A REVIEW PAPER ON DENOISING MULTI-CHANNEL IMAGES IN PARALLEL MRI BY LOW RANK MATRIX DECOMPOSITION AND BACTERIAL FORAGING ALGORITHM

Abstract

 Parallel magnetic resonance imaging has emerged as an effective means for high-speed imaging in various applications. The reconstruction of parallel magnetic resonance imaging (pMRI) [1] data can be a computationally demanding task. Signal-to-noise ratio is also a concern, especially in high-resolution imaging. We present a patchwise Denoising method for pMRI by exploiting the rank deficiency of multichannel images. For each processed patch and pixel, similar patches are searched with pixel in spatial domain and throughout all coil elements, and arranged in appropriate matrix forms. Then, noise and aliasing artifacts are removed from the structured matrix by applying sparse and low rank matrix decomposition method with Bacterial Foraging Algorithm (BFA). The proposed method validates using both phantom and in vivo brain data sets, producing encouraging results. Specifically, the method can effectively remove both noise and residual aliasing artifact from pMRI reconstructed noisy images, and produce higher peak signal noise rate (PSNR) and structural similarity index matrix (SSIM) than other state-of-the-art Denoising methods [3].The Denoising of pMRI is implemented using Image Processing Toolbox. This work test and found suitable for its purpose. For the implementation of this proposed work we use the Matlab software.

Authors and Affiliations

Tulika Saggar

Keywords

Related Articles

 Wireless Power Transmission

 A great concern has been voiced in recent years over the extensive use of energy, the limited supply of resourses, and the pollution of the environment from the use of present energy conversion systems. Electrical...

CLOUD COMPUTING LOAD BALANCING MODEL WITH HETEROGENEOUS PARTITION

Cloud computing is an on demand service in which shared resources, information, software and other devices are provided according to the clients requirement at specific time . In the cloud computing paradigm, the sc...

 Review on Reducing the Power in Network-on-chip

 Network-on-chip(NoC) is an emerging revolutionary method to integrate numerous cores in a single System-onChip (SoC). The network-on-chip (NoC) design paradigm is recognized as the most viable way to tackle with...

 Novel Web Proxy Cache Replacement Algorithms using Machine Learning Techniques for Performance Enhancement

 A web cache is a mechanism for the temporary storage (caching) of web documents, such as HTML pages and images, to reduce bandwidth usage, server load, and perceived lag. A web cache stores copies of documents pa...

 DETECTION OF COMPUTER VIRUSES USING WELM_ FPSO_FABC

 Computer viruses are big threat for our society .The expansion of various new viruses of varying forms make the prevention quite tuff. Here we proposed WELM_FPSO_FABC to detect computer viruses. The proposed metho...

Download PDF file
  • EP ID EP143530
  • DOI -
  • Views 68
  • Downloads 0

How To Cite

Tulika Saggar (2015).  A REVIEW PAPER ON DENOISING MULTI-CHANNEL IMAGES IN PARALLEL MRI BY LOW RANK MATRIX DECOMPOSITION AND BACTERIAL FORAGING ALGORITHM. International Journal of Engineering Sciences & Research Technology, 4(12), 463-467. https://europub.co.uk/articles/-A-143530