The purpose of this paper is to propose a solution to an extremely pertinent problem, namely, that of identifying unreliable sensors (in a domain of reliable and unreliable ones) without any knowledge of the ground truth. This fascinating paradox can be formulated in simple terms as trying to identify stochastic liars without any additional information about the truth. Though apparently impossible, we will show that it is feasible to solve the problem, a claim that is counterintuitive in and of itself. One aspect of our contribution is to show how redundancy can be introduced, and how it can be effectively utilized in resolving this paradox. Legacy work and the reported literature (for example, in the so-called weighted majority algorithm) ...
This paper develops a new theory and model for information and sensor validation. The model represen...
We propose a technique for the autonomous detection of the faulty sensors of a sensor array that are...
This technical report addresses the challenge of truth discovery from noisy social sensing data. The...
The purpose of this paper is to propose a solution to an extremely pertinent problem, namely, that o...
In many applications, data from different sensors are aggregated in order to obtain more reliable in...
In many applications, data from different sensors are aggregated in order to obtain more...
This paper deals with the extremely fascinating area of “fusing” the outputs of sensors without any...
The authors would like to thank FEDER financial supp011 from the Project TIN2016-75850-P. lt also w...
The fusioning of data from unreliable sensors has received much research attention. The ...
Sensor fusion is a fundamental research topic that has received significant attention in the literatu...
In systems where agents are required to interact with a partially known and dynamic world, sensors c...
Summary. In systems where agents are required to interact with a partially known and dy-namic world,...
A system reacting to its environment requires sensor input to model the environment. Unfortunately, ...
We describe a novel statistical inference approach to data conversion for mixed-signal interfaces. W...
While exploring an unknown environment, an intelligent agent has only its sensors to guide its actio...
This paper develops a new theory and model for information and sensor validation. The model represen...
We propose a technique for the autonomous detection of the faulty sensors of a sensor array that are...
This technical report addresses the challenge of truth discovery from noisy social sensing data. The...
The purpose of this paper is to propose a solution to an extremely pertinent problem, namely, that o...
In many applications, data from different sensors are aggregated in order to obtain more reliable in...
In many applications, data from different sensors are aggregated in order to obtain more...
This paper deals with the extremely fascinating area of “fusing” the outputs of sensors without any...
The authors would like to thank FEDER financial supp011 from the Project TIN2016-75850-P. lt also w...
The fusioning of data from unreliable sensors has received much research attention. The ...
Sensor fusion is a fundamental research topic that has received significant attention in the literatu...
In systems where agents are required to interact with a partially known and dynamic world, sensors c...
Summary. In systems where agents are required to interact with a partially known and dy-namic world,...
A system reacting to its environment requires sensor input to model the environment. Unfortunately, ...
We describe a novel statistical inference approach to data conversion for mixed-signal interfaces. W...
While exploring an unknown environment, an intelligent agent has only its sensors to guide its actio...
This paper develops a new theory and model for information and sensor validation. The model represen...
We propose a technique for the autonomous detection of the faulty sensors of a sensor array that are...
This technical report addresses the challenge of truth discovery from noisy social sensing data. The...