Refine your search
Collections
Co-Authors
Year
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Dusane, Bhushan
- Hand Posture Recognition for Complex Decision Making
Abstract Views :182 |
PDF Views:1
We also have described another method which uses previous frame as its context and recognize the gesture performed. Many a times, a gesture recognized can have multiple meaning, or its actual meaning cannot be easily recognized by just extracting features from one frame. So, in such situations we can use previous frame of the gesture performed and extract its features. The information obtained from these features can then be used to avoid the ambiguity in meaning and the gesture can be recognized accurately. These gestures then can be used to make some complex decisions, ultimately driving an application.
Authors
Affiliations
1 Maharashtra Institute of Technology, College of Engineering, Pune, IN
2 School of Computer Science and Information Technology, D.A. University, IN
1 Maharashtra Institute of Technology, College of Engineering, Pune, IN
2 School of Computer Science and Information Technology, D.A. University, IN
Source
Data Mining and Knowledge Engineering, Vol 4, No 4 (2012), Pagination: 186-190Abstract
Gesture recognition can be seen as a way for computers to begin to understand human body language, thus building a richer bridge between machine and humans than primitive text, user interfaces or even GUI’s. Gesture recognition method used in this paper aims on recognizing hand postures as well as facial expressions. Here, facial expressions are used as context for the gesture recognized that helps in giving additional information about the gestures performed. Thus the information obtained from this static posture defines a particular gesture.We also have described another method which uses previous frame as its context and recognize the gesture performed. Many a times, a gesture recognized can have multiple meaning, or its actual meaning cannot be easily recognized by just extracting features from one frame. So, in such situations we can use previous frame of the gesture performed and extract its features. The information obtained from these features can then be used to avoid the ambiguity in meaning and the gesture can be recognized accurately. These gestures then can be used to make some complex decisions, ultimately driving an application.