Unconstrained hand detection in still images plays an important role in many hand-related vision problems, for example, hand tracking, gesture analysis, human action recognition and human-machine interaction, and sign language recognition. Although hand detection has been extensively studied for decades, it is still a challenging task with many problems to be tackled. The contributing factors for this complexity include heavy occlusion, low resolution, varying illumination conditions, different hand gestures, and the complex interactions between hands and objects or other hands. In this paper, we propose a multiscale deep learning model for unconstrained hand detection in still images. Deep learning models, and deep convolutional neural net...
Person identification is a process that uniquely identifies an individual based on physical or behav...
Existing hand detection methods usually follow the pipeline of multiple stages with high computation...
Hand gestures can allow for natural approach to human-computer interaction. A novel low com- putatio...
We present Hand-CNN, a novel convolutional network architecture for detecting hand masks and predict...
Although many studies suggest high performance hand detection methods, those methods are likely to b...
Hand Gesture Recognition (HGR) serves as a fundamental way of communication and interaction for huma...
International audienceIn this work we present a convolutional neural network-based algorithm for rec...
The human hand is involved in many computer vision tasks, such as hand posture estimation, hand move...
Hand is an important part of human in communicating with other persons and interacting with objects ...
Hand motion detection and gesture recognition research has attracted large interest due to its wide ...
Visual hand-gesture recognition is being increasingly desired for human-computer interaction interfa...
In this study, we extensively analyze and evaluate the performance of recent deep neural networks (D...
Recently gathered image datasets and new capabilities of high performance computing systems allowed ...
International audience— In this paper, we introduce a new 3D hand gesture recognition approach based...
Schröder M, Ritter H. Hand-Object Interaction Detection with Fully Convolutional Networks. In: The ...
Person identification is a process that uniquely identifies an individual based on physical or behav...
Existing hand detection methods usually follow the pipeline of multiple stages with high computation...
Hand gestures can allow for natural approach to human-computer interaction. A novel low com- putatio...
We present Hand-CNN, a novel convolutional network architecture for detecting hand masks and predict...
Although many studies suggest high performance hand detection methods, those methods are likely to b...
Hand Gesture Recognition (HGR) serves as a fundamental way of communication and interaction for huma...
International audienceIn this work we present a convolutional neural network-based algorithm for rec...
The human hand is involved in many computer vision tasks, such as hand posture estimation, hand move...
Hand is an important part of human in communicating with other persons and interacting with objects ...
Hand motion detection and gesture recognition research has attracted large interest due to its wide ...
Visual hand-gesture recognition is being increasingly desired for human-computer interaction interfa...
In this study, we extensively analyze and evaluate the performance of recent deep neural networks (D...
Recently gathered image datasets and new capabilities of high performance computing systems allowed ...
International audience— In this paper, we introduce a new 3D hand gesture recognition approach based...
Schröder M, Ritter H. Hand-Object Interaction Detection with Fully Convolutional Networks. In: The ...
Person identification is a process that uniquely identifies an individual based on physical or behav...
Existing hand detection methods usually follow the pipeline of multiple stages with high computation...
Hand gestures can allow for natural approach to human-computer interaction. A novel low com- putatio...