This work presents the development of a software-based Malaysian Sign Language recognition system using Hidden Markov Model. Ninety different gestures are used and tested in this system. Skin segmentation based on YCbCr colour space is implemented in the sign gesture videos to separate the face and hands from the background. The feature vector of sign gesture is represented by chain code, distance between face and hands and tilting orientation of hands. This work has achieved recognition rate of 72.22%
Using hidden Markov models (HMM's), an unobstrusive single view camera system is developed that...
This paper presents an automatic Australian sign language (Auslan) recognition system, which tracks ...
Malaysian Sign Language (MSL) recognition system is a choice of augmenting communication between th...
This doctoral thesis presents a framework for machine based interpretation of Malaysian Sign Languag...
Sign language number recognition system lays down foundation for handshape recognition which address...
Sign language is mainly employed by hearing-impaired people to communicate with each other. However,...
In this paper we discuss a stand-alone system to allow the deaf or hard-of-hearing people and normal...
Hand gesture is one of the most natural and expressive ways for the hearing impaired. However, becau...
Recognition languages are developed for the better communication of the challenged people. The recog...
Abstract—Hand gestures enabling deaf people to communication during their daily lives rather than by...
An American Sign Language (ASL) recognition system developed based on multi-dimensional Hidden Marko...
In recent years, gesture recognition has received much attention from research communities. Computer...
We present a new approach to gesture recognition for use in a signlanguage learning environment. Thi...
[[abstract]]Sign language is the primary means of communication between deaf people and hearing/spea...
This paper presents a gesture recognition approach for sign language using curvature scale space (CS...
Using hidden Markov models (HMM's), an unobstrusive single view camera system is developed that...
This paper presents an automatic Australian sign language (Auslan) recognition system, which tracks ...
Malaysian Sign Language (MSL) recognition system is a choice of augmenting communication between th...
This doctoral thesis presents a framework for machine based interpretation of Malaysian Sign Languag...
Sign language number recognition system lays down foundation for handshape recognition which address...
Sign language is mainly employed by hearing-impaired people to communicate with each other. However,...
In this paper we discuss a stand-alone system to allow the deaf or hard-of-hearing people and normal...
Hand gesture is one of the most natural and expressive ways for the hearing impaired. However, becau...
Recognition languages are developed for the better communication of the challenged people. The recog...
Abstract—Hand gestures enabling deaf people to communication during their daily lives rather than by...
An American Sign Language (ASL) recognition system developed based on multi-dimensional Hidden Marko...
In recent years, gesture recognition has received much attention from research communities. Computer...
We present a new approach to gesture recognition for use in a signlanguage learning environment. Thi...
[[abstract]]Sign language is the primary means of communication between deaf people and hearing/spea...
This paper presents a gesture recognition approach for sign language using curvature scale space (CS...
Using hidden Markov models (HMM's), an unobstrusive single view camera system is developed that...
This paper presents an automatic Australian sign language (Auslan) recognition system, which tracks ...
Malaysian Sign Language (MSL) recognition system is a choice of augmenting communication between th...