American Sign Language (ASL) is a visual gestural language which is used by many people who are deaf or hard-of-hearing. In this paper, we design a visual recognition system based on action recognition techniques to recognize individual ASL signs. Specifically, we focus on recognition of words in videos of continuous ASL signing. The proposed framework combines multiple signal modalities because ASL includes gestures of both hands, body movements, and facial expressions. We have collected a corpus of RBG + depth videos of multi-sentence ASL performances, from both fluent signers and ASL students; this corpus has served as a source for training and testing sets for multiple evaluation experiments reported in this paper. Experimental results ...
Design and Implementation of an Innovative System for Automatic Recognition of ASL using Machine Lea...
In American Sign Language (ASL), the manual and the non-manual components play crucial semantical an...
We report on the high success rates of our new, scalable, computational approach for sign recognitio...
American Sign Language (ASL) is a visual gestural language which is used by many people who are deaf...
In American Sign Language (ASL) the structure of signed sentences is conveyed by grammatical markers...
Using hidden Markov models (HMM's), an unobstrusive single view camera system is developed that...
Automatically recognizing classifier-based grammatical structures of American Sign Language (ASL) is...
An American Sign Language (ASL) recognition system developed based on multi-dimensional Hidden Marko...
A framework is proposed for the detection of reduplication in digital videos of American Sign Langua...
Deaf and hearing-impaired persons learn American Sign Language (ASL) as their natural language. Ther...
In this research, we present our findings to recognize American Sign Language from series of hand ge...
Complex hand gesture interactions among dynamic sign words may lead to misclassification, which affe...
This paper addresses the problem of automatically recognizing linguistically significant nonmanual e...
In American Sign Language (ASL) as well as other signed languages, different classes of signs (e.g.,...
Sign language (SL), which is a highly visual-spatial, linguistically complete, and natural language,...
Design and Implementation of an Innovative System for Automatic Recognition of ASL using Machine Lea...
In American Sign Language (ASL), the manual and the non-manual components play crucial semantical an...
We report on the high success rates of our new, scalable, computational approach for sign recognitio...
American Sign Language (ASL) is a visual gestural language which is used by many people who are deaf...
In American Sign Language (ASL) the structure of signed sentences is conveyed by grammatical markers...
Using hidden Markov models (HMM's), an unobstrusive single view camera system is developed that...
Automatically recognizing classifier-based grammatical structures of American Sign Language (ASL) is...
An American Sign Language (ASL) recognition system developed based on multi-dimensional Hidden Marko...
A framework is proposed for the detection of reduplication in digital videos of American Sign Langua...
Deaf and hearing-impaired persons learn American Sign Language (ASL) as their natural language. Ther...
In this research, we present our findings to recognize American Sign Language from series of hand ge...
Complex hand gesture interactions among dynamic sign words may lead to misclassification, which affe...
This paper addresses the problem of automatically recognizing linguistically significant nonmanual e...
In American Sign Language (ASL) as well as other signed languages, different classes of signs (e.g.,...
Sign language (SL), which is a highly visual-spatial, linguistically complete, and natural language,...
Design and Implementation of an Innovative System for Automatic Recognition of ASL using Machine Lea...
In American Sign Language (ASL), the manual and the non-manual components play crucial semantical an...
We report on the high success rates of our new, scalable, computational approach for sign recognitio...