Title :
Adaptive Flattening for Multidimensional Image Restoration
Author :
Letexier, Damien ; Bourennane, Salah
Author_Institution :
Fresnel Inst., Marseille
fDate :
6/30/1905 12:00:00 AM
Abstract :
Whereas most previous works treating color or hyper- spectral image restoration use hybrid filters or data splitting, some new approaches consider multidimensional or tensor signal processing techniques. Tensor processing methods are based on multilinear algebra and are more efficient than 2-D filtering. However, they rely on orthogonal tensor flattening. The aim of this letter is to show that this orthogonal flattening may not be optimal for multidimensional images. We propose a method to adapt the flattening depending on the data set. Our proposed method is based on the estimation of main directions in multidimensional data. For this purpose, we extend the straight line detection algorithm. Multidimensional filtering method HOSVD - (K1,..., KN) is applied along the estimated directions. We also adapt a quadtree partitioning in order to split tensors into homogeneous sub-tensors to keep local characteristics. Considering some examples of color and hyperspectral images, we present some promising results.
Keywords :
adaptive filters; image denoising; image restoration; quadtrees; stereo image processing; tensors; adaptive flattening; color images; homogeneous subtensors; hyperspectral images; multidimensional filtering; multidimensional image restoration; multidimensional images; multilinear algebra; orthogonal tensor flattening; quadtree partitioning; straight line detection algorithm; tensor processing; Adaptive signal processing; Algebra; Color; Detection algorithms; Filtering; Filters; Image restoration; Multidimensional signal processing; Multidimensional systems; Tensile stress; Color image; higher order singular value decomposition (HOSVD); hyperspectral image; image denoising; multidimensional filtering; tensor;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2007.916045