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Paillier Cryptosystem based Mean Value Computation for Encrypted Domain Image Processing Operations

Paillier Cryptosystem based Mean Value Computation for Encrypted Domain Image Processing Operations Due to its large storage facility and high-end computing capability, cloud computing has received great attention as a huge amount of personal multimedia data and computationally expensive tasks can be outsourced to the cloud. However, the cloud being third-party semi-trusted, is prone to information leakage, raising privacy risks. Signal processing in the encrypted domain has emerged as a new research paradigm on privacy-preserving processing over outsourced data by semi-trusted cloud. In this article, we propose a solution for non-integer mean value computation in the homomorphic encrypted domain without any interactive protocol between the client and the service provider. Using the proposed solution, various image processing operations, such as local smoothing filter, un-sharp masking, and histogram equalization, can be performed in the encrypted domain at the cloud server without any privacy concerns. Our experimental results from standard test images reveal that these image processing operations can be performed without pre-processing, without client-server interactive protocol, and without any error between the encrypted domain and the plain domain. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png ACM Transactions on Multimedia Computing, Communications, and Applications (TOMM) Association for Computing Machinery

Paillier Cryptosystem based Mean Value Computation for Encrypted Domain Image Processing Operations

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Publisher
Association for Computing Machinery
Copyright
Copyright © 2019 ACM
ISSN
1551-6857
eISSN
1551-6865
DOI
10.1145/3325194
Publisher site
See Article on Publisher Site

Abstract

Due to its large storage facility and high-end computing capability, cloud computing has received great attention as a huge amount of personal multimedia data and computationally expensive tasks can be outsourced to the cloud. However, the cloud being third-party semi-trusted, is prone to information leakage, raising privacy risks. Signal processing in the encrypted domain has emerged as a new research paradigm on privacy-preserving processing over outsourced data by semi-trusted cloud. In this article, we propose a solution for non-integer mean value computation in the homomorphic encrypted