Total Text Dataset. It consists of 1555 images with more than 3 different text orientations: Horizontal, Multi-Oriented, and Curved, one of a kind.

Overview

Total-Text-Dataset (Official site)

Updated on April 29, 2020 (Detection leaderboard is updated - highlighted E2E methods. Thank you shine-lcy.)

Updated on March 19, 2020 (Query on the new groundtruth of test set)

Updated on Sept. 08, 2019 (New training groundtruth of Total-Text is now available)

Updated on Sept. 07, 2019 (Updated Guided Annotation toolbox for scene text image annotation)

Updated on Sept. 07, 2019 (Updated baseline as to our IJDAR)

Updated on August 01, 2019 (Extended version with new baseline + annotation tool is accepted at IJDAR)

Updated on May 30, 2019 (Important announcement on Total-Text vs. ArT dataset)

Updated on April 02, 2019 (Updated table ranking with default vs. our proposed DetEval)

Updated on March 31, 2019 (Faster version DetEval.py, support Python3. Thank you princewang1994.)

Updated on March 14, 2019 (Updated table ranking with evaluation protocol info.)

Updated on November 26, 2018 (Table ranking is included for reference.)

Updated on August 24, 2018 (Newly added Guided Annotation toolbox folder.)

Updated on May 15, 2018 (Added groundtruth in '.txt' format.)

Updated on May 14, 2018 (Added feature - 'Do not care' candidates filtering is now available in the latest python scripts.)

Updated on April 03, 2018 (Added pixel level groundtruth)

Updated on November 04, 2017 (Added text level groundtruth)

Released on October 27, 2017

News

  • We received some questions in regard to the new groundtruth for the test set of Total-Text. Here is an update. We do not release a new version of the test set groundtruth because

     1) there is no need of standardising the length of the groundtruth vertices for testing purpose, it was proposed to facilitate training only, and
     2) a new version of groundtruth would make the previous benchmarks irrelevant.
    

Do contact us if you think there is a valid reason to require the new groundtruth for the test set, we shall discuss about it.

  • TOTAL-TEXT is a word-level based English curve text dataset. If you are interested in text-line based dataset with both English and Chinese instances, we highly recommend you to refer SCUT-CTW1500. In addition, a Robust Reading Challenge on Arbitrary-Shaped Text (RRC-ArT), which is extended from Total-Text and SCUT-CTW1500, was held at ICDAR2019 to stimulate more innovative ideas on the arbitrary-shaped text reading task. Congratulations to all winners and challengers. The technical report of ArT can be found on at this https URL.

Important Announcement

Total-Text and SCUT-CTW1500 are now part of the training set of the largest curved text dataset - ArT (Arbitrary-Shaped Text dataset). In order to retain the validity of future benchmarking on Total-Text datasets, the test-set images of Total-Text should be removed (with the corresponding ID provided HERE) from the ArT dataset shall one intend to leverage the extra training data from the ArT dataset. We count on the trust of the research community to perform such removal operation to attain the fairness of the benchmarking.

Table Ranking

  • The results from recent papers on Total-Text dataset are listed below where P=Precision, R=Recall & F=F-score.
  • If your result is missing or incorrect, please do not hesisate to contact us.
  • The baseline scores are based on our proposed [Poly-FRCNN-3] in this folder.
  • *Pascal VOC IoU metric; **Polygon Regression

