ICDAR2019 Robust Reading Challenge on Multi-lingual Scene Text Detection and Recognition — RRC-MLT-2019
Nibal Nayef,Cheng-Lin Liu,Jean-Marc Ogier,Yash Patel,Michal Busta,Pinaki Nath Chowdhury,Dimosthenis Karatzas,Wafa Khlif,Jiri Matas,Umapada Pal,Jean-Christophe Burie +10 more
- 01 Sep 2019
- pp 1582-1587
TL;DR: The RRC-MLT-2019 challenge as discussed by the authors was the first edition of the multi-lingual scene text (MLT) detection and recognition challenge, which aims to systematically benchmark and push the state-of-the-art forward.
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Abstract: With the growing cosmopolitan culture of modern cities, the need of robust Multi-Lingual scene Text (MLT) detection and recognition systems has never been more immense. With the goal to systematically benchmark and push the state-of-the-art forward, the proposed competition builds on top of the RRC-MLT-2017 with an additional end-to-end task, an additional language in the real images dataset, a large scale multi-lingual synthetic dataset to assist the training, and a baseline End-to-End recognition method. The real dataset consists of 20,000 images containing text from 10 languages. The challenge has 4 tasks covering various aspects of multi-lingual scene text: (a) text detection, (b) cropped word script classification, (c) joint text detection and script classification and (d) end-to-end detection and recognition. In total, the competition received 60 submissions from the research and industrial communities. This paper presents the dataset, the tasks and the findings of the presented RRC-MLT-2019 challenge.
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Figures

TABLE I. RESULTS OF THE RRC-MLT-2019 CHALLENGE FOR TASK-1: MULTI-LINGUAL TEXT DETECTION 
TABLE III. RESULTS OF THE RRC-MLT-2019 CHALLENGE FOR TASK-3: JOINT TEXT DETECTION AND SCRIPT IDENTIFICATION 
TABLE IV. RESULTS OF THE RRC-MLT-2019 CHALLENGE FOR TASK-4: END-TO-END TEXT DETECTION AND RECOGNITION 
TABLE II. RESULTS OF THE RRC-MLT-2019 CHALLENGE FOR TASK-2: CROPPED WORD SCRIPT IDENTIFICATION
Citations
•Posted Content
Text Recognition in the Wild: A Survey
TL;DR: This literature review attempts to present the entire picture of the field of scene text recognition, which provides a comprehensive reference for people entering this field, and could be helpful to inspire future research.
Text Recognition in the Wild: A Survey
TL;DR: A recent literature review as discussed by the authors summarizes the fundamental problems and the state-of-the-art associated with scene text recognition, introduces new insights and ideas, provides a comprehensive review of publicly available resources, and points out directions for future work.
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What If We Only Use Real Datasets for Scene Text Recognition? Toward Scene Text Recognition With Fewer Labels
Jeonghun Baek,Yusuke Matsui,Kiyoharu Aizawa +2 more
- 20 Jun 2021
TL;DR: Recently, Fan et al. as discussed by the authors proposed to train a scene text recognition model with fewer real labels and achieved state-of-the-art performance on scene text classification without synthetic data.
•Proceedings Article
From Two to One: A New Scene Text Recognizer With Visual Language Modeling Network
Yuxin Wang,Hongtao Xie,Shancheng Fang,Jing Wang,Shenggao Zhu,Yongdong Zhang +5 more
- 01 Jan 2021
TL;DR: Zhang et al. as mentioned in this paper proposed a Visual Language Modeling Network (VisionLAN), which views the visual and linguistic information as a union by directly enduing the vision model with language capability.
On the General Value of Evidence, and Bilingual Scene-Text Visual Question Answering
Xinyu Wang,Yuliang Liu,Chunhua Shen,Chun Chet Ng,Canjie Luo,Lianwen Jin,Chee Seng Chan,Anton van den Hengel,Liangwei Wang +8 more
- 14 Jun 2020
TL;DR: A dataset that takes a step towards addressing the VQA problem in that it contains questions expressed in two languages, and an evaluation process that co-opts a well understood image-based metric to reflect the method’s ability to reason.
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Contour Detection and Hierarchical Image Segmentation
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ICDAR 2015 competition on Robust Reading
Dimosthenis Karatzas,Lluis Gomez-Bigorda,Anguelos Nicolaou,Suman K. Ghosh,Andrew D. Bagdanov,Masakazu Iwamura,Jiri Matas,Lukas Neumann,Vijay Chandrasekhar,Shijian Lu,Faisal Shafait,Seiichi Uchida,Ernest Valveny +12 more
- 23 Aug 2015
TL;DR: A new Challenge 4 on Incidental Scene Text has been added to the Challenges on Born-Digital Images, Focused Scene Images and Video Text and tasks assessing End-to-End system performance have been introduced to all Challenges.
ICDAR 2013 Robust Reading Competition
Dimosthenis Karatzas,Faisal Shafait,Seiichi Uchida,Masakazu Iwamura,Lluís Gómez i Bigorda,Sergi Robles Mestre,Joan Mas,David Fernandez Mota,Jon Almazan,Lluís-Pere de las Heras +9 more
- 25 Aug 2013
TL;DR: The datasets and ground truth specification are described, the performance evaluation protocols used are details, and the final results are presented along with a brief summary of the participating methods.
Synthetic Data for Text Localisation in Natural Images
Ankush Gupta,Andrea Vedaldi,Andrew Zisserman +2 more
- 27 Jun 2016
TL;DR: In this article, a Fully-Convolutional Regression Network (FCRN) was proposed to perform text detection and bounding-box regression at all locations and multiple scales in an image.
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