Using hierarchical shape models to spot keywords in cursive handwriting data | IEEE Conference Publication | IEEE Xplore

Using hierarchical shape models to spot keywords in cursive handwriting data


Abstract:

Different instances of a handwritten word consist of the same basic features (humps, cusps, crossings, etc.) arranged in a deformable spatial pattern. Thus, keywords in c...Show More

Abstract:

Different instances of a handwritten word consist of the same basic features (humps, cusps, crossings, etc.) arranged in a deformable spatial pattern. Thus, keywords in cursive text can be detected by looking for the appropriate features in the "correct" spatial configuration. A keyword can be modeled hierarchically as a set of word fragments, each of which consists of lower-level features. To allow flexibility, the spatial configuration of keypoints within a fragment is modeled using a Dryden-Mardia (DM) probability density over the shape of the configuration. In a writer-dependent test on a transcription of the Declaration of Independence (/spl sim/1300 words, /spl sim/7500 characters), the method detected all eleven instances of the keyword "government" with only four false positives.
Date of Conference: 25-25 June 1998
Date Added to IEEE Xplore: 06 August 2002
Print ISBN:0-8186-8497-6
Print ISSN: 1063-6919
Conference Location: Santa Barbara, CA, USA

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