학술논문

Comparing adaptation techniques for on-line handwriting recognition
Document Type
Conference
Source
Proceedings of Sixth International Conference on Document Analysis and Recognition Document analysis and recognition Document Analysis and Recognition, 2001. Proceedings. Sixth International Conference on. :486-490 2001
Subject
Computing and Processing
Signal Processing and Analysis
Handwriting recognition
Hidden Markov models
Writing
Maximum likelihood linear regression
Personal digital assistants
Error analysis
Character recognition
Databases
Computer science
Linear regression
Language
Abstract
This paper describes an online handwriting recognition system with focus on adaptation techniques. Our hidden Markov model (HMM)-based recognition system for cursive German script can be adapted to the writing style of a new writer using either a retraining depending on the EM (expectation maximization)-approach or an adaptation according to the MAP (maximum a posteriori) or MLLR (maximum likelihood linear regression)-criterion. The performance of the resulting writer-dependent system increases significantly even if the amount of adaptation data is very small (about 6 words). So this approach is also applicable for online systems in hand-held computers such as PDAs. Special attention was paid to the performance comparison of the different adaptation techniques with the availability of different amounts of adaptation data ranging from a few words tip to 100 words per writer.