Investigation on mammographic image compression and analysis using multiwavelets and neural network
Abstract
In digital mammography, the resulting electronic
image is very large in size. Hence, the size poses a big challenge to
the transmission, storage and manipulation of images.
Microcalcification is one of the earliest sign of breast cancer and
it appears in small size, low contrast radiopacites in high
frequency spectrum of mammographic image. Scalar wavelets
excel multiwavelets in terms of Peak Signal – to Noise Ratio
(PSNR), but fail to capture high frequency information.
Multiwavelet preserves high frequency information. This paper
proposes multiwavelet based mammographic image compression,
and microcalcification analysis in compressed reconstructed
images against original images using multiwavelets and neural
networks. For a set of four mammography images, the proposed
balanced multiwavelet based compression method achieves an
average PSNR of 9.064 dB greater than the existing compression
scheme. It also details the classification results obtained through
the multiwavelet based scheme in comparison with the existing
scalar wavelet based scheme. For a testing sample of 30 images,
the proposed classification scheme outperforms the scalar
wavelet based classification by sensitivity of 2.23% and specificity
of 3.4% for original (uncompressed) images. Also it increases the
sensitivity by 2.72% and specificity by 8.4% for compressed
reconstructed images. This increase in sensitivity and specificity
reveals a better performance of the proposed detection scheme.
URI
978-1-4577-1990-5http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=6178947
http://dspace.unimap.edu.my/123456789/20569
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