Detection Leaderboard

Method Reported
on paper
DetEval
(tp=0.4, tr=0.8)
(Default)
DetEval
(tp=0.6, tr=0.7)
(New Proposal)
Published at
P R F P R F P R F
Our Baseline [paper] 78.0 68.0 73.0 - - - 78.0 68.0 73.0 IJDAR2020
CRAFTS [paper] 89.5 85.4 87.4 - - - - - - ECCV2020
#ASTS_Weakly-ResNet101 (E2E) [paper] - - 87.3 - - - - - - TIP2020
TextFuseNet [paper] 89.0 85.3 87.1 - - - - - - IJCAI2020
#Boundary (E2E) [paper] 88.9 85.0 87.0 - - - - - - AAAI2020
PolyPRNet [paper] 88.1 85.3 86.7 - - - - - - ACCV2020
#Qin et al. (E2E) [paper] 87.8 85.0 86.4 - - - - - - ICCV2019
100%Poly [paper] 88.2 83.3 85.6 - - - - - - arXiv:2012
ContourNet [paper] 86.9 83.9 85.4 - - - - - - CVPR2020
#Text Perceptron (E2E) [paper] 88.8 81.8 85.2 - - - - - - AAAI2020
PAN-640 [paper] 89.3 81.0 85.0 - - - - - - ICCV2019
DB-ResNet50 (800) [paper] 87.1 82.5 84.7 - - - - - - AAAI2020
TextCohesion [paper] 88.1 81.4 84.6 - - - - - - arXiv:1904
Feng et al. [paper] 87.3 81.1 84.1 - - - - - - IJCV2020
ReLaText [paper] 84.8 83.1 84.0 - - - - - - arXiv:2003
CRAFT [paper] 87.6 79.9 83.6 - - - - - - CVPR2019
LOMO MS [paper] 87.6 79.3 83.3 - - - - - - CVPR2019
SPCNet [paper] 83.0 82.8 82.9 - - - - - - AAAI2019
#ABCNet (E2E) [paper] 85.4 80.1 82.7 - - - - - - CVPR2020
ICG [paper] 82.1 80.9 81.5 - - - - - - PR2019
FTSN [paper] *84.7 *78.0 *81.3 - - - - - - ICPR2018
PSENet-1s [paper] 84.02 77.96 80.87 - - - - - - CVPR2019
1TextField [paper] 81.2 79.9 80.6 76.1 75.1 75.6 83.0 82.0 82.5 TIP2019
#TextDragon (E2E) [paper] 85.6 75.7 80.3 - - - - - - ICCV2019
CSE [paper] 81.4
(**80.9)
79.7
(**80.3)
80.2
(**80.6)
- - - - - - CVPR2019
MSR [paper] 85.2 73.0 78.6 82.7 68.3 74.9 81.4 72.5 76.7 arXiv:1901
ATTR [paper] 80.9 76.2 78.5 - - - - - - CVPR2019
TextSnake [paper] 82.7 74.5 78.4 - - - - - - ECCV2018
1CTD [paper] 74.0 71.0 73.0 60.7 58.8 59.8 76.5 73.8 75.2 PR2019
#TextNet (E2E) [paper] 68.2 59.5 63.5 - - - - - - ACCV2018
#,2Mask TextSpotter (E2E) [paper] 69.0 55.0 61.3 68.9 62.5 65.5 82.5 75.2 78.6 ECCV2018
CENet [paper] 59.9 54.4 57.0 - - - - - - ACCV2018
#Textboxes (E2E) [paper] 62.1 45.5 52.5 - - - - - - AAAI2017
EAST [paper] 50.0 36.2 42.0 - - - - - - CVPR2017
SegLink [paper] 30.3 23.8 26.7 - - - - - - CVPR2017

Note:

# Framework that does end-to-end training (i.e. detection + recognition).

1For the results of TextField and CTD, the improved versions of their original paper were used, and this explains why the performance is better.

2For Mask-TextSpotter, the relatively poor performance reported in their paper was due to a bug in the input reading module (which was fixed recently). The authors were informed about this issue.

End-to-end Recognition Leaderboard
(None refers to recognition without any lexicon; Full lexicon contains all words in test set.)

Method Backbone None (%) Full (%) FPS Published at
CRAFTS [paper] ResNet50-FPN 78.7 - - ECCV2020
MANGO [paper] ResNet50-FPN 72.9 83.6 4.3 AAAI2021
Text Perceptron [paper] ResNet50-FPN 69.7 78.3 - AAAI2020
ABCNet-MS [paper] ResNet50-FPN 69.5 78.4 6.9 CVPR2020
CharNet H-88 MS [paper] ResNet50-Hourglass57 69.2 - 1.2 ICCV2019
Qin et al. [paper] ResNet50-MSF 67.8 - - ICCV2019
ASTS_Weakly [paper] ResNet101-FPN 65.3 84.2 2.5 TIP2020
Boundary [paper] ResNet50-FPN 65.0 76.1 - AAAI2020
ABCNet [paper] ResNet50-FPN 64.2 75.7 17.9 CVPR2020
CAPNet [paper] ResNet50-FPN 62.7 - - ICASSP2020
Feng et al. [paper] VGG 55.8 79.2 - IJCV2020
TextNet [paper] ResNet50-SAM 54.0 - 2.7 ACCV2018
Mask TextSpotter [paper] ResNet50-FPN 52.9 71.8 4.8 ECCV2018
TextDragon [paper] VGG16 48.8 74.8 - ICCV2019
Textboxes [paper] ResNet50-FPN 36.3 48.9 1.4 AAAI2017

Description

In order to facilitate a new text detection research, we introduce Total-Text dataset (IJDAR)(ICDAR-17 paper) (presentation slides), which is more comprehensive than the existing text datasets. The Total-Text consists of 1555 images with more than 3 different text orientations: Horizontal, Multi-Oriented, and Curved, one of a kind.

Citation

If you find this dataset useful for your research, please cite

@article{CK2019,
  author    = {Chee Kheng Ch’ng and
               Chee Seng Chan and
               Chenglin Liu},
  title     = {Total-Text: Towards Orientation Robustness in Scene Text Detection},
  journal   = {International Journal on Document Analysis and Recognition (IJDAR)},
  volume    = {23},
  pages     = {31-52},
  year      = {2020},
  doi       = {10.1007/s10032-019-00334-z},
}

Feedback

Suggestions and opinions of this dataset (both positive and negative) are greatly welcome. Please contact the authors by sending email to chngcheekheng at gmail.com or cs.chan at um.edu.my.

License and Copyright

The project is open source under BSD-3 license (see the LICENSE file).

