Monitoring human activities with visual sensors is still a challenge, especially when multiple targets are involved. Occlusions, if not properly handled, are a major source of failure. Indoor environments with complex topology require the use of sensor networks whose effective management is by itself a difficult problem. Situated in the context of Ambient Intelligence, this thesis is concerned with both algorithmic and architectural aspects of distributed monitoring systems. The algorithmic approach pursued is that of non–parametric Bayesian filtering, a probabilistic state estimation framework whose multi target formulation allows physically–based modeling of the occlusion process within an appearance based, background independent observat...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
In practical target tracking problems, the target detection performance of the sensors may be unknow...
Tracking people across multiple cameras is a challenging research area in visual computing, especial...
Monitoring human activities in large environments is a challenging problem. Such scenarios impose t...
The employment of visual sensor networks in surveillance systems has brought in as many challenges a...
In the context of Ambient Intelligence a fundamental challenge is the design of monitoring technolog...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
A method for quantifying ambient surveillance is presented, which is based on probabilistic-possibil...
In this paper, a probabilistic approach for tracking multiple persons through a network of distribut...
AbstractThis work proposes a novel filtering algorithm that constitutes an extension of Bayesian par...
This paper presents a scalable Bayesian technique for decentralized state estimation from multiple...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
Building smart home environments which automatically or semi-automatically assist and comfort occupa...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
The adoption of multi-sensor data fusion techniques is essential to effectively merge and analyze he...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
In practical target tracking problems, the target detection performance of the sensors may be unknow...
Tracking people across multiple cameras is a challenging research area in visual computing, especial...
Monitoring human activities in large environments is a challenging problem. Such scenarios impose t...
The employment of visual sensor networks in surveillance systems has brought in as many challenges a...
In the context of Ambient Intelligence a fundamental challenge is the design of monitoring technolog...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
A method for quantifying ambient surveillance is presented, which is based on probabilistic-possibil...
In this paper, a probabilistic approach for tracking multiple persons through a network of distribut...
AbstractThis work proposes a novel filtering algorithm that constitutes an extension of Bayesian par...
This paper presents a scalable Bayesian technique for decentralized state estimation from multiple...
We present a robust distributed algorithm for approximate probabilistic inference in dynamical syste...
Building smart home environments which automatically or semi-automatically assist and comfort occupa...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
The adoption of multi-sensor data fusion techniques is essential to effectively merge and analyze he...
This brief introduces a class of problems and models for the prediction of the scalar field of inter...
In practical target tracking problems, the target detection performance of the sensors may be unknow...
Tracking people across multiple cameras is a challenging research area in visual computing, especial...