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Journal ArticleDOI

Writer adaptation for online handwriting recognition

TLDR
This work uses writer-independent writing style models (lexemes) to identify the styles present in a particular writer's training data and updates these models using the writer's data, demonstrating the feasibility of this approach on both isolated handwritten character recognition and unconstrained word recognition tasks.
Abstract
Writer-adaptation is the process of converting a writer-independent handwriting recognition system into a writer-dependent system. It can greatly increasing recognition accuracy, given adequate writer models. The limited amount of data a writer provides during training constrains the models' complexity. We show how appropriate use of writer-independent models is important for the adaptation. Our approach uses writer-independent writing style models (lexemes) to identify the styles present in a particular writer's training data. These models are then updated using the writer's data. Lexemes in the writer's data for which an inadequate number of training examples is available are replaced with the writer-independent models. We demonstrate the feasibility of this approach on both isolated handwritten character recognition and unconstrained word recognition tasks. Our results show an average reduction in error rate of 16.3 percent for lowercase characters as compared against representing each of the writer's character classes with a single model. In addition, an average error rate reduction of 9.2 percent is shown on handwritten words using only a small amount of data for adaptation.

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Citations
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Journal ArticleDOI

Data clustering: 50 years beyond K-means

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Book ChapterDOI

Data Clustering: 50 Years Beyond K-means

TL;DR: Cluster analysis as mentioned in this paper is the formal study of algorithms and methods for grouping objects according to measured or perceived intrinsic characteristics, which is one of the most fundamental modes of understanding and learning.
Book ChapterDOI

Data clustering: a user’s dilemma

TL;DR: Several recent advances in data clustering are described: clustering ensemble, feature selection, and clustering with constraints.
Journal ArticleDOI

Online and offline handwritten Chinese character recognition: A comprehensive study and new benchmark

TL;DR: In this article, a new adaptation layer is proposed to reduce the mismatch between training and test data on a particular source layer, and the adaptation process can be efficiently and effectively implemented in an unsupervised manner.
Journal ArticleDOI

MathPad2: a system for the creation and exploration of mathematical sketches

TL;DR: Initial feedback from a small user group of the mathematical sketching prototype application, MathPad2, suggests that it has the potential to be a powerful tool for mathematical problem solving and visualization.
References
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Online and off-line handwriting recognition: a comprehensive survey

TL;DR: The nature of handwritten language, how it is transduced into electronic data, and the basic concepts behind written language recognition algorithms are described.
Journal ArticleDOI

A Maximum Likelihood Approach to Continuous Speech Recognition

TL;DR: This paper describes a number of statistical models for use in speech recognition, with special attention to determining the parameters for such models from sparse data, and describes two decoding methods appropriate for constrained artificial languages and one appropriate for more realistic decoding tasks.
Journal ArticleDOI

The state of the art in online handwriting recognition

TL;DR: The state of the art of online handwriting recognition during a period of renewed activity in the field is described, based on an extensive review of the literature, including journal articles, conference proceedings, and patents.
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