Scene-Text-Detection-and-Recognition (Pytorch)

Overview

Scene-Text-Detection-and-Recognition (Pytorch)

1. Proposed Method

The models

Our model comprises two parts: scene text detection and scene text recognition. the descriptions of these two models are as follow:

  • Scene Text Detection
    We employ YoloV5 [1] to detect the ROI (Region Of Interest) from an image and Resnet50 [2] to implement the ROI transformation algorithm. This algorithm transforms the coordinates detected by YoloV5 to the proper location, which fits the text well. YoloV5 can detect all ROIs that might be strings while ROI transformation can make the bbox more fit the region of the string. The visualization result is illustrated below, where the bbox of the dark green is ROI detected by YoloV5 and the bbox of the red is ROI after ROI transformation.

  • Scene Text Recognition
    We employ ViT [3] to recognize the string of bbox detected by YoloV5 since our task is not a single text recognition. The transformer-based model achieves the state-of-the-art performance in Natural Language Processing (NLP). The attention mechanism can make the model pay attention to the words that need to be output at the moment. The model architecture is demonstrated below.

The whole training process is shown in the figure below.

Data augmentation

  • Random Scale Resize
    We found that the sizes of the images in the public dataset are different. Therefore, if we resize the small image to the large, most of the image features will be lost. To solve this problem, we apply the random scale resize algorithm to obtain the low-resolution image from the high-resolution image in the training phase. The visualization results are demonstrated as follows.
Original image 72x72 --> 224x224 96x96 --> 224x224 121x121 --> 224x224 146x146 --> 224x224 196x196 --> 224x224
  • ColorJitter
    In the training phase, the model's input is RGB channel. To enhance the reliability of the model, we appply the collorjitter algorithm to make the model see the images with different contrast, brightness, saturation and hue value. And this kind of method is also widely used in image classification. The visualization results are demonstrated as follows.
Input image brightness=0.5 contrast=0.5 saturation=0.5 hue=0.5 brightness=0.5 contrast=0.5 saturation=0.5 hue=0.5
  • Random Rotaion
    After we observe the training data, we found that most of the images in training data are square-shaped (original image), while some of the testing data is a little skewed. Therefore, we apply the random rotation algorithm to make the model more generalization. The visualization results are demonstrated as follows.
Original image Random Rotation Random Horizontal Flip Both

2. Demo

  • Predicted results
    Before we recognize the string bbox detected by YoloV5, we filter out the bbox with a size less than 45*45. Because the image resolution of a bbox with a size less than 45*45 is too low to recognize the correct string.
Input image Scene Text detection Scene Text recognition
驗車
委託汽車代檢
元力汽車公司
新竹區監理所
3c配件
玻璃貼
專業包膜
台灣大哥大
myfone
新店中正
加盟門市
西門町

排骨酥麵
非常感謝
tvbs食尚玩家
蘋果日報
壹週刊
財訊
錢櫃雜誌
聯合報
飛碟電台
等報導
排骨酥專賣店
西門町

排骨酥麵
排骨酥麵
嘉義店
永晟
電動工具行
492913338
  • Attention maps in ViT
    We also visualize the attention maps in ViT, to check whether the model focus on the correct location of the image. The visualization results are demonstrated as follows.
Original image Attention map

3. Competition Results

  • Public Scores
    We conducted extensive experiments, and The results are demonstrated below. From the results, we can see the improvement of the results by adding each module at each stage. At first, we only employed YoloV5 to detect all the ROI in the images, and the result of detection is not good enough. We also compare the result of ViT with data augmentation or not, the results show that our data augmentation is effective to solve this task (compare the last row and the sixth row). In addition, we filter out the bbox with a size less than 45*45 since the resolution of bbox is too low to recognize the correct strings.
Models(Detection/Recognition) Final score Precision Recall
YoloV5(L) / ViT(aug) 0.60926 0.7794 0.9084
YoloV5(L) +
ROI_transformation(Resnet50) / ViT(aug)
0.73148 0.9261 0.9017
YoloV5(L) +
ROI_transformation(Resnet50) +
reduce overlap bbox / ViT(aug)
0.78254 0.9324 0.9072
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug)
0.78527 0.9324 0.9072
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(40 * 40)
0.79373 0.9333 0.9029
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(45 * 45)
0.79466 0.9335 0.9011
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(50 * 50)
0.79431 0.9338 0.8991
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(no aug) + filter bbox(45 * 45)
0.73802 0.9335 0.9011
  • Private Scores
Models(Detection/Recognition) Final score Precision Recall
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(40 * 40)
0.7828 0.9328 0.8919
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(45 * 45)
0.7833 0.9323 0.8968
YoloV5(L) +
ROI_transformation(SEResnet50) +
reduce overlap bbox / ViT(aug) + filter bbox(50 * 50)
0.7830 0.9325 0.8944

