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  • Thai Automatic signature verification System Employing Textural Features

    Author(s)
    Das, Abhijit
    Suwanwiwat, Hemmaphan
    Ferrer, Miguel
    Pal, Umapada
    Blumenstein, Michael
    Griffith University Author(s)
    Das, Abhijit
    Year published
    2018
    Metadata
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    Abstract
    This study focuses on a comprehensive study of Automatic Signature Verification (ASV) for off-line Thai signatures; an investigation was carried out to characterise the challenges in Thai ASV and to baseline the performance of Thai ASV employing baseline features, being Local Binary Pattern, Local Directional Pattern, Local Binary and Directional Patterns combined (LBDP), and the baseline shape/feature-based hidden Markov model. As there was no publicly available Thai signature database found in the literature, the authors have developed and proposed a database considering real-world signatures from Thailand. The authors ...
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    This study focuses on a comprehensive study of Automatic Signature Verification (ASV) for off-line Thai signatures; an investigation was carried out to characterise the challenges in Thai ASV and to baseline the performance of Thai ASV employing baseline features, being Local Binary Pattern, Local Directional Pattern, Local Binary and Directional Patterns combined (LBDP), and the baseline shape/feature-based hidden Markov model. As there was no publicly available Thai signature database found in the literature, the authors have developed and proposed a database considering real-world signatures from Thailand. The authors have also identified their latent challenges and characterised Thai signature-based ASV. The database consists of 5,400 signatures from 100 signers. Thai signatures could be bi-script in nature, considering the fact that a single signature can contain only Thai or Roman characters or contain both Roman and Thai, which poses an interesting challenge for script-independent SV. Therefore, along with the baseline experiments, the investigation on the influence and nature of bi-script ASV was also conducted. From the equal error rates and Bhattacharyya distance, the score achieved in the experiments indicate that the Thai SV scenario is a script-independent problem. The open research area on this subject of research has also been addressed.
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    Journal Title
    IET Biometrics
    Volume
    7
    Issue
    6
    DOI
    https://doi.org/10.1049/iet-bmt.2017.0218
    Subject
    Artificial Intelligence and Image Processing not elsewhere classified
    Artificial Intelligence and Image Processing
    Interdisciplinary Engineering
    Feature extraction
    Handwriting recognition
    Hidden Markov models
    Image texture
    Publication URI
    http://hdl.handle.net/10072/382423
    Collection
    • Journal articles

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