International audienceThis paper proposes a framework to discover activities in an unsupervised manner, and add semantics with minimal supervision. The framework uses basic trajectory information as input and goes up to video interpretation. The work reduces the gap between low-level information and semantic interpretation, building an intermediate layer composed of Primitive Events. The proposed representation for primitive events aims at capturing small meaningful motions over the scene with the advantage of being learnt in an unsupervised manner. We propose the discovery of an activity using these Primitive Events as the main descriptors. The activity discovery is done using only real tracking data. Semantics are added to the discovered ...
International audienceExtracting automatically the semantics from visual data is a real challenge. W...
International audienceThe present work presents a novel approach for activity extraction and knowled...
In order to make computers proactive and assistive, we must enable them to perceive, learn, and pred...
International audienceThis paper proposes a framework to recognize and classify loosely constrained ...
International audienceIn this paper, we propose a complete framework based on a Hierarchical Activit...
The main objective of the thesis is to propose a complete framework for the automatic activity disco...
AbstractFormalizing computational models for everyday human activities remains an open challenge. Ma...
International audienceAutomatic detection and analysis of human activities captured by various senso...
International audienceIt is well known that video cameras provide one of the richest, and most promi...
International audienceThe present work presents a new method for activity extraction and reporting f...
International audienceWe propose a new approach for video event learning. The only hypothesis is the...
This paper addresses the issue of activity understanding from video and its semantics-rich descripti...
International audienceThis paper presents an unsupervised approach for learning long-term human acti...
Abstract—Society is rapidly accepting the use of video cameras in many new and varied locations, but...
International audienceIn this work we present a system to extract in an unsu- pervised manner the ma...
International audienceExtracting automatically the semantics from visual data is a real challenge. W...
International audienceThe present work presents a novel approach for activity extraction and knowled...
In order to make computers proactive and assistive, we must enable them to perceive, learn, and pred...
International audienceThis paper proposes a framework to recognize and classify loosely constrained ...
International audienceIn this paper, we propose a complete framework based on a Hierarchical Activit...
The main objective of the thesis is to propose a complete framework for the automatic activity disco...
AbstractFormalizing computational models for everyday human activities remains an open challenge. Ma...
International audienceAutomatic detection and analysis of human activities captured by various senso...
International audienceIt is well known that video cameras provide one of the richest, and most promi...
International audienceThe present work presents a new method for activity extraction and reporting f...
International audienceWe propose a new approach for video event learning. The only hypothesis is the...
This paper addresses the issue of activity understanding from video and its semantics-rich descripti...
International audienceThis paper presents an unsupervised approach for learning long-term human acti...
Abstract—Society is rapidly accepting the use of video cameras in many new and varied locations, but...
International audienceIn this work we present a system to extract in an unsu- pervised manner the ma...
International audienceExtracting automatically the semantics from visual data is a real challenge. W...
International audienceThe present work presents a novel approach for activity extraction and knowled...
In order to make computers proactive and assistive, we must enable them to perceive, learn, and pred...