In this paper, we performed recognition of isolated sign language gestures - obtained from Australian Sign Language Database (AUSLAN) – using statistics to reduce dimensionality and neural networks to recognize patterns. We designated a set of 70 signal features to represent each gesture as a feature vector instead of a time series, used principal component analysis (PCA) and independent component analysis (ICA) to reduce dimensionality and indicate the features most relevant for gesture detection. To classify the vectors a feedforward neural network was used. The resulting accuracy of detection ranged between 61 to 87%
This paper presents a robust and anticipative real-time gesture recognition and its motion quality a...
Gesture recognition has been studied for a while within the fields of computer vision and pattern re...
Gesture recognition pertains to recognizing meaningful expressions of motion by a human, involving t...
UnrestrictedIn this dissertation, a novel approach for recognizing static and dynamic hand gestures ...
Author presents sign language features that can provide the basis of the sign language automatic rec...
Sign Language Recognition (SLR) is an active area of research due to its important role in Human Com...
Hand gesture recognition is a topic that is still investigated by many scientists for numerous usefu...
Abstract Hand gestures are widely used in human-to-human and human-to-machine communication. Therefo...
The deaf community communicates primarily through the use of sign language. In general, sign languag...
Abstract—This research paper highlights the use of shape and texture information for recognizing ges...
This research presents a computer-vision application to automatically recognize the hand gestures ma...
[[abstract]]The paper introduces a model based hand gesture recognition system, which consists of th...
Developing hand gesture recognition algorithms, and more generally, pattern recognition algorithms i...
Sign Language is the only method used in communication between the hearing-impaired community and co...
[[abstract]]There are many different approaches to recognition of spatio-temporal patterns. Each has...
This paper presents a robust and anticipative real-time gesture recognition and its motion quality a...
Gesture recognition has been studied for a while within the fields of computer vision and pattern re...
Gesture recognition pertains to recognizing meaningful expressions of motion by a human, involving t...
UnrestrictedIn this dissertation, a novel approach for recognizing static and dynamic hand gestures ...
Author presents sign language features that can provide the basis of the sign language automatic rec...
Sign Language Recognition (SLR) is an active area of research due to its important role in Human Com...
Hand gesture recognition is a topic that is still investigated by many scientists for numerous usefu...
Abstract Hand gestures are widely used in human-to-human and human-to-machine communication. Therefo...
The deaf community communicates primarily through the use of sign language. In general, sign languag...
Abstract—This research paper highlights the use of shape and texture information for recognizing ges...
This research presents a computer-vision application to automatically recognize the hand gestures ma...
[[abstract]]The paper introduces a model based hand gesture recognition system, which consists of th...
Developing hand gesture recognition algorithms, and more generally, pattern recognition algorithms i...
Sign Language is the only method used in communication between the hearing-impaired community and co...
[[abstract]]There are many different approaches to recognition of spatio-temporal patterns. Each has...
This paper presents a robust and anticipative real-time gesture recognition and its motion quality a...
Gesture recognition has been studied for a while within the fields of computer vision and pattern re...
Gesture recognition pertains to recognizing meaningful expressions of motion by a human, involving t...