PyTorch implementation of an end-to-end Handwritten Text Recognition (HTR) system based on attention encoder-decoder networks

Overview

AttentionHTR

PyTorch implementation of an end-to-end Handwritten Text Recognition (HTR) system based on attention encoder-decoder networks. Scene Text Recognition (STR) benchmark model [1], trained on synthetic scene text images, is used to perform transfer learning from the STR domain to HTR. Different fine-tuning approaches are investigated using the multi-writer datasets: Imgur5K [2] and IAM [3].

For more details, refer to our paper at arXiv: https://arxiv.org/abs/2201.09390

Dependencies

This work was tested with Python 3.6.8, PyTorch 1.9.0, CUDA 11.5 and CentOS Linux release 7.9.2009 (Core). Create a new virtual environment and install all the necessary Python packages:

python3 -m venv attentionhtr-env
source attentionhtr-env/bin/activate
pip install --upgrade pip
python3 -m pip install -r AttentionHTR/requirements.txt

Content

Our pre-trained models

Download our pre-trained models from here. The names of the .pth files are explained in the table below. There are 6 models in total, 3 for each character set, corresponding to the dataset they perform best on.

Character set Imgur5K IAM Both datasets
Case-insensitive AttentionHTR-Imgur5K.pth AttentionHTR-IAM.pth AttentionHTR-General.pth
Case-sensitive AttentionHTR-Imgur5K-sensitive.pth AttentionHTR-IAM-sensitive.pth AttentionHTR-General-sensitive.pth

Print the character sets using the Python string module: string.printable[:36] for the case-insensitive and string.printable[:-6] for the case-sensitive character set.

Pre-trained STR benchmark models can be downloaded from here.

Demo

  • Download the AttentionHTR-General-sensitive.pth model and place it into /model/saved_models.

  • Directory /dataset-demo contains demo images. Go to /model and create an LMDB dataset from them with python3 create_lmdb_dataset.py --inputPath ../dataset-demo/ --gtFile ../dataset-demo/gt.txt --outputPath result/dataset-demo/. Note that under Windows you may need to tune the map_size parameter manually for the lmdb.open() function.

  • Obtain predictions with python3 test.py --eval_data result/dataset-demo --Transformation TPS --FeatureExtraction ResNet --SequenceModeling BiLSTM --Prediction Attn --saved_model saved_models/AttentionHTR-General-sensitive.pth --sensitive. The last two rows in the terminal should be

    Accuracy: 90.00000000
    Norm ED: 0.04000000
    
  • Inspect predictions in /model/result/AttentionHTR-General-sensitive.pth/log_predictions_dataset-demo.txt. Columns: batch number, ground truth string, predicted string, match (0/1), running accuracy.

Use the models for fine-tuning or predictions

Partitions

Prepare the train, validation (for fine-tuning) and test (for testing and for predicting on unseen data) partitions with word-level images. For the Imgur5K and the IAM datasets you may use our scripts in /process-datasets.

LMDB datasets

When using the PyTorch implementation of the STR benchmark model [1], images need to be converted into an LMDB dataset. See this section for details. An LMDB dataset offers extremely cheap read transactions [4]. Alternatively, see this demo that uses raw images.

Predictions and fine-tuning

The pre-trained models can be used for predictions or fine-tuning on additional datasets using an implementation in /model, which is a modified version of the official PyTorch implementation of the STR benchmark [1]. Use test.py for predictions and train.py for fine-tuning. In both cases use the following arguments:

  • --Transformation TPS --FeatureExtraction ResNet --SequenceModeling BiLSTM --Prediction Attn to define architecture.
  • --saved_model to provide a path to a pre-trained model. In case of train.py it will be used as a starting point in fine-tuning and in the case of test.py it will be used for predictions.
  • --sensitive for the case-sensitive character set. No such argument for the case-insensitive character set.

Specifically for fine-tuning use:

  • --FT to signal that model parameters must be initialized from a pre-trained model in --saved_model and not randomly.
  • --train_data and --valid_data to provide paths to training and validation data, respectively.
  • --select_data "/" and --batch_ratio 1 to use all data. Can be used to define stratified batches.
  • --manualSeed to assign an integer identifyer for the resulting model. The original purpose of this argument is to set a random seed.
  • --patience to set the number of epochs to wait for the validation loss to decrease below the last minimum.

Specifically for predicting use:

  • --eval_data to provide a path to evaluation data.

