Bregman-EM-TV Methods with Application to Optical Nanoscopy
Proceedings of the 2nd International Conference on Scale Space and Variational Methods in Computer Vision, Volume 5567, page 235--246 - april 2009
Measurements in nanoscopic imaging suffer from blurring effects
concerning different point spread functions (PSF). Some apparatus
even have PSFs that are locally dependent on phase shifts. Additionally,
raw data are affected by Poisson noise resulting from laser sampling
and ”photon counts” in fluorescence microscopy. In these applications
standard reconstruction methods (EM, filtered backprojection) deliver
unsatisfactory and noisy results. Starting from a statistical modeling in
terms of a MAP likelihood estimation we combine the iterative EM algorithm
with TV regularization techniques to make an efficient use of
a-priori information. Typically, TV-based methods deliver reconstructed
cartoon-images suffering from contrast reduction. We propose an extension
to EM-TV, based on Bregman iterations and inverse scale space
methods, in order to obtain improved imaging results by simultaneous
contrast enhancement. We illustrate our techniques by synthetic and experimental
biological data.
BibTex references
@InProceedings{BSB09a,
author = {Brune, C. and Sawatzky, A. and Burger, M.},
title = {Bregman-EM-TV Methods with Application to Optical Nanoscopy},
booktitle = {Proceedings of the 2nd International Conference on Scale Space and Variational Methods in Computer Vision},
series = {LNCS},
volume = {5567},
pages = {235--246},
month = {april},
year = {2009},
editor = {(Eds.) X.-C. Tai et al.},
publisher = {Springer},
doi = {10.1007/978-3-642-02256-2_20},
url = \{/2009/BSB09a},
}


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