Title :
Blind Decomposition of Transmission Light Microscopic Hyperspectral Cube Using Sparse Representation
Author :
Begelman, Grigory ; Zibulevsky, Michael ; Rivlin, Ehud ; Kolatt, Tsafrir
Author_Institution :
Dept. of Comput. Sci., Technion - Israel Inst. of Technol., Haifa, Israel
Abstract :
In this paper, we address the problem of fully automated decomposition of hyperspectral images for transmission light microscopy. The hyperspectral images are decomposed into spectrally homogeneous compounds. The resulting compounds are described by their spectral characteristics and optical density. We present the multiplicative physical model of image formation in transmission light microscopy, justify reduction of a hyperspectral image decomposition problem to a blind source separation problem, and provide method for hyperspectral restoration of separated compounds. In our approach, dimensionality reduction using principal component analysis (PCA) is followed by a blind source separation (BSS) algorithm. The BSS method is based on sparsifying transformation of observed images and relative Newton optimization procedure. The presented method was verified on hyperspectral images of biological tissues. The method was compared to the existing approach based on nonnegative matrix factorization. Experiments showed that the presented method is faster and better separates the biological compounds from imaging artifacts. The results obtained in this work may be used for improving automatic microscope hardware calibration and computer-aided diagnostics.
Keywords :
Newton method; biological tissues; biomedical optical imaging; blind source separation; image representation; image restoration; medical image processing; optical microscopy; optimisation; principal component analysis; sparse matrices; Newton optimization procedure; biological tissues; blind source separation; hyperspectral image decomposition; hyperspectral image restoration; imaging artifacts; multiplicative physical model; optical density; principal component analysis; sparse representation; sparsifying image transformation; transmission light microscopy; Biological tissues; Biomedical optical imaging; Blind source separation; Hyperspectral imaging; Image decomposition; Image restoration; Microscopy; Optimization methods; Principal component analysis; Source separation; Blind source separation; hyperspectral imaging; microscopy; sparse analysis; Algorithms; Animals; Arabinose; Hematoxylin; Image Processing, Computer-Assisted; Imino Furanoses; Light; Mice; Microscopy; Myocardium; Principal Component Analysis; Sugar Alcohols;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2009.2015145