DocumentCode :
786054
Title :
A fast statistical mixture algorithm for on-line handwriting recognition
Author :
Bellegarda, Eveline J. ; Bellegarda, Jerome R. ; Nahamoo, David ; Nathan, Krishna S.
Author_Institution :
IBM Thomas J. Watson Res. Center, Yorktown Heights, NY, USA
Volume :
16
Issue :
12
fYear :
1994
fDate :
12/1/1994 12:00:00 AM
Firstpage :
1227
Lastpage :
1233
Abstract :
The automatic recognition of online handwriting is considered from an information theoretic viewpoint. Emphasis is placed on the recognition of unconstrained handwriting, a general combination of cursively written word fragments and discretely written characters. Existing recognition algorithms, such as elastic matching, are severely challenged by the variability inherent in unconstrained handwriting. This motivates the development of a probabilistic framework suitable for the derivation of a fast statistical mixture algorithm. This algorithm exhibits about the same degree of complexity as elastic matching, while being more flexible and potentially more robust. The approach relies on a novel front-end processor that, unlike conventional character or stroke-based processing, articulates around a small elementary unit of handwriting called a frame. The algorithm is based on (1) producing feature vectors representing each frame in one (or several) feature spaces, (2) Gaussian K-means clustering in these spaces, and (3) mixture modeling, taking into account the contributions of all relevant clusters in each space. The approach is illustrated by a simple task involving an 81-character alphabet. Both writer-dependent and writer-independent recognition results are found to be competitive with their elastic matching counterparts
Keywords :
handwriting recognition; information theory; online operation; statistical analysis; 81-character alphabet; Gaussian K-means clustering; complexity; cursively written word fragments; discretely written characters; elastic matching; fast statistical mixture algorithm; feature spaces; feature vectors; frame representation; frame-based processing; front-end processor; information theory; mixture modeling; mixture output distributions; online handwriting recognition; probabilistic framework; statistical modeling; unconstrained handwriting; writer-dependent recognition; writer-independent recognition; Acoustic noise; Application software; Character recognition; Clustering algorithms; Handwriting recognition; Keyboards; Optical character recognition software; Robustness; Speech; Writing;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/34.387484
Filename :
387484
Link To Document :
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