Lossless compression of digital mammography using base switching method

Abstract

Mammography is a specific type of imaging that uses low-dose x-ray system to examine breasts. This is an efficient means of early detection of breast cancer. Archiving and retaining these data for at least three years is expensive, diffi-cult and requires sophisticated data compres-sion techniques. We propose a lossless com-pression method that makes use of the smoothness property of the images. In the first step, de-correlation of the given image is done using two efficient predictors. The two residue images are partitioned into non overlapping sub-images of size 4x4. At every instant one of the sub-images is selected and sent for coding. The sub-images with all zero pixels are identi-fied using one bit code. The remaining sub- images are coded by using base switching method. Special techniques are used to save the overhead information. Experimental results indicate an average compression ratio of 6.44 for the selected database.

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Mulemajalu, R. and Koliwad, S. (2009) Lossless compression of digital mammography using base switching method. Journal of Biomedical Science and Engineering, 2, 336-344. doi: 10.4236/jbise.2009.25049.

Conflicts of Interest

The authors declare no conflicts of interest.

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