2007
DOI: 10.1007/978-3-540-72823-8_32
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Combining Different Types of Scale Space Interest Points Using Canonical Sets

Abstract: Abstract. Scale space interest points capture important photometric and deep structure information of an image. The information content of such points can be made explicit using image reconstruction. In this paper we will consider the problem of combining multiple types of interest points used for image reconstruction. It is shown that ordering the complete set of points by differential (quadratic) TV-norm (which works for single feature types) does not yield optimal results for combined point sets. The paper … Show more

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Cited by 3 publications
(2 citation statements)
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References 28 publications
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“…The minimizer of g → (g, g) k,λ coincides with orthogonal projection of the input image on the span of the corresponding Riesz-representatives {κ i } N i=1 . Visually most appealing results are obtained for 1 < k < 1.5, λ ≈ 10 for bounded domain Sobolev norms, [32,31], while including other features [41,47] such as the top-points of the Laplacian [36,31]. Using covariant derivatives further improves the result in our faster coarse to fine iterative scheme, cf.…”
Section: Input: Tagged Mr Imagesmentioning
confidence: 90%
“…The minimizer of g → (g, g) k,λ coincides with orthogonal projection of the input image on the span of the corresponding Riesz-representatives {κ i } N i=1 . Visually most appealing results are obtained for 1 < k < 1.5, λ ≈ 10 for bounded domain Sobolev norms, [32,31], while including other features [41,47] such as the top-points of the Laplacian [36,31]. Using covariant derivatives further improves the result in our faster coarse to fine iterative scheme, cf.…”
Section: Input: Tagged Mr Imagesmentioning
confidence: 90%
“…The minimizer of g → (g, g) k,λ coincides with orthogonal projection of the input image on the span of the corresponding Riesz representatives {κ i } N i=1 . Visually most appealing results are obtained for 1 < k < 1.5, λ ≈ 10 for bounded domain Sobolev norms,[32,31], while including other features[41,47] such as the top-points of the Laplacian[36,31]. Using covariant derivatives further improves the result in our faster coarse to fine iterative scheme; cf [33,31]…”
mentioning
confidence: 92%