Research on Defect Images Fusion Method Based on Regional Energy Similarity

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Abstract:

Because the fusion rules which are based on coefficient of a single point and coefficient of region has one-sidedness and are easy to make blending images lack fidelity, a new fusion rule is put forward. When this fusion rule fuses the low frequency sub-band resolved by wavelet method, it adequately consider the local areas regional energy and the regional energys similarity of the image which is need to fuse, and it use threshold to choose appropriate fusion rule. Experimental result indicated that this way can preferably keep detail features of the image, and it has some engineering application value.

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Periodical:

Advanced Materials Research (Volumes 791-793)

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1957-1960

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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