Title of article
A Framework for Recognizing the Simultaneous Aspects of American Sign Language
Author/Authors
Vogler، نويسنده , , Christian and Metaxas، نويسنده , , Dimitris، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2001
Pages
27
From page
358
To page
384
Abstract
The major challenge that faces American Sign Language (ASL) recognition now is developing methods that will scale well with increasing vocabulary size. Unlike in spoken languages, phonemes can occur simultaneously in ASL. The number of possible combinations of phonemes is approximately 1.5×109, which cannot be tackled by conventional hidden Markov model-based methods. Gesture recognition, which is less constrained than ASL recognition, suffers from the same problem. In this paper we present a novel framework to ASL recognition that aspires to being a solution to the scalability problems. It is based on breaking down the signs into their phonemes and modeling them with parallel hidden Markov models. These model the simultaneous aspects of ASL independently. Thus, they can be trained independently, and do not require consideration of the different combinations at training time. We show in experiments with a 22-sign-vocabulary how to apply this framework in practice. We also show that parallel hidden Markov models outperform conventional hidden Markov models.
Journal title
Computer Vision and Image Understanding
Serial Year
2001
Journal title
Computer Vision and Image Understanding
Record number
1693898
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