Automatic self-calibration of ad-hoc sensor networks is a critical need for their use in military or civilian applications. In general, self-calibration involves the combination of absolute location information (e.g. GPS) with relative calibration information (e.g. time delay or received signal strength between sensors) over regions of the network. Furthermore, it is generally desirable to distribute the computational burden across the network and minimize the amount of inter-sensor communication. We demonstrate that the information used for sensor calibration is fundamentally local with regard to the network topology and use this observation to reformulate the problem within a graphical model framework. We then demonstrate the utility of n...
This paper describes a technique for the probabilistic self-localization of a sensor network based o...
Belief propagation (BP), also called “sum-product algorithm”, is one of the best-known graphical mod...
Many distributed inference problems in wireless sensor networks can be represented by probabilistic ...
Automatic self-localization is a critical need for the effective use of ad-hoc sensor networks in mi...
International audienceWe consider the problem of relative self-localization of a network of fixed co...
Sensor Networks provide a cheap, unobtrusive, and easy-to-deploy method for gathering large quantiti...
Abstract – Belief propagation (BP) is considered as a prominent information processing framework for...
Sensor networks have quickly risen in importance over the last several years to become an active fie...
The objective of this thesis is the development of cooperative localization and tracking algorithms ...
Of the many state-of-the-art methods for cooperative localization in wireless sensor networks (WSNs)...
Particle filters (PFs) are widely used for nonlinear signal processing in wireless sensor networks (...
We propose a new error modeling approach for location discovery in sensor networks, in the presence ...
We discuss how to obtain the accurate and globally consistent self-calibration of a distributed cam...
This paper presents the posterior linearisation belief propagation (PLBP) algorithm for cooperative ...
This paper presents the posterior linearization belief propagation (PLBP) algorithm for cooperative ...
This paper describes a technique for the probabilistic self-localization of a sensor network based o...
Belief propagation (BP), also called “sum-product algorithm”, is one of the best-known graphical mod...
Many distributed inference problems in wireless sensor networks can be represented by probabilistic ...
Automatic self-localization is a critical need for the effective use of ad-hoc sensor networks in mi...
International audienceWe consider the problem of relative self-localization of a network of fixed co...
Sensor Networks provide a cheap, unobtrusive, and easy-to-deploy method for gathering large quantiti...
Abstract – Belief propagation (BP) is considered as a prominent information processing framework for...
Sensor networks have quickly risen in importance over the last several years to become an active fie...
The objective of this thesis is the development of cooperative localization and tracking algorithms ...
Of the many state-of-the-art methods for cooperative localization in wireless sensor networks (WSNs)...
Particle filters (PFs) are widely used for nonlinear signal processing in wireless sensor networks (...
We propose a new error modeling approach for location discovery in sensor networks, in the presence ...
We discuss how to obtain the accurate and globally consistent self-calibration of a distributed cam...
This paper presents the posterior linearisation belief propagation (PLBP) algorithm for cooperative ...
This paper presents the posterior linearization belief propagation (PLBP) algorithm for cooperative ...
This paper describes a technique for the probabilistic self-localization of a sensor network based o...
Belief propagation (BP), also called “sum-product algorithm”, is one of the best-known graphical mod...
Many distributed inference problems in wireless sensor networks can be represented by probabilistic ...