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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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Refined modeling of sensor reliability in the belief function framework using contextual discounting

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The TBM global distance measure for the association of uncertain combat ID declarations

TL;DR: The problem is sequential association of combat ID declarations in the multi-target environment and the solution is provided in the framework of ''object to ID declaration'' association based on assignment techniques, derives the global cost of assignment based on the plausibility of the global assignment.
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Target identification using belief functions and implication rules

TL;DR: The theoretical basis of data fusion for the purpose of target identification using the belief function theory is presented, which allows the knowledge sources to supply their information in the form of uncertain implication rules.
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Risk assessment based on weak information using belief functions: a case study in water treatment

TL;DR: This case study shows that belief function theory may be considered as a valuable framework for risk analysis studies in ill-structured or poorly informed application domains.
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An abrupt change detection algorithm for buried landmines localization

TL;DR: A support vector machine algorithm for online abrupt change detection is implemented and proves to be efficient in detecting buried landmines from Bscan data and is evaluated using simulated and real data.
References
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Proceedings Article

Assessing the value of a candidate: comparing belief function and possibility theories

TL;DR: The problem of assessing the value of a candidate is viewed here as a multiple combination problem, and levels of satisfaction of criteria, or levels of confidence are only assumed to take their values in qualitative scales which are just linearly ordered.
Proceedings ArticleDOI

Single-sensor processing and sensor fusion of GPR and EMI data for land mine detection

TL;DR: New results are presented in which a suboptimal processor provides nearly identical performance to that of the optimal processor but with much greater computational efficiency and result that indicate that such an approach can be applied successfully to ground penetrating radar data.

Incertitude, imprécision et additivité en fusion de données : point de vue historique

TL;DR: In this paper, an apercu historique de l'evolution of the notion of probabilite is presented, with a focus on objectivistes and subjectivistes.

Comparison of pre-detection and post-detection fusion for mine detection

TL;DR: This study presents and compares methods suitable for pre-detection and post- detection fusion of multi-sensor data suitable for data that are non-commensurate and sampled at non-coincident points.
Proceedings ArticleDOI

Comparison of belief functions and voting method for fusion of mine detection sensors

TL;DR: Two methods for fusion of mine detection sensors are presented, based on belief functions and on voting procedures, respectively, and it is shown that both of the methods have their advantages and drawbacks, depending on the measurement and operational conditions.