Abstract :
Sign language recognition has spawned more and more interest
in humancomputer interaction society. The major challenge that SLR recog-
nition faces now is developing methods that will scale well with increasing
vocabulary size with a limited set of training data for the signer independent
application. The automatic SLR based on hidden Markov models (HMMs) is
very sensitive to gesture's shape information that makes the accurate param-
eters of the HMM not capable of characterizing the ambiguous distributions
of the observations in gesture's features. This paper presents an extension of
the HMMs using interval type-2 fuzzy sets (IT2FSs) to produce interval type-2
fuzzy HMMs to model uncertainties of hypothesis spaces (unknown varieties of
parameters of the decision function). The benet of this enlargement is that it
can control both the randomness and fuzziness of traditional HMM mapping.
Membership function (MF) of type-2 FS is three-dimensional that provides
additional degrees of freedom to evaluate HMM's uncertainties. This system
aspires to be a solution to the scalability problem, i.e. has real potential for
application on a large vocabulary. Furthermore, it does not rely on the use of
data gloves or other means as input devices, and operates in isolated signer-
independent modes. Experimental results show that the interval type-2 fuzzy
HMM has a comparable performance as that of the fuzzy HMM but is more
robust to the gesture variation, while it retains almost the same computational
complexity as that of the FHMM.
Keywords :
Hidden Markov Model , Type-2 Fuzzy Logic , Sign Language , Hand Gesture Recognition