Miccs: A novel framework for medical image compression using compressive sensing

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Abstract

The vision of some particular applications such as robot-guided remote surgery where the image of a patient body will need to be captured by the smart visual sensor and to be sent on a real-time basis through a network of high bandwidth but yet limited. The particular problem considered for the study is to develop a mechanism of a hybrid approach of compression where the Region-of-Interest (ROI) should be compressed with lossless compression techniques and Non-ROI should be compressed with Compressive Sensing (CS) techniques. So the challenge is gaining equal image quality for both ROI and Non-ROI while overcoming optimized dimension reduction by sparsity into Non-ROI. It is essential to retain acceptable visual quality to Non-ROI compressed region to obtain a better reconstructed image. This step could bridge the trade-off between image quality and traffic load. The study outcomes were compared with traditional hybrid compression methods to find that proposed method achieves better compression performance as compared to conventional hybrid compression techniques on the performances parameters e.g. PSNR. MSE. and Compression Ratio.

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APA

Lakshminarayana, M., & Sarvagya, M. (2018). Miccs: A novel framework for medical image compression using compressive sensing. International Journal of Electrical and Computer Engineering, 8(5), 2818–2828. https://doi.org/10.11591/IJECE.V8I5.PP2818-2828

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