scholarly journals Integrated HNAS Network Model Based Lossless Compression with Data Hiding using Parity Check in Medical Images

A massive volume of medical data is generating through advanced medical image modalities. With advancements in telecommunications, Telemedicine, and Teleradiologyy have become the most common and viable methods for effective health care delivery around the globe. For sufficient storage, medical images should be compressed using lossless compression techniques. In this paper, we aim at developing a lossless compression technique to achieve a better compression ratio with reversible data hiding. The proposed work segments foreground and background area in medical images using semantic segmentation with the Hierarchical Neural Architecture Search (HNAS) Network model. After segmenting the medical image, confidential patient data is hidden in the foreground area using the parity check method. Following data hiding, lossless compression of foreground and background is done using Huffman and Lempel-Ziv-Welch methods. The performance of our proposed method has been compared with those obtained from standard lossless compression algorithms and existing reversible data hiding methods. This proposed method achieves better compression ratio and a hundred percent reversible when data extraction.

2021 ◽  
Author(s):  
Fepslin Athish Mon ◽  
Suthendran K ◽  
Jarin T

Abstract The transferring of medical image to the medical practitioner through cloud network with field expects around the globe to get better diagnostics and expect suggestions ever-increasing significantly. Enormous possibility of security treats arises while transferring the medical image through cloud services. In this paper, the trustworthiness, information integrity and authenticity of the patient EMR during storage and transmission over network can be improved without compromising medical quality and diagnosis accuracy. This can be achieved with the help of combined segmentation, cryptography and reversible data hiding on medical images. In this work, we store the patient basic details in the medical image using reversible data hiding with data capacity and security enhancements. The proposed method uses medical images of EMR as cover image, the patient’s details can be encoded in the cover image as data and finally encrypt the image using asymmetric key encryption. The proposed method provides more improvement in integrity, security, authenticity, data capacity and error rate. This method also maintains PSNR value above 51dB.


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