The authors develop a centralized information fusion architecture from basic principles of information theory and Bayesian statistics. It is well known that any clustering, quantizing, or thresholding of data causes loss of information unless a sufficient statistic is computed in the processing. For the case of wideband active ranging systems, the coherent output of an optimum beamformer and a matched filter is a sufficient statistic that can be transmitted to the fusion center. For unknown target velocity, range, and bearing, the wideband space-time matched filter output can be interpreted as a multidimensional wavelet transform or a delay-scale-bearing map. In this paper, a Bayesian, joint estimation-detection approach is used for computa...
By reviewing the development of information fusion theory in recent years, this paper analyzes the p...
The paper addresses important problems related to improvement of probability or equivalently an impr...
Multitarget detection and tracking algorithms typically presume that sensors are spatially registere...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
We consider a discrete-time Bayesian detection model, in which M sensors collect data records. The ...
This paper develops a mathematical and computational framework for analyzing the expected perfor-man...
In this paper, an optimal multisensor data fusion method is proposed to estimate the state of a high...
In this correspondence, we study different approaches for Bayesian data fusion for distributed targe...
This paper presents a new solution for statistical fusion of multi-sensor information acquired from ...
The appeal of distributed sensing and computation is matched by the formidable challenges it present...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
The probability density function contains not only the first-order and the second-order statistics, ...
A new method is presented for integration of audio and visual information in multiple target trackin...
We consider a well defined joint detection and parameter estimation problem. By combining the Baysia...
An integrated approach that consists of sensor-based filtering algorithms, local processors, and a g...
By reviewing the development of information fusion theory in recent years, this paper analyzes the p...
The paper addresses important problems related to improvement of probability or equivalently an impr...
Multitarget detection and tracking algorithms typically presume that sensors are spatially registere...
Sensor fusion is a method of integrating signals from multiple sources. It allows extracting informa...
We consider a discrete-time Bayesian detection model, in which M sensors collect data records. The ...
This paper develops a mathematical and computational framework for analyzing the expected perfor-man...
In this paper, an optimal multisensor data fusion method is proposed to estimate the state of a high...
In this correspondence, we study different approaches for Bayesian data fusion for distributed targe...
This paper presents a new solution for statistical fusion of multi-sensor information acquired from ...
The appeal of distributed sensing and computation is matched by the formidable challenges it present...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
The probability density function contains not only the first-order and the second-order statistics, ...
A new method is presented for integration of audio and visual information in multiple target trackin...
We consider a well defined joint detection and parameter estimation problem. By combining the Baysia...
An integrated approach that consists of sensor-based filtering algorithms, local processors, and a g...
By reviewing the development of information fusion theory in recent years, this paper analyzes the p...
The paper addresses important problems related to improvement of probability or equivalently an impr...
Multitarget detection and tracking algorithms typically presume that sensors are spatially registere...