Visual activity recognition plays a fundamental role in several research fields as a way to extract semantic meaning of images and videos. Prior work has mostly focused on classification tasks, where a label is given for a video clip. However, real life scenarios require a method to browse a continuous video flow, automatically identify relevant temporal segments and classify them accordingly to target activities. This paper proposes a knowledge-driven event recognition framework to address this problem. The novelty of the method lies in the combination of a constraint-based ontology language for event modeling with robust algorithms to detect, track and re-identify people using color-depth sensing (Kinect((R)) sensor). This combination ena...
The management of digital video has become a very challenging problem as the amount of video content...
The world is facing an ageing population phenomenon, coupled with health and social problems, which ...
Human activity recognition has gained an increasing relevance in computer vision and it can be tackl...
Visual activity recognition plays a fundamental role in several research fields as a way to extract ...
International audienceVisual activity recognition plays a fundamental role in several research field...
Combining multimodal concept streams from heterogeneous sensors is a problem superficially explored ...
We describe a novel technique to combine motion data with scene information to capture activity char...
The recognition of activities of daily living is an important research area of interest in recent ye...
The recognition of complex actions is still a challenging task in Computer Vision especially in dail...
This work deals with the problem of human activity recognition. It is greatly motivated by research ...
Abstract — In many domains such as health monitoring, the semantic information provided by automatic...
International audienceExtracting automatically the semantics from visual data is a real challenge. W...
International audienceIn this paper, we propose a complete framework based on a Hierarchical Activit...
Activity recognition has been a growing research topic in the last years and its application varies ...
International audienceWe herein present a hierarchical model-based framework for event detection usi...
The management of digital video has become a very challenging problem as the amount of video content...
The world is facing an ageing population phenomenon, coupled with health and social problems, which ...
Human activity recognition has gained an increasing relevance in computer vision and it can be tackl...
Visual activity recognition plays a fundamental role in several research fields as a way to extract ...
International audienceVisual activity recognition plays a fundamental role in several research field...
Combining multimodal concept streams from heterogeneous sensors is a problem superficially explored ...
We describe a novel technique to combine motion data with scene information to capture activity char...
The recognition of activities of daily living is an important research area of interest in recent ye...
The recognition of complex actions is still a challenging task in Computer Vision especially in dail...
This work deals with the problem of human activity recognition. It is greatly motivated by research ...
Abstract — In many domains such as health monitoring, the semantic information provided by automatic...
International audienceExtracting automatically the semantics from visual data is a real challenge. W...
International audienceIn this paper, we propose a complete framework based on a Hierarchical Activit...
Activity recognition has been a growing research topic in the last years and its application varies ...
International audienceWe herein present a hierarchical model-based framework for event detection usi...
The management of digital video has become a very challenging problem as the amount of video content...
The world is facing an ageing population phenomenon, coupled with health and social problems, which ...
Human activity recognition has gained an increasing relevance in computer vision and it can be tackl...