2007
DOI: 10.1007/s10851-007-0036-3
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Generalized Fourier Descriptors with Applications to Objects Recognition in SVM Context

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Cited by 54 publications
(81 citation statements)
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“…Namely, we propose to use the bispectrum as an invariant under the action of SE(2, N ). These invariants are well established in statistical signal processing [7] and have been introduced and studied in the context of SE(2, N ) and of compact groups in [18]. We mention also [13], devoted to the bispectrum on homogeneous spaces of compact groups.…”
Section: Image Recognitionmentioning
confidence: 99%
“…Namely, we propose to use the bispectrum as an invariant under the action of SE(2, N ). These invariants are well established in statistical signal processing [7] and have been introduced and studied in the context of SE(2, N ) and of compact groups in [18]. We mention also [13], devoted to the bispectrum on homogeneous spaces of compact groups.…”
Section: Image Recognitionmentioning
confidence: 99%
“…where ν is a Haar measure on G. In what follows we only consider the case where G = (R 2 , +) (although more general cases have been already envisaged in image processing, see for instance [13] and [30]). Since G is abelian, every irreducible representation is of dimension one and is given by a continuous group morphism…”
Section: Mathematical Backgroundmentioning
confidence: 99%
“…the definition of the Fourier series. The non abelian case which requires more mathematical developments has been considered for instance in [27] to define generalized Fourier descriptors using the motion group of the plane and in [10] for the construction of so-called shearlets. 3) Very few works are devoted to a mixed approach of signal processing involving both harmonic and Riemannian methods.…”
Section: Introductionmentioning
confidence: 99%