We propose the design of a real-time system to recognize and interprethand gestures. The acquisition devices are low cost 3D sensors. 3D hand pose will be segmented, characterized and track using growing neural gas (GNG) structure. The capacity of the system to obtain information with a high degree of freedom allows the encoding of many gestures and a very accurate motion capture. The use of hand pose models combined with motion information provide with GNG permits to deal with the problem of the hand motion representation. A natural interface applied to a virtual mirrorwriting system and to a system to estimate hand pose will be designed to demonstrate the validity of the system
Physical traits such as the shape of the hand and face can be used for human recognition and identif...
Convolutional Neural Network (CNN) has shown promising results for 3D hand pose estimation in depth ...
In this paper we explore the various aspects of hand gesture recognition in real time using neural n...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
Rapid advances in human–computer interaction interfaces have been promising a realistic environment ...
3D hand pose estimation aims at recovering 3D coordinates of joints or mesh vertices of hand from vi...
There is a growing interest in developing computational models of grasping action recognition. This ...
In this paper, we present a novel method for real-time 3D hand pose estimation from single depth ima...
3D Hand pose estimation is an important problem because of its wide range of potential applications,...
In this thesis, a study of two blooming fields in the artificial intelligence topic is carried out. ...
Estimating and reconstructing human hand pose is a crucial task involved in many real world AI appli...
Vision-based 3D human and hand pose analysis has been a fast-growing research area and has aroused ...
Accurate and real-time 3D hand pose estimation is one of the core technologies for human computer in...
In this paper, we present an unified framework for understanding hand action from the first-person v...
Physical traits such as the shape of the hand and face can be used for human recognition and identif...
Convolutional Neural Network (CNN) has shown promising results for 3D hand pose estimation in depth ...
In this paper we explore the various aspects of hand gesture recognition in real time using neural n...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
Rapid advances in human–computer interaction interfaces have been promising a realistic environment ...
3D hand pose estimation aims at recovering 3D coordinates of joints or mesh vertices of hand from vi...
There is a growing interest in developing computational models of grasping action recognition. This ...
In this paper, we present a novel method for real-time 3D hand pose estimation from single depth ima...
3D Hand pose estimation is an important problem because of its wide range of potential applications,...
In this thesis, a study of two blooming fields in the artificial intelligence topic is carried out. ...
Estimating and reconstructing human hand pose is a crucial task involved in many real world AI appli...
Vision-based 3D human and hand pose analysis has been a fast-growing research area and has aroused ...
Accurate and real-time 3D hand pose estimation is one of the core technologies for human computer in...
In this paper, we present an unified framework for understanding hand action from the first-person v...
Physical traits such as the shape of the hand and face can be used for human recognition and identif...
Convolutional Neural Network (CNN) has shown promising results for 3D hand pose estimation in depth ...
In this paper we explore the various aspects of hand gesture recognition in real time using neural n...