4. Computer Equipment

  • System: Windows10、Ubuntu20.04

  • Pytorch version: Pytorch 1.7 or higher

  • Python version: Python 3.6

  • Testing:
    CPU: AMR Ryzen 7 4800H with Radeon Graphics RAM: 32GB
    GPU: NVIDIA GeForce RTX 1660Ti 6GB

  • Training:
    CPU: Intel(R) Xeon(R) Gold 5218 CPU @ 2.30GHz
    RAM: 256GB
    GPU: NVIDIA GeForce RTX 3090 24GB * 2

5. Getting Started

  • Clone this repo to your local
git clone https://github.com/come880412/Scene-Text-Detection-and-Recognition.git
cd Scene-Text-Detection-and-Recognition

Download pretrained models

  • Scene Text Detection
    Please download pretrained models from Scene_Text_Detection. There are three folders, "ROI_transformation", "yolo_models" and "yolo_weight". First, please put the weights in "ROI_transformation" to the path ./Scene_Text_Detection/Tranform_card/models/. Second, please put all the models in "yolo_models" to the ./Scene_Text_Detection/yolov5-master/. Finally, please put the weight in "yolo_weight" to the path ./Scene_Text_Detection/yolov5-master/runs/train/expl/weights/.

  • Scene Text Recogniton
    Please download pretrained models from Scene_Text_Recognition. There are two files in this foler, "best_accuracy.pth" and "character.txt". Please put the files to the path ./Scene_Text_Recogtion/saved_models/.

Inference

  • You should first download the pretrained models and change your path to ./Scene_Text_Detection/yolov5-master/
$ python Text_detection.py
  • The result will be saved in the path '../output/'. Where the folder "example" is the images detected by YoloV5 and after ROI transformation, the file "example.csv" records the coordinates of the bbox, starting from the upper left corner of the coordinates clockwise, respectively (x1, y1), (x2, y2), (x3, y3), and (x4, y4), and the file "exmaple_45.csv" is the predicted result.
  • If you would like to visualize the bbox detected by yoloV5, you can use the function public_crop() in the script ../../data_process.py to extract the bbox from images.

Training

  • You should first download the dataset provided by official, then put the data in the path '../dataset/'. After that, you could use the following script to transform the original data to the training format.
$ python data_process.py
  • Scene_Text_Detection
    There are two models for the scene text detection task: ROI transformation and YoloV5. You could use the follow script to train these two models.
$ cd ./Scene_Text_Detection/yolov5-master # YoloV5
$ python train.py

$ cd ../Tranform_card/ # ROI Transformation
$ python Trainer.py
  • Scene_Text_Recognition
$ cd ./Scene_Text_Recogtion # ViT for text recognition
$ python train.py

References

[1] https://github.com/ultralytics/yolov5
[2] https://github.com/pytorch/vision/blob/main/torchvision/models/resnet.py
[3] https://github.com/roatienza/deep-text-recognition-benchmark
[4] https://www.pyimagesearch.com/2014/08/25/4-point-opencv-getperspective-transform-example/
[5] Hu, J., Shen, L., & Sun, G. (2018). Squeeze-and-excitation networks. In Proceedings of the IEEE conference on computer vision and pattern recognition (pp. 7132-7141).

Owner
Gi-Luen Huang
Gi-Luen Huang
ISBI 2022: Cross-level Contrastive Learning and Consistency Constraint for Semi-supervised Medical Image.

Cross-level Contrastive Learning and Consistency Constraint for Semi-supervised Medical Image Introduction This repository contains the PyTorch implem

25 Nov 09, 2022
PyTorch Implement for Path Attention Graph Network

SPAGAN in PyTorch This is a PyTorch implementation of the paper "SPAGAN: Shortest Path Graph Attention Network" Prerequisites We prefer to create a ne

Yang Yiding 38 Dec 28, 2022
Equivariant Imaging: Learning Beyond the Range Space

Equivariant Imaging: Learning Beyond the Range Space Equivariant Imaging: Learning Beyond the Range Space Dongdong Chen, Julián Tachella, Mike E. Davi

Dongdong Chen 46 Jan 01, 2023
Meta Representation Transformation for Low-resource Cross-lingual Learning

MetaXL: Meta Representation Transformation for Low-resource Cross-lingual Learning This repo hosts the code for MetaXL, published at NAACL 2021. [Meta

Microsoft 36 Aug 17, 2022
Official implementation of deep Gaussian process (DGP)-based multi-speaker speech synthesis with PyTorch.

