Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal features from one or a few samples per gesture class. To tackle these problems, an adaptive local spatiotemporal feature (ALSTF) using fused RGB-D data is proposed. First, motion regions of interest (MRoIs) are adaptively extracted using grayscale and depth velocity variance information to greatly reduce the impact of noise. Then, corners are used as keypoints if their depth, and velocities of grayscale and of depth meet several adaptive local constraints in each MRoI. With further filtering of noise, an accurate and sufficient number of keypoints is obtained within the desired moving body parts (MBPs). Finally, four kinds of multiple descrip...
Sparsity has been showed to be one of the most important properties for visual recognition purposes....
The recognition of dynamic gestures of hands using pure geometric 3D data in real-time is a challeng...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal ...
The purpose of this paper is to describe one-shot-learning gesture recognition systems developed on ...
We introduce a new gesture recognition framework based on learning local motion signatures (LMSs) of...
International audienceIn this paper, we present two large video multi-modal datasets for RGB and RGB...
The objective of this paper is to recognize gestures in videos - both localizing the gesture and cla...
We present a novel approach that classifies full-body human gestures using original spatio-temporal ...
We propose a new action and gesture recognition method based on spatio-temporal covariance descripto...
In this paper, we study one-shot learning gesture recognition on RGB-D data recorded from Microsoft’...
In daily life humans perform a great number of actions continuously. We recognize and interpret thes...
The emergence of depth imaging technologies like the Microsoft Kinect has renewed interest in comput...
Abstract. For operating in real world scenarios, the recognition of human gestures must be adaptive,...
The task of human hand trajectory tracking and gesture trajectory recognition based on synchronized ...
Sparsity has been showed to be one of the most important properties for visual recognition purposes....
The recognition of dynamic gestures of hands using pure geometric 3D data in real-time is a challeng...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal ...
The purpose of this paper is to describe one-shot-learning gesture recognition systems developed on ...
We introduce a new gesture recognition framework based on learning local motion signatures (LMSs) of...
International audienceIn this paper, we present two large video multi-modal datasets for RGB and RGB...
The objective of this paper is to recognize gestures in videos - both localizing the gesture and cla...
We present a novel approach that classifies full-body human gestures using original spatio-temporal ...
We propose a new action and gesture recognition method based on spatio-temporal covariance descripto...
In this paper, we study one-shot learning gesture recognition on RGB-D data recorded from Microsoft’...
In daily life humans perform a great number of actions continuously. We recognize and interpret thes...
The emergence of depth imaging technologies like the Microsoft Kinect has renewed interest in comput...
Abstract. For operating in real world scenarios, the recognition of human gestures must be adaptive,...
The task of human hand trajectory tracking and gesture trajectory recognition based on synchronized ...
Sparsity has been showed to be one of the most important properties for visual recognition purposes....
The recognition of dynamic gestures of hands using pure geometric 3D data in real-time is a challeng...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...