Handwritten-word spotting using biologically inspired features

Tijn van der Zant, Lambert Schomaker, Koen Haak

    Research output: Contribution to journalArticleScientificpeer-review

    Abstract

    For quick access to new handwritten collections, current handwriting recognition methods are too cumbersome. They cannot deal with the lack of labeled data and would require extensive laboratory training for each individual script, style, language and collection. We propose a biologically inspired whole-word recognition method which is used to incrementally elicit word labels in a live, web-based annotation system, named Monk. Since human labor should be minimized given the massive amount of image data, it becomes important to rely on robust perceptual mechanisms in the machine. Recent computational models of the neuro-physiology of vision are applied to isolated word classification. A primate cortex-like mechanism allows to classify text-images that have a low frequency of occurrence. Typically these images are the most difficult to retrieve and often contain named entities and are regarded as the most important to people. Usually standard pattern-recognition technology cannot deal with these text-images if there are not enough labeled instances. The results of this retrieval system are compared to normalized word-image matching and appear to be very promising.

    Original languageEnglish
    Pages (from-to)1945-57
    Number of pages13
    JournalIEEE Transactions on Software Engineering
    Volume30
    Issue number11
    DOIs
    Publication statusPublished - Nov 2008

    Keywords

    • Artificial Intelligence
    • Biomimetics/methods
    • Handwriting
    • Humans
    • Image Enhancement/methods
    • Image Interpretation, Computer-Assisted/methods
    • Information Storage and Retrieval/methods
    • Pattern Recognition, Automated/methods
    • Pattern Recognition, Visual

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