Note that test.py outputs its logs and a copy of the evaluated model into /result.

All other arguments are described inside the scripts. Original instructions for using the scripts in /model are available here.

For example, to fine-tune one of our case-sensitive models on an additional dataset:

CUDA_VISIBLE_DEVICES=3 python3 train.py \
--train_data my_train_data \
--valid_data my_val_data \
--select_data "/" \
--batch_ratio 1 \
--FT \
--manualSeed 1
--Transformation TPS \
--FeatureExtraction ResNet \
--SequenceModeling BiLSTM \
--Prediction Attn \
--saved_model saved_models/AttentionHTR-General-sensitive.pth \
--sensitive

To use the same model for predictions:

CUDA_VISIBLE_DEVICES=0 python3 test.py \
--eval_data my_unseen_data \
--Transformation TPS \
--FeatureExtraction ResNet \
--SequenceModeling BiLSTM \
--Prediction Attn \
--saved_model saved_models/AttentionHTR-General.pth \
--sensitive

Acknowledgements

  • Our implementation is based on Clova AI's deep text recognition benchmark.
  • The authors would like to thank Facebook Research for the Imgur5K dataset.
  • The computations were performed through resources provided by the Swedish National Infrastructure for Computing (SNIC) at Chalmers Centre for Computational Science and Engineering (C3SE).

References

[1]: Baek, J. et al. (2019). What is wrong with scene text recognition model comparisons? dataset and model analysis. In Proceedings of the IEEE/CVF International Conference on Computer Vision (pp. 4715-4723). https://arxiv.org/abs/1904.01906

[2]: Krishnan, P. et al. (2021). TextStyleBrush: Transfer of Text Aesthetics from a Single Example. arXiv preprint arXiv:2106.08385. https://arxiv.org/abs/2106.08385

[3]: Marti, U. V., & Bunke, H. (2002). The IAM-database: an English sentence database for offline handwriting recognition. International Journal on Document Analysis and Recognition, 5(1), 39-46. https://doi.org/10.1007/s100320200071

[4]: Lightning Memory-Mapped Database. Homepage: https://www.symas.com/lmdb

Citation

@article{kass2022attentionhtr,
  title={AttentionHTR: Handwritten Text Recognition Based on Attention Encoder-Decoder Networks},
  author={Kass, D. and Vats, E.},
  journal={arXiv preprint arXiv:2201.09390},
  year={2022}
}

Contact

Dmitrijs Kass ([email protected])

Ekta Vats ([email protected])

Owner
Dmitrijs Kass
Data Science student at Uppsala University
Dmitrijs Kass
VSR-Transformer - This paper proposes a new Transformer for video super-resolution (called VSR-Transformer).

VSR-Transformer By Jiezhang Cao, Yawei Li, Kai Zhang, Luc Van Gool This paper proposes a new Transformer for video super-resolution (called VSR-Transf

Jiezhang Cao 225 Nov 13, 2022
Meta-Learning Sparse Implicit Neural Representations (NeurIPS 2021)

Meta-SparseINR Official PyTorch implementation of "Meta-learning Sparse Implicit Neural Representations" (NeurIPS 2021) by Jaeho Lee*, Jihoon Tack*, N

Jaeho Lee 41 Nov 10, 2022
This repository contains the entire code for our work "Two-Timescale End-to-End Learning for Channel Acquisition and Hybrid Precoding"

Two-Timescale-DNN Two-Timescale End-to-End Learning for Channel Acquisition and Hybrid Precoding This repository contains the entire code for our work

QiyuHu 3 Mar 07, 2022
A weakly-supervised scene graph generation codebase. The implementation of our CVPR2021 paper ``Linguistic Structures as Weak Supervision for Visual Scene Graph Generation''

README.md shall be finished soon. WSSGG 0 Overview 1 Installation 1.1 Faster-RCNN 1.2 Language Parser 1.3 GloVe Embeddings 2 Settings 2.1 VG-GT-Graph

Keren Ye 35 Nov 20, 2022
This repo contains the implementation of the algorithm proposed in Off-Belief Learning, ICML 2021.

