This paper presents a new scheme for hand posture selection and recognition based on statistical classification. It has applications in telemedicine, virtual reality, computer games, and sign language studies. The focus is placed on (1) how to select an appropriate set of postures having a satisfactory level of discrimination power, and (2) comparison of geometric and moment invariant properties to recognize hand postures. We have introduced cluster-property and cluster-features matrices to ease posture selection and to evaluate different posture characteristics. Simple and fast decision functions are derived for classification, which expedite on-line decision making process. Experimental results confirm the efficacy of the proposed scheme ...
We present a publicly available benchmark database for the problem of hand posture recognition from ...
This paper presents an approach to the recognition of static hand gestures based on data acquired fr...
Abstract. We present a model-based method for hand posture recognition in monocular image sequences ...
This paper presents a new scheme for hand posture selection and recognition based on statistical cla...
A new paradigm has been proposed for gesture selection and recognition. The paradigm is based on sta...
One of the attractive methods for providing natural human-computer interaction is the use of the han...
Developing new techniques for human-computer interaction is very challenging. Vision-based technique...
Hand posture recognition (HPR) plays an important role in human-computer interaction (HCI) since it ...
Abstract: This paper introduces a fast and feasible method for the collection of hand gesture sample...
We present a novel user independent framework for representing and recognizing hand postures used in...
We present a novel user independent framework for representing and recognizing hand postures used in...
We present a novel user independent framework for representing and recognizing hand postures used in...
International audienceHand posture recognition is generally addressed by using either YCbCr (luminan...
Hands are vital in a wide range of fundamental daily activities, and neurological diseases that impe...
Abstract. The paper addresses the problem of visual recognition of several hand postures correspondi...
We present a publicly available benchmark database for the problem of hand posture recognition from ...
This paper presents an approach to the recognition of static hand gestures based on data acquired fr...
Abstract. We present a model-based method for hand posture recognition in monocular image sequences ...
This paper presents a new scheme for hand posture selection and recognition based on statistical cla...
A new paradigm has been proposed for gesture selection and recognition. The paradigm is based on sta...
One of the attractive methods for providing natural human-computer interaction is the use of the han...
Developing new techniques for human-computer interaction is very challenging. Vision-based technique...
Hand posture recognition (HPR) plays an important role in human-computer interaction (HCI) since it ...
Abstract: This paper introduces a fast and feasible method for the collection of hand gesture sample...
We present a novel user independent framework for representing and recognizing hand postures used in...
We present a novel user independent framework for representing and recognizing hand postures used in...
We present a novel user independent framework for representing and recognizing hand postures used in...
International audienceHand posture recognition is generally addressed by using either YCbCr (luminan...
Hands are vital in a wide range of fundamental daily activities, and neurological diseases that impe...
Abstract. The paper addresses the problem of visual recognition of several hand postures correspondi...
We present a publicly available benchmark database for the problem of hand posture recognition from ...
This paper presents an approach to the recognition of static hand gestures based on data acquired fr...
Abstract. We present a model-based method for hand posture recognition in monocular image sequences ...