Image compression using neural network
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Abstract
In this work, neural network architecture is used for image data compression. It is well
suited to the problem of image compression due to their massive parallel and distributed
nature. As the digital images require remarkable amount of memory capacity on the disk
and also large amount of bandwidth for transmission; therefore image compression
algorithms play a significant role in real life applications. One of the successful
applications out neural network applications is Principal Component Analysis (PCA)
which is used for the image data reduction. PCA is a mathematical technique to transform
input data set into lower dimensional space and retain most fundamental data of the
original image. In this work, we analyze PCA method with the help of neural network in
which free parameters; the synaptic weights act as the principal components which are
trained through the iterative method technique known as Generalized Hebbian Algorithm
(GHA).
A Comparison with the traditional PCA methods is also performed to demonstrate and
illustrate the training and capabilities of Generalized Hebbian Algorithm for image data
compression. Simulated data is also presented to evaluate their performance. The
evaluated results show that GHA method with neural network architecture gives
promising results as the number of iterations increases over both the traditional PCA
methods; namely, Singular Value Decomposition (SVD) and Gram Schmidt
Orthogonalization Procedure (GSP), in terms of Mean Square Error (MSE), Peak Signal
to Noise Ratio (PSNR) and Structure Similarity Index (SSIM).
Description
ME-EC-Thesis
