Published October 1, 2018 | Version v1
Journal article Open

OFCS: Optimized Framework of Compressive Sensing for Medical Images in Bottleneck Network Condition

  • 1. Visvesvaraya Technological University
  • 2. REVA University

Description

Compressive sensing is one of teh cost effective solution towards performing compression of heavier form of signals. We reviewed the existing research contribution towards compressive sensing to find that existing system doesnt offer any form of optimization for which reason the signal are superiorly compressed but at the cost of enough resources. Therefore, we introduce a framework that optimizes the performance of the compressive sensing by introducing 4 sequential algorithms for performing Random Sampling, Lossless Compression for region-of-interest, Compressive Sensing using transform-based scheme, and optimization. The contribution of proposed paper is a good balance between computational efficiency and quality of reconstructed medical image when transmitted over network with low channel capacity. The study outcome shows that proposed system offers maximum signal quality and lower algorithm processing time in contrast to existing compression techniuqes on medical images.

Files

22 10Mar18 9617 Updated_IJECE-OFCS (edit lia).pdf

Files (314.2 kB)

Name Size Download all
md5:8b59b381d63df045d5a7bd44d1755166
314.2 kB Preview Download