For commercial purpose usage, please contact Dr. Chee Seng Chan at cs.chan at um.edu.my

©2017-2020 Center of Image and Signal Processing, Faculty of Computer Science and Information Technology, University of Malaya.

Owner
Chee Seng Chan
Chee Seng Chan
A simple Security Camera created using Opencv in Python where images gets saved in realtime in your Dropbox account at every 5 seconds

Security Camera using Opencv & Dropbox This is a simple Security Camera created using Opencv in Python where images gets saved in realtime in your Dro

Arpit Rath 1 Jan 31, 2022
Msos searcher - A half-hearted attempt at finding a magic square of squares

MSOS searcher A half-hearted attempt at finding (or rather searching) a MSOS (Magic Square of Squares) in the spirit of the Parker Square. Running I r

Niels Mündler 1 Jan 02, 2022
OCR, Object Detection, Number Plate, Real Time

README.md PrePareded anaconda env requirements.txt clova AI → deep text recognition → trained weights (ex, .pth) wpod-net weights (ex, .h5 , .json) ht

Kaven Lee 7 Dec 06, 2022
A python programusing Tkinter graphics library to randomize questions and answers contained in text files

RaffleOfQuestions Um programa simples em python, utilizando a biblioteca gráfica Tkinter para randomizar perguntas e respostas contidas em arquivos de

Gabriel Ferreira Rodrigues 1 Dec 16, 2021
textspotter - An End-to-End TextSpotter with Explicit Alignment and Attention

An End-to-End TextSpotter with Explicit Alignment and Attention This is initially described in our CVPR 2018 paper. Getting Started Installation Clone

Tong He 323 Nov 10, 2022
Resizing Canny Countour In Python

Resizing_Canny_Countour Install Visual Studio Code , https://code.visualstudio.com/download Select Python and install with terminal( pip install openc

Walter Ng 1 Nov 07, 2021
Extracting Tables from Document Images using a Multi-stage Pipeline for Table Detection and Table Structure Recognition:

Multi-Type-TD-TSR Check it out on Source Code of our Paper: Multi-Type-TD-TSR Extracting Tables from Document Images using a Multi-stage Pipeline for

Pascal Fischer 178 Dec 27, 2022
A Joint Video and Image Encoder for End-to-End Retrieval

Frozen️ in Time ❄️ ️️️️ ⏳ A Joint Video and Image Encoder for End-to-End Retrieval (arXiv) Repository to contain the code, models, data for end-to-end

225 Dec 25, 2022
A list of hyperspectral image super-solution resources collected by Junjun Jiang

A list of hyperspectral image super-resolution resources collected by Junjun Jiang. If you find that important resources are not included, please feel free to contact me.

Junjun Jiang 301 Jan 05, 2023
Detect and fix skew in images containing text

Alyn Skew detection and correction in images containing text Image with skew Image after deskew Install and use via pip! Recommended way(using virtual

Kakul 230 Dec 21, 2022
Tools for manipulating and evaluating the hOCR format for representing multi-lingual OCR results by embedding them into HTML.

hocr-tools About About the code Installation System-wide with pip System-wide from source virtualenv Available Programs hocr-check -- check the hOCR f

OCRopus 285 Dec 08, 2022
The project is an official implementation of our paper "3D Human Pose Estimation with Spatial and Temporal Transformers".

3D Human Pose Estimation with Spatial and Temporal Transformers This repo is the official implementation for 3D Human Pose Estimation with Spatial and

Ce Zheng 363 Dec 28, 2022
A simple Digits Recogniser made in Python

⭐ Python Digit Recogniser A simple digit Recogniser made in Python Demo Run Locally Clone the project git clone https://github.com/yashraj-n/python-

Yashraj narke 4 Nov 29, 2021
RRD: Rotation-Sensitive Regression for Oriented Scene Text Detection

RRD: Rotation-Sensitive Regression for Oriented Scene Text Detection For more details, please refer to our paper. Citing Please cite the related works

Minghui Liao 102 Jun 29, 2022
TedEval: A Fair Evaluation Metric for Scene Text Detectors

TedEval: A Fair Evaluation Metric for Scene Text Detectors Official Python 3 implementation of TedEval | paper | slides Chae Young Lee, Youngmin Baek,

Clova AI Research 167 Nov 20, 2022
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
Play the Namibian game of Owela against a terrible AI. Built using Django and htmx.

Owela Club A Django project for playing the Namibian game of Owela against a dumb AI. Built following the rules described on the Mancala World wiki pa

Adam Johnson 18 Jun 01, 2022
Ackermann Line Follower Robot Simulation.

Ackermann Line Follower Robot This is a simulation of a line follower robot that works with steering control based on Stanley: The Robot That Won the

Lucas Mazzetto 2 Apr 16, 2022
https://arxiv.org/abs/1904.01941

Character-Region-Awareness-for-Text-Detection- https://arxiv.org/abs/1904.01941 Train You can train SynthText data use python source/train_SynthText.p

DayDayUp 120 Dec 28, 2022