3 January 2013 Blind source separation of images based upon fractional autocorrelation
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Abstract
Blind source separation (BSS) is a process in which mixed signals are separated into their original sources. Both the sources as well as the mixing coefficients are unknown but a priori information about statistical behavior and about the mixing model might be available. We here suggest a generalization of our previous research that showed a new BSS algorithm based on general cross correlation linear operators applied on the sources that are to be separated. In that approach in cases of negligible cross-correlation between the source signals, a very good separation could be obtained. Here we propose to use the fractional Fourier transform in order to reduce the correlation between the source signals and to further enhance the obtained separation performance. We present reduced dependence on the cross-correlation between the source images, resulting in better separation of the mixed sources.
© 2012 SPIE and IS&T
Noam Shamir, Noam Shamir, Natan S. Kopeika, Natan S. Kopeika, Zeev Zalevsky, Zeev Zalevsky, } "Blind source separation of images based upon fractional autocorrelation," Journal of Electronic Imaging 21(4), 043027 (3 January 2013). https://doi.org/10.1117/1.JEI.21.4.043027 . Submission:
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