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International Journal on Document Analysis and Recognition, Volume 24
Volume 24, Number 1, June 2021
- Jean-Christophe Burie, Alicia Fornés, KC Santosh, Muhammad Muzzamil Luqman:
Deep learning for graphics recognition: document understanding and beyond. 1-2 - Bernhard Schäfer, Margret Keuper, Heiner Stuckenschmidt:
Arrow R-CNN for handwritten diagram recognition. 3-17 - Shreya Goyal, Chiranjoy Chattopadhyay, Gaurav Bhatnagar:
Knowledge-driven description synthesis for floor plan interpretation. 19-32 - Zuheng Ming, Jean-Christophe Burie, Muhammad Muzzamil Luqman:
Cross-modal photo-caricature face recognition based on dynamic multi-task learning. 33-48 - Arpita Dutta, Samit Biswas, Amit Kumar Das:
CNN-based segmentation of speech balloons and narrative text boxes from comic book page images. 49-62 - Zelun Wang, Jyh-Charn Liu:
Translating math formula images to LaTeX sequences using deep neural networks with sequence-level training. 63-75 - Solène Tarride, Aurélie Lemaitre, Bertrand Coüasnon, Sophie Tardivel:
Combination of deep neural networks and logical rules for record segmentation in historical handwritten registers using few examples. 77-96 - Deepak Sinwar, Vijaypal Singh Dhaka, Nitesh Pradhan, Saumya Pandey:
Offline script recognition from handwritten and printed multilingual documents: a survey. 97-121 - Duc Phan Van Hoai, Huu-Thanh Duong, Vinh Truong Hoang:
Text recognition for Vietnamese identity card based on deep features network. 123-131 - Mehdi Bonyani, Simindokht Jahangard, Morteza Daneshmand:
Persian handwritten digit, character and word recognition using deep learning. 133-143
Volume 24, Number 3, September 2021
- Josep Lladós, Daniel Lopresti, Seiichi Uchida:
Editorial for special issue on "Advanced Topics in Document Analysis and Recognition". 145-147 - Martin Holecek:
Learning from similarity and information extraction from structured documents. 149-165 - Hussein Adnan Mohammed, Volker Märgner, Giovanni Ciotti:
Learning-free pattern detection for manuscript research. 167-179 - Anna Starynska, David W. Messinger, Yu Kong:
Revealing a history: palimpsest text separation with generative networks. 181-195 - Olfa Mechi, Maroua Mehri, Rolf Ingold, Najoua Essoukri Ben Amara:
A two-step framework for text line segmentation in historical Arabic and Latin document images. 197-218 - Antoine Pirrone, Marie Beurton-Aimar, Nicholas Journet:
Self-supervised deep metric learning for ancient papyrus fragments retrieval. 219-234 - Minesh Mathew, Lluís Gómez, Dimosthenis Karatzas, C. V. Jawahar:
Asking questions on handwritten document collections. 235-249 - Souhail Bakkali, Zuheng Ming, Mickaël Coustaty, Marçal Rusiñol:
EAML: ensemble self-attention-based mutual learning network for document image classification. 251-268 - Sanket Biswas, Pau Riba, Josep Lladós, Umapada Pal:
Beyond document object detection: instance-level segmentation of complex layouts. 269-281 - Yahia Hamdi, Houcine Boubaker, Adel M. Alimi:
Data Augmentation using Geometric, Frequency, and Beta Modeling approaches for Improving Multi-lingual Online Handwriting Recognition. 283-298
Volume 24, Number 4, December 2021
- Arpita Dutta, Arpan Garai, Samit Biswas, Amit Kumar Das:
Segmentation of text lines using multi-scale CNN from warped printed and handwritten document images. 299-313 - Jie Chen, Zhouhui Lian:
TextPolar: irregular scene text detection using polar representation. 315-323 - Debbie Honghee Ko, Ammar Ul Hassan, Jungjae Suk, Jaeyoung Choi:
SKFont: skeleton-driven Korean font generator with conditional deep adversarial networks. 325-337 - Shoubin Li, Qing Wang:
A hybrid approach to recognize generic sections in scholarly documents. 339-348 - Randa I. Elanwar, Wenda Qin, Margrit Betke, Derry Wijaya:
Extracting text from scanned Arabic books: a large-scale benchmark dataset and a fine-tuned Faster-R-CNN model. 349-362
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