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Boosting offline handwritten text recognition in historical documents
  with few labeled lines

Boosting offline handwritten text recognition in historical documents with few labeled lines

4 December 2020
J. C. Aradillas
J. J. Murillo-Fuentes
Pablo Martínez Olmos
ArXivPDFHTML

Papers citing "Boosting offline handwritten text recognition in historical documents with few labeled lines"

9 / 9 papers shown
Title
StylusAI: Stylistic Adaptation for Robust German Handwritten Text
  Generation
StylusAI: Stylistic Adaptation for Robust German Handwritten Text Generation
Nauman Riaz
S. Saifullah
S. Agne
Andreas Dengel
Sheraz Ahmed
DiffM
37
0
0
22 Jul 2024
Spatial Context-based Self-Supervised Learning for Handwritten Text Recognition
Spatial Context-based Self-Supervised Learning for Handwritten Text Recognition
Carlos Peñarrubia
Carlos Garrido-Munoz
J. J. Valero-Mas
Jorge Calvo-Zaragoza
37
1
0
17 Apr 2024
Thread Counting in Plain Weave for Old Paintings Using Semi-Supervised
  Regression Deep Learning Models
Thread Counting in Plain Weave for Old Paintings Using Semi-Supervised Regression Deep Learning Models
A.Delgado
J. J. Murillo-Fuentes
Laura Alba-Carcelén
14
0
0
28 Mar 2023
Crossing Points Detection in Plain Weave for Old Paintings with Deep
  Learning
Crossing Points Detection in Plain Weave for Old Paintings with Deep Learning
A.Delgado
Laura Alba-Carcelén
J. J. Murillo-Fuentes
11
2
0
23 Feb 2023
Fine-tuning Is a Surprisingly Effective Domain Adaptation Baseline in Handwriting Recognition
Fine-tuning Is a Surprisingly Effective Domain Adaptation Baseline in Handwriting Recognition
Jan Kohút
Michal Hradiš
59
7
0
13 Feb 2023
Towards Writing Style Adaptation in Handwriting Recognition
Towards Writing Style Adaptation in Handwriting Recognition
Jan Kohút
Michal Hradiš
M. Kišš
AI4TS
78
4
0
13 Feb 2023
Boosting Modern and Historical Handwritten Text Recognition with
  Deformable Convolutions
Boosting Modern and Historical Handwritten Text Recognition with Deformable Convolutions
S. Cascianelli
Marcella Cornia
Lorenzo Baraldi
Rita Cucchiara
19
22
0
17 Aug 2022
The LAM Dataset: A Novel Benchmark for Line-Level Handwritten Text
  Recognition
The LAM Dataset: A Novel Benchmark for Line-Level Handwritten Text Recognition
S. Cascianelli
Vittorio Pippi
Martin Maarand
Marcella Cornia
Lorenzo Baraldi
Christopher Kermorvant
Rita Cucchiara
21
7
0
16 Aug 2022
KOHTD: Kazakh Offline Handwritten Text Dataset
KOHTD: Kazakh Offline Handwritten Text Dataset
N. Toiganbayeva
M. Kasem
Galymzhan Abdimanap
K. Bostanbekov
Abdelrahman Abdallah
Anel N. Alimova
D. Nurseitov
16
23
0
22 Sep 2021
1