Physical traits such as the shape of the hand and face can be used for human recognition and identification in video surveillance systems and in biometric authentication smart card systems, as well as in personal health care. However, the accuracy of such systems suffers from illumination changes, unpredictability, and variability in appearance (e.g. occluded faces or hands, cluttered backgrounds, etc.). This work evaluates different statistical and chrominance models in different environments with increasingly cluttered backgrounds where changes in lighting are common and with no occlusions applied, in order to get a reliable neural network reconstruction of faces and hands, without taking into account the structural and temporal kinematic...
Natural Human Computer Interaction (HCI) is the demand of today’s technology oriented world. Detecti...
Hands are an indispensable part of human bodies used in our everyday life to express ourselves and ...
This thesis examines how convolutional neural networks can applied to the problem of hand detection ...
Physical traits such as the shape of the hand and face can be used for human recognition and identif...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
In this paper we describe a robust and efficient procedure to detect skin region with homogeneous co...
International audienceIn this work we present a convolutional neural network-based algorithm for rec...
In this study, we extensively analyze and evaluate the performance of recent deep neural networks (D...
From the moment of human beings coming to earth, hands are the most dexterouspart on our body. Our a...
Abstract Biometric based systems for individual authentication are increasingly becoming indispensab...
Recently gathered image datasets and new capabilities of high performance computing systems allowed ...
In this article, we present an evaluation of the application of statistical shape models for automat...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
Scientists are developing hand gesture recognition systems to improve authentic, efficient, and effo...
Unconstrained hand detection in still images plays an important role in many hand-related vision pro...
Natural Human Computer Interaction (HCI) is the demand of today’s technology oriented world. Detecti...
Hands are an indispensable part of human bodies used in our everyday life to express ourselves and ...
This thesis examines how convolutional neural networks can applied to the problem of hand detection ...
Physical traits such as the shape of the hand and face can be used for human recognition and identif...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
In this paper we describe a robust and efficient procedure to detect skin region with homogeneous co...
International audienceIn this work we present a convolutional neural network-based algorithm for rec...
In this study, we extensively analyze and evaluate the performance of recent deep neural networks (D...
From the moment of human beings coming to earth, hands are the most dexterouspart on our body. Our a...
Abstract Biometric based systems for individual authentication are increasingly becoming indispensab...
Recently gathered image datasets and new capabilities of high performance computing systems allowed ...
In this article, we present an evaluation of the application of statistical shape models for automat...
We propose the design of a real-time system to recognize and interprethand gestures. The acquisition...
Scientists are developing hand gesture recognition systems to improve authentic, efficient, and effo...
Unconstrained hand detection in still images plays an important role in many hand-related vision pro...
Natural Human Computer Interaction (HCI) is the demand of today’s technology oriented world. Detecti...
Hands are an indispensable part of human bodies used in our everyday life to express ourselves and ...
This thesis examines how convolutional neural networks can applied to the problem of hand detection ...