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Date
2021Type
- Journal Article
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yes
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Abstract
This paper introduces a premier and innovative (real-time) multi-scale method for target classification in electrosensing. The intent is that of mimicking the behavior of the weakly electric fish, which is able to retrieve much more information about the target by approaching it. The method is based on a family of transform-invariant shape descriptors computed from generalized polarization tensors (GPTs) reconstructed at multiple scales. The evidence provided by the different descriptors at each scale is fused using Dempster--Shafer theory. Numerical simulations show that the recognition algorithm we propose performs undoubtedly well and yields a robust classification. © 2021, Society for Industrial and Applied Mathematics Show more
Publication status
publishedExternal links
Journal / series
SIAM Journal on Imaging SciencesVolume
Pages / Article No.
Publisher
Society for Industrial and Applied MathematicsSubject
classifier combination; weakly electric fish; electrosensing; shape classification; reconstructionOrganisational unit
09504 - Ammari, Habib / Ammari, Habib
Funding
172483 - Mathematics for bio-inspired imaging (SNF)
Related publications and datasets
Is new version of: http://hdl.handle.net/20.500.11850/447113
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