The purpose of this paper is to describe one-shot-learning gesture recognition systems developed on the ChaLearn Gesture Dataset (ChaLearn). We use RGB and depth im-ages and combine appearance (Histograms of Oriented Gradients) and motion descriptors (Histogram of Optical Flow) for parallel temporal segmentation and recognition. The Quadratic-Chi distance family is used to measure differences between histograms to cap-ture cross-bin relationships. We also propose a new algorithm for trimming videos — to remove all the unimportant frames from videos. We present two methods that use a combination of HOG-HOF descriptors together with variants of a Dynamic Time Warping technique. Both methods outperform other published methods and help narrow t...
International audienceWe introduce a new HoG (Histogram of Oriented Gradients) tracker for Gesture R...
This paper proposes a novel representation of articulated human actions and gestures and facial expr...
In this work a framework based on histogram of orientation of optical flow (HOOF) and local binary p...
International audienceThis chapter deals with the characterization and the recognition of human gest...
We introduce a new gesture recognition framework based on learning local motion signatures (LMSs) of...
The objective of this paper is to recognize gestures in videos - both localizing the gesture and cla...
Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal ...
Abstract. For operating in real world scenarios, the recognition of human gestures must be adaptive,...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Abstract: The recognition of hand gestures from image sequences is an important and challenging prob...
Hand gestures can be used for natural and intuitive human-computer interaction. To achieve this goal...
The emergence of depth imaging technologies like the Microsoft Kinect has renewed interest in comput...
This paper proposes a novel representation of articulated human actions and gestures and facial expr...
The problem of human action recognition is solved as a machine learning problem. The research work s...
International audienceIn this paper, we propose a novel markovian hybrid system CRF/HMM for gesture ...
International audienceWe introduce a new HoG (Histogram of Oriented Gradients) tracker for Gesture R...
This paper proposes a novel representation of articulated human actions and gestures and facial expr...
In this work a framework based on histogram of orientation of optical flow (HOOF) and local binary p...
International audienceThis chapter deals with the characterization and the recognition of human gest...
We introduce a new gesture recognition framework based on learning local motion signatures (LMSs) of...
The objective of this paper is to recognize gestures in videos - both localizing the gesture and cla...
Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal ...
Abstract. For operating in real world scenarios, the recognition of human gestures must be adaptive,...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Abstract: The recognition of hand gestures from image sequences is an important and challenging prob...
Hand gestures can be used for natural and intuitive human-computer interaction. To achieve this goal...
The emergence of depth imaging technologies like the Microsoft Kinect has renewed interest in comput...
This paper proposes a novel representation of articulated human actions and gestures and facial expr...
The problem of human action recognition is solved as a machine learning problem. The research work s...
International audienceIn this paper, we propose a novel markovian hybrid system CRF/HMM for gesture ...
International audienceWe introduce a new HoG (Histogram of Oriented Gradients) tracker for Gesture R...
This paper proposes a novel representation of articulated human actions and gestures and facial expr...
In this work a framework based on histogram of orientation of optical flow (HOOF) and local binary p...