Off-Belief Learning Introduction This repo contains the implementation of the algorithm proposed in Off-Belief Learning, ICML 2021. Environment Setup

Facebook Research 32 Jan 05, 2023
Official code for 'Pixel-wise Energy-biased Abstention Learning for Anomaly Segmentationon Complex Urban Driving Scenes'

PEBAL This repo contains the Pytorch implementation of our paper: Pixel-wise Energy-biased Abstention Learning for Anomaly Segmentationon Complex Urba

Yu Tian 115 Dec 29, 2022
A Context-aware Visual Attention-based training pipeline for Object Detection from a Webpage screenshot!

CoVA: Context-aware Visual Attention for Webpage Information Extraction Abstract Webpage information extraction (WIE) is an important step to create k

Keval Morabia 41 Jan 01, 2023
A PyTorch Implementation of PGL-SUM from "Combining Global and Local Attention with Positional Encoding for Video Summarization", Proc. IEEE ISM 2021

PGL-SUM: Combining Global and Local Attention with Positional Encoding for Video Summarization PyTorch Implementation of PGL-SUM From "PGL-SUM: Combin

Evlampios Apostolidis 35 Dec 22, 2022
An example showing how to use jax to train resnet50 on multi-node multi-GPU

jax-multi-gpu-resnet50-example This repo shows how to use jax for multi-node multi-GPU training. The example is adapted from the resnet50 example in d

Yangzihao Wang 20 Jul 04, 2022
Code for "Diffusion is All You Need for Learning on Surfaces"

Source code for "Diffusion is All You Need for Learning on Surfaces", by Nicholas Sharp Souhaib Attaiki Keenan Crane Maks Ovsjanikov NOTE: the linked

Nick Sharp 247 Dec 28, 2022
Multivariate Time Series Forecasting with efficient Transformers. Code for the paper "Long-Range Transformers for Dynamic Spatiotemporal Forecasting."

Spacetimeformer Multivariate Forecasting This repository contains the code for the paper, "Long-Range Transformers for Dynamic Spatiotemporal Forecast

QData 440 Jan 02, 2023
Software that can generate photos from paintings, turn horses into zebras, perform style transfer, and more.

CycleGAN PyTorch | project page | paper Torch implementation for learning an image-to-image translation (i.e. pix2pix) without input-output pairs, for

Jun-Yan Zhu 11.5k Dec 30, 2022
An unopinionated replacement for PyTorch's Dataset and ImageFolder, that handles Tar archives

Simple Tar Dataset An unopinionated replacement for PyTorch's Dataset and ImageFolder classes, for datasets stored as uncompressed Tar archives. Just

Joao Henriques 47 Dec 20, 2022
ElegantRL is featured with lightweight, efficient and stable, for researchers and practitioners.

Lightweight, efficient and stable implementations of deep reinforcement learning algorithms using PyTorch. 🔥

AI4Finance 2.5k Jan 08, 2023
YOLOX-Paddle - A reproduction of YOLOX by PaddlePaddle

YOLOX-Paddle A reproduction of YOLOX by PaddlePaddle 数据集准备 下载COCO数据集,准备为如下路径 /ho

QuanHao Guo 6 Dec 18, 2022
Code for KDD'20 "Generative Pre-Training of Graph Neural Networks"

GPT-GNN: Generative Pre-Training of Graph Neural Networks GPT-GNN is a pre-training framework to initialize GNNs by generative pre-training. It can be

Ziniu Hu 346 Dec 19, 2022
Code for Efficient Visual Pretraining with Contrastive Detection

Code for DetCon This repository contains code for the ICCV 2021 paper "Efficient Visual Pretraining with Contrastive Detection" by Olivier J. Hénaff,

DeepMind 56 Nov 13, 2022
CCNet: Criss-Cross Attention for Semantic Segmentation (TPAMI 2020 & ICCV 2019).

CCNet: Criss-Cross Attention for Semantic Segmentation Paper Links: Our most recent TPAMI version with improvements and extensions (Earlier ICCV versi

Zilong Huang 1.3k Dec 27, 2022
Deep Learning Theory

Deep Learning Theory 整理了一些深度学习的理论相关内容,持续更新。 Overview Recent advances in deep learning theory 总结了目前深度学习理论研究的六个方向的一些结果,概述型,没做深入探讨(2021)。 1.1 complexity

fq 103 Jan 04, 2023
Official PyTorch implementation of CAPTRA: CAtegory-level Pose Tracking for Rigid and Articulated Objects from Point Clouds

CAPTRA: CAtegory-level Pose Tracking for Rigid and Articulated Objects from Point Clouds Introduction This is the official PyTorch implementation of o

Yijia Weng 96 Dec 07, 2022