Multi-speaker DGP This repository provides official implementation of deep Gaussian process (DGP)-based multi-speaker speech synthesis with PyTorch. O

sarulab-speech 24 Sep 07, 2022
[AAAI22] Reliable Propagation-Correction Modulation for Video Object Segmentation

Reliable Propagation-Correction Modulation for Video Object Segmentation (AAAI22) Preview version paper of this work is available at: https://arxiv.or

Xiaohao Xu 70 Dec 04, 2022
A general-purpose encoder-decoder framework for Tensorflow

READ THE DOCUMENTATION CONTRIBUTING A general-purpose encoder-decoder framework for Tensorflow that can be used for Machine Translation, Text Summariz

Google 5.5k Jan 07, 2023
Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021

Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021 [WIP] The code for CVPR 2021 paper 'Disentangled Cycle Consistency for H

ChongjianGE 94 Dec 11, 2022
ArtEmis: Affective Language for Art

ArtEmis: Affective Language for Art Created by Panos Achlioptas, Maks Ovsjanikov, Kilichbek Haydarov, Mohamed Elhoseiny, Leonidas J. Guibas Introducti

Panos 268 Dec 12, 2022
AugMix: A Simple Data Processing Method to Improve Robustness and Uncertainty

AugMix Introduction We propose AugMix, a data processing technique that mixes augmented images and enforces consistent embeddings of the augmented ima

Google Research 876 Dec 17, 2022
Implementation of ToeplitzLDA for spatiotemporal stationary time series data.

Code for the ToeplitzLDA classifier proposed in here. The classifier conforms sklearn and can be used as a drop-in replacement for other LDA classifiers. For in-depth usage refer to the learning from

Jan Sosulski 5 Nov 07, 2022
Unit-Convertor - Unit Convertor Built With Python

Python Unit Converter This project can convert Weigth,length and ... units for y

Mahdis Esmaeelian 1 May 31, 2022
generate-2D-quadrilateral-mesh-with-neural-networks-and-tree-search

generate-2D-quadrilateral-mesh-with-neural-networks-and-tree-search This repository contains single-threaded TreeMesh code. I'm Hua Tong, a senior stu

Hua Tong 18 Sep 21, 2022
A tiny, pedagogical neural network library with a pytorch-like API.

candl A tiny, pedagogical implementation of a neural network library with a pytorch-like API. The primary use of this library is for education. Use th

Sri Pranav 3 May 23, 2022
CM-NAS: Cross-Modality Neural Architecture Search for Visible-Infrared Person Re-Identification (ICCV2021)

CM-NAS Official Pytorch code of paper CM-NAS: Cross-Modality Neural Architecture Search for Visible-Infrared Person Re-Identification in ICCV2021. Vis

JDAI-CV 40 Nov 25, 2022
Continuous Diffusion Graph Neural Network

We present Graph Neural Diffusion (GRAND) that approaches deep learning on graphs as a continuous diffusion process and treats Graph Neural Networks (GNNs) as discretisations of an underlying PDE.

Twitter Research 227 Jan 05, 2023
True Few-Shot Learning with Language Models

This codebase supports using language models (LMs) for true few-shot learning: learning to perform a task using a limited number of examples from a single task distribution.

Ethan Perez 124 Jan 04, 2023
Unified Interface for Constructing and Managing Workflows on different workflow engines, such as Argo Workflows, Tekton Pipelines, and Apache Airflow.

Couler What is Couler? Couler aims to provide a unified interface for constructing and managing workflows on different workflow engines, such as Argo

Couler Project 781 Jan 03, 2023
Unofficial TensorFlow implementation of the Keyword Spotting Transformer model

Keyword Spotting Transformer This is the unofficial TensorFlow implementation of the Keyword Spotting Transformer model. This model is used to train o

Intelligent Machines Limited 8 May 11, 2022
v objective diffusion inference code for JAX.

v-diffusion-jax v objective diffusion inference code for JAX, by Katherine Crowson (@RiversHaveWings) and Chainbreakers AI (@jd_pressman). The models

Katherine Crowson 186 Dec 21, 2022