A Klein-Bottle-Based Dictionary for Texture Representation
A natural object of study in texture representation and material classification is the probability density function, in pixel-value space, underlying the set of small patches from the given image. Inspired by the fact that small n × n high-contrast patches from natural images in gray-scale accumulat...
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Veröffentlicht in: | International journal of computer vision 2014-03, Vol.107 (1), p.75-97 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | A natural object of study in texture representation and material classification is the probability density function, in pixel-value space, underlying the set of small patches from the given image. Inspired by the fact that small
n
×
n
high-contrast patches from natural images in gray-scale accumulate with high density around a surface
K
⊂
R
n
2
with the topology of a Klein bottle (Carlsson et al. International Journal of Computer Vision 76(1):1–12,
2008
), we present in this paper a novel framework for the estimation and representation of distributions around
K
, of patches from texture images. More specifically, we show that most
n
×
n
patches from a given image can be projected onto
K
yielding a finite sample
S
⊂
K
, whose underlying probability density function can be represented in terms of Fourier-like coefficients, which in turn, can be estimated from
S
. We show that image rotation acts as a linear transformation at the level of the estimated coefficients, and use this to define a multi-scale rotation-invariant descriptor. We test it by classifying the materials in three popular data sets: The CUReT, UIUCTex and KTH-TIPS texture databases. |
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ISSN: | 0920-5691 1573-1405 |
DOI: | 10.1007/s11263-013-0676-2 |