International audienceIn this paper, we report on experiments with the use of local measures for depth motion for visual action recognition from MPEG encoded RGBD video sequences. We show that such measures can be combined with local space-time video descriptors for appearance to provide a computationally efficient method for recognition of actions.Fisher vectors are used for encoding and concatenating a depth descriptor with existing RGB local descriptors.We then employ a linear SVM for recognizing manipulation actions using such vectors.We evaluate the effectiveness of such measures by comparison to the state-of-the-art using two recent datasets for action recognition in kitchen environments
In some recent years, local space-time features technique has become an popular method for human act...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
We propose an algorithm which combines the discriminative information from depth images as well as f...
In this paper, we propose an effective method to recognize human actions from sequences of depth map...
Human action recognition from the videos is one of the most attractive topics in computer vision dur...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
This paper presents an effective local spatio-temporal descriptor for action recognition from depth ...
This paper presents a local spatio-Temporal descriptor for action recognistion from depth video sequ...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
This paper presents a local spatio-temporal descriptor for action recognition from depth video seque...
Local space-time features capture local events in video and can be adapted to the size, the frequenc...
This paper proposes a framework for recognizing human actions from depth video sequences by designin...
Recent development in affordable depth sensors opens new possibilities in action recognition problem...
In some recent years, local space-time features technique has become an popular method for human act...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
We propose an algorithm which combines the discriminative information from depth images as well as f...
In this paper, we propose an effective method to recognize human actions from sequences of depth map...
Human action recognition from the videos is one of the most attractive topics in computer vision dur...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
In this paper, we propose a robust and effective framework to largely improve the performance of hum...
This paper presents an effective local spatio-temporal descriptor for action recognition from depth ...
This paper presents a local spatio-Temporal descriptor for action recognistion from depth video sequ...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
This paper presents a local spatio-temporal descriptor for action recognition from depth video seque...
Local space-time features capture local events in video and can be adapted to the size, the frequenc...
This paper proposes a framework for recognizing human actions from depth video sequences by designin...
Recent development in affordable depth sensors opens new possibilities in action recognition problem...
In some recent years, local space-time features technique has become an popular method for human act...
Abstract — This paper presents a method to recognize the action being performed by a human in a vide...
We propose an algorithm which combines the discriminative information from depth images as well as f...