.

    Release notes

    Sourced from tensorflow's releases.

    TensorFlow 2.3.1

    Release 2.3.1

    Bug Fixes and Other Changes

    Changelog

    Sourced from tensorflow's changelog.

    Release 2.3.1

    Bug Fixes and Other Changes

    Release 2.2.1

    ... (truncated)

    Commits
    • fcc4b96 Merge pull request #43446 from tensorflow-jenkins/version-numbers-2.3.1-16251
    • 4cf2230 Update version numbers to 2.3.1
    • eee8224 Merge pull request #43441 from tensorflow-jenkins/relnotes-2.3.1-24672
    • 0d41b1d Update RELEASE.md
    • d99bd63 Insert release notes place-fill
    • d71d3ce Merge pull request #43414 from tensorflow/mihaimaruseac-patch-1-1
    • 9c91596 Fix missing import
    • f9f12f6 Merge pull request #43391 from tensorflow/mihaimaruseac-patch-4
    • 3ed271b Solve leftover from merge conflict
    • 9cf3773 Merge pull request #43358 from tensorflow/mm-patch-r2.3
    • Additional commits viewable in compare view

    Dependabot compatibility score

    Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase.


    Dependabot commands and options

    You can trigger Dependabot actions by commenting on this PR:

    • @dependabot rebase will rebase this PR
    • @dependabot recreate will recreate this PR, overwriting any edits that have been made to it
    • @dependabot merge will merge this PR after your CI passes on it
    • @dependabot squash and merge will squash and merge this PR after your CI passes on it
    • @dependabot cancel merge will cancel a previously requested merge and block automerging
    • @dependabot reopen will reopen this PR if it is closed
    • @dependabot close will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually
    • @dependabot ignore this major version will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this minor version will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this dependency will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)
    • @dependabot use these labels will set the current labels as the default for future PRs for this repo and language
    • @dependabot use these reviewers will set the current reviewers as the default for future PRs for this repo and language
    • @dependabot use these assignees will set the current assignees as the default for future PRs for this repo and language
    • @dependabot use this milestone will set the current milestone as the default for future PRs for this repo and language

    You can disable automated security fix PRs for this repo from the Security Alerts page.

    dependencies 
    opened by dependabot[bot] 0
Releases(v0.0.6)
Character Segmentation using TensorFlow

Character Segmentation Segment characters and spaces in one text line,from this paper Chinese English mixed Character Segmentation as Semantic Segment

26 Aug 25, 2022
Qrcode Attendence System with Opencv and Pyzbar

Setup process Creates a virtual environment (Scripts that ensure executed Python code uses the Python interpreter and site packages installed inside t

Ganesh 5 Aug 01, 2022
STEFANN: Scene Text Editor using Font Adaptive Neural Network

STEFANN: Scene Text Editor using Font Adaptive Neural Network @ The IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) 2020.

Prasun Roy 208 Dec 11, 2022
A buffered and threaded wrapper for the OpenCV VideoCapture object. Can speed up video decoding significantly. Supports

A buffered and threaded wrapper for the OpenCV VideoCapture object. Can speed up video decoding significantly. Supports "with"-syntax.

Patrice Matz 0 Oct 30, 2021
A python scripts that uses 3 different feature extraction methods such as SIFT, SURF and ORB to find a book in a video clip and project trailer of a movie based on that book, on to it.

A python scripts that uses 3 different feature extraction methods such as SIFT, SURF and ORB to find a book in a video clip and project trailer of a movie based on that book, on to it.

tooraj taraz 3 Feb 10, 2022
CNN+LSTM+CTC based OCR implemented using tensorflow.

CNN_LSTM_CTC_Tensorflow CNN+LSTM+CTC based OCR(Optical Character Recognition) implemented using tensorflow. Note: there is No restriction on the numbe

Watson Yang 356 Dec 08, 2022
A collection of resources (including the papers and datasets) of OCR (Optical Character Recognition).

