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Offline cursive script word recognition – a survey

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Abstract.

We review the field of offline cursive word recognition. We mainly deal with the various methods that were proposed to realize the core of recognition in a word recognition system. These methods are discussed in view of the two most important properties of such a system: the size and nature of the lexicon involved, and whether or not a segmentation stage is present. We classify the field into three categories: segmentation-free methods, which compare a sequence of observations derived from a word image with similar references of words in the lexicon; segmentation-based methods, that look for the best match between consecutive sequences of primitive segments and letters of a possible word; and the perception-oriented approach, that relates to methods that perform a human-like reading technique, in which anchor features found all over the word are used to boot-strap a few candidates for a final evaluation phase.

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Received September 21, 1998 / Revised September 2, 1999

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Steinherz, T., Rivlin, E. & Intrator, N. Offline cursive script word recognition – a survey. IJDAR 2, 90–110 (1999). https://doi.org/10.1007/s100320050040

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  • DOI: https://doi.org/10.1007/s100320050040

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