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Journal ArticleDOI

Sensor fusion in anti-personnel mine detection using a two-level belief function model

Nada Milisavljevic, +1 more
- Vol. 33, Iss: 2, pp 269-283
TLDR
A two-level approach for modeling and fusion of antipersonnel mine detection sensors in terms of belief functions within the Dempster-Shafer framework is presented and an original decision rule adapted to this type of application is proposed.
Abstract
A two-level approach for modeling and fusion of antipersonnel mine detection sensors in terms of belief functions within the Dempster-Shafer framework is presented. Three promising and complementary sensors are considered: a metal detector, an infrared camera, and a ground-penetrating radar. Since the metal detector, the most often used mine detection sensor, provides measures that have different behaviors depending on the metal content of the observed object, the first level aims at identifying this content and at providing a classification into three classes. Depending on the metal content, the object is further analyzed at the second level toward deciding the final object identity. This process can be applied to any problem where one piece of information induces different reasoning schemes depending on its value. A way to include influence of various factors on sensors in the model is also presented, as well as a possibility that not all sensors refer to the same object. An original decision rule adapted to this type of application is proposed, as well as a way for estimating confidence degrees. More generally, this decision rule can be used in any situation where the different types of errors do not have the same importance. Some examples of obtained results are shown on synthetic data mimicking reality and with increasing complexity. Finally, applications on real data show promising results.

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Citations
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Book ChapterDOI

A quantum neural networks data fusion algorithm and its application for fault diagnosis

TL;DR: An information fusion algorithm based on the quantum neural networks is presented for fault diagnosis in an integrated circuit and it is shown that the quantum fusion fault diagnosis method is more accurate.
Proceedings ArticleDOI

Belief Function Fusion based Self-calibration for Non-dispersive Infrared Gas Sensor

TL;DR: A general belief function fusion framework for NDIR gas sensor calibration, where the focus is on getting a reasonable fused belief function of the true CO2 level, and a modified weighted average approach which utilizes the Wasserstein distance as a measure of the similarity between the belief functions.
Proceedings ArticleDOI

Evidence fusion with contextual discounting for multi-modality medical image segmentation

TL;DR: Quantitative and qualitative results show that the proposed new deep framework allowing us to merge multi-MR image segmentation results using the formalism of Dempster-Shafer theory outperforms the state of the art, and implements an e-ective new idea for merging multi-information within deep neural networks.
Proceedings ArticleDOI

Research on information fusion of infrared and radar sensor based on SVM

TL;DR: It can be found from computer simulation results that the tracking precision improved by information fusion, and mobility was responded in short time.
Book ChapterDOI

Sensor fusion for automated landmine detection on a mobile robot

TL;DR: In this article, feature-based sensor fusion for landmine detection on a mobile robot using several non-selective sensors is described, with a strategy of step-by-step reduction of the false alarm rate with newly developed techniques of selective training and dominant class.
References
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Book

A mathematical theory of evidence

Glenn Shafer
TL;DR: This book develops an alternative to the additive set functions and the rule of conditioning of the Bayesian theory: set functions that need only be what Choquet called "monotone of order of infinity." and Dempster's rule for combining such set functions.
Journal ArticleDOI

Information combination operators for data fusion: a comparative review with classification

TL;DR: A classification of operators issued from the different data fusion theories with respect to their behavior provides a guide for choosing an operator in a given problem and can be refined from the desired properties of the operators, from their decisiveness, and by examining how they deal with conflictive situations.
Journal ArticleDOI

Belief Functions: The Disjunctive Rule of Combination and the Generalized Bayesian Theorem

TL;DR: The Bayes’ theorem is generalized within the transferable belief model framework and the DRC and GBT and their uses for belief propagation in directed belief networks are analysed.
Book ChapterDOI

Constructing the Pignistic Probability Function in a Context of Uncertainty

TL;DR: The probability function is derived axiomatically the probability function that should be used to make decisions given any form of underlying uncertainty.

Technical Report - Randomized Hough Transform: Improved Ellipse Detection with Comparison

TL;DR: An algorithm for the detection of ellipse shapes in images, using the Randomized Hough Transform is described, found to give improvements in accuracy, and a reduction in computation time and the number of false alarms detected.