OCR Resources This repository contains a collection of resources (including the papers and datasets) of OCR (Optical Character Recognition). Contents

Zuming Huang 363 Jan 03, 2023
Handwritten Text Recognition (HTR) using TensorFlow 2.x

Handwritten Text Recognition (HTR) system implemented using TensorFlow 2.x and trained on the Bentham/IAM/Rimes/Saint Gall/Washington offline HTR data

Arthur Flôr 160 Dec 21, 2022
([email protected]) Boosting Co-teaching with Compression Regularization for Label Noise

Nested-Co-teaching ([email protected]) Pytorch implementation of paper "Boosting Co-tea

YINGYI CHEN 41 Jan 03, 2023
MeshToGeotiff - A fast Python algorithm to convert a 3D mesh into a GeoTIFF

MeshToGeotiff - A fast Python algorithm to convert a 3D mesh into a GeoTIFF Python class for converting (very fast) 3D Meshes/Surfaces to Raster DEMs

8 Sep 10, 2022
The open source extract transaction infomation by using OCR.

Transaction OCR Mã nguồn trích xuất thông tin transaction từ file scaned pdf, ở đây tôi lựa chọn tài liệu sao kê công khai của Thuy Tien. Mã nguồn có

Nguyen Xuan Hung 18 Jun 02, 2022
M-LSDを用いて四角形を検出し、射影変換を行うサンプルプログラム

M-LSD-warpPerspective-Example M-LSDを用いて四角形を検出し、射影変換を行うサンプルプログラムです。 Requirements OpenCV 3.4.2 or Later tensorflow 2.4.1 or Later Usage 実行方法は以下です。 pytho

KazuhitoTakahashi 9 Oct 14, 2022
A general list of resources to image text localization and recognition 场景文本位置感知与识别的论文资源与实现合集 シーンテキストの位置認識と識別のための論文リソースの要約

Scene Text Localization & Recognition Resources Read this institute-wise: English, 简体中文. Read this year-wise: English, 简体中文. Tags: [STL] (Scene Text L

Karl Lok (Zhaokai Luo) 901 Dec 11, 2022
天池2021"全球人工智能技术创新大赛"【赛道一】:医学影像报告异常检测 - 第三名解决方案

天池2021"全球人工智能技术创新大赛"【赛道一】:医学影像报告异常检测 比赛链接 个人博客记录 目录结构 ├── final------------------------------------决赛方案PPT ├── preliminary_contest--------------------

19 Aug 17, 2022
Rubik's Cube in pygame with OpenGL

Rubik Rubik's Cube in pygame with OpenGL The script show on the screen a Rubik Cube buit with OpenGL. Then I have also implemented all the possible mo

Gabro 2 Apr 15, 2022
Ocular is a state-of-the-art historical OCR system.

Ocular Ocular is a state-of-the-art historical OCR system. Its primary features are: Unsupervised learning of unknown fonts: requires only document im

228 Dec 30, 2022
かの有名なあの東方二次創作ソング、「bad apple!」のMVをPythonでやってみたって話

bad apple!! 内容 このプログラムは、bad apple!(feat. nomico)のPVをPythonを用いて再現しよう!という内容です。 実はYoutube並びにGithub上に似たようなプログラムがあったしなんならそっちの方が結構良かったりするんですが、一応公開しますw 使い方 こ

赤紫 8 Jan 05, 2023
Code for CVPR 2022 paper "SoftGroup for Instance Segmentation on 3D Point Clouds"

SoftGroup We provide code for reproducing results of the paper SoftGroup for 3D Instance Segmentation on Point Clouds (CVPR 2022) Author: Thang Vu, Ko

Thang Vu 231 Dec 27, 2022
TensorFlow Implementation of FOTS, Fast Oriented Text Spotting with a Unified Network.

FOTS: Fast Oriented Text Spotting with a Unified Network I am still working on this repo. updates and detailed instructions are coming soon! Table of

Masao Taketani 52 Nov 11, 2022
Text modding tools for FF7R (Final Fantasy VII Remake)

FF7R_text_mod_tools Subtitle modding tools for FF7R (Final Fantasy VII Remake) There are 3 tools I made. make_dualsub_mod.exe: Merges (or swaps) subti

10 Dec 19, 2022