Result Details
Towards Writing Style Adaptation in Handwriting Recognition
        KOHÚT, J.; HRADIŠ, M.; KIŠŠ, M. Towards Writing Style Adaptation in Handwriting Recognition. In Document Analysis and Recognition - ICDAR 2023. Lecture Notes in Computer Science. Lecture Notes in Computer Science. San José: Springer Nature Switzerland AG, 2023. no. 1, p. 377-394.  ISBN: 978-3-031-41684-2. ISSN: 0302-9743.
    
                Type
            
        
                conference paper
            
        
                Language
            
        
                English
            
        
            Authors
            
        
                Kohút Jan, Ing., DCGM (FIT)
                
Hradiš Michal, Ing., Ph.D., UAMT (FEEC), DCGM (FIT)
Kišš Martin, Ing., DCGM (FIT)
        Hradiš Michal, Ing., Ph.D., UAMT (FEEC), DCGM (FIT)
Kišš Martin, Ing., DCGM (FIT)
                    Abstract
            
        One of the challenges of handwriting recognition is to transcribe a large number of vastly different writing styles. State-of-the-art approaches do not explicitly use information about the writer's style, which may be limiting overall accuracy due to various ambiguities. We explore models with writer-dependent parameters which take the writer's identity as an additional input. The proposed models can be trained on datasets with partitions likely written by a single author (e.g. single letter, diary, or chronicle). We propose a Writer Style Block (WSB), an adaptive instance normalization layer conditioned on learned embeddings of the partitions. We experimented with various placements and settings of WSB and contrastively pre-trained embeddings. We show that our approach outperforms a baseline with no WSB in a writer-dependent scenario and that it is possible to estimate embeddings for new writers. However, domain adaptation using simple finetuning in a writer-independent setting provides superior accuracy at a similar computational cost. The proposed approach should be further investigated in terms of training stability and embedding regularization to overcome such a baseline.
            
                Keywords
            
        Handwritten text recognition, OCR, Domain adaptation, Domain dependent parameters, Finetuning, CTC.
                URL
            
        
                Published
            
            
                    2023
                    
                
            
                    Pages
                
            
                        377–394
                
            
                    Journal
                
            
                    Lecture Notes in Computer Science, vol. 14190, no. 1, ISSN 0302-9743
                
            
                        Proceedings
                
            
                    Document Analysis and Recognition - ICDAR 2023
                
            
                    Series
                
            
                    Lecture Notes in Computer Science
                
            
                    Conference
                
            
                    International Conference on Document Analysis and Recognition
                
            
                    ISBN
                
            
                    978-3-031-41684-2
                
            
                    Publisher
                
            
                    Springer Nature Switzerland AG
                
            
                    Place
                
            
                    San José
                
            
                    DOI
                
            
                EID Scopus
                
            
                    BibTeX
                
            @inproceedings{BUT185150,
  author="Jan {Kohút} and Michal {Hradiš} and Martin {Kišš}",
  title="Towards Writing Style Adaptation in Handwriting Recognition",
  booktitle="Document Analysis and Recognition - ICDAR 2023",
  year="2023",
  series="Lecture Notes in Computer Science",
  journal="Lecture Notes in Computer Science",
  volume="14190",
  number="1",
  pages="377--394",
  publisher="Springer Nature Switzerland AG",
  address="San José",
  doi="10.1007/978-3-031-41685-9\{_}24",
  isbn="978-3-031-41684-2",
  issn="0302-9743",
  url="https://pero.fit.vutbr.cz/publications"
}
                Projects
            
        
        
            
        
    
    
        Machine learning for printed heritage digitisation, MK, NAKI III – program na podporu aplikovaného výzkumu v oblasti národní a kulturní identity na léta 2023 až 2030, DH23P03OVV066, start: 2023-03-01, end: 2027-12-31, running
            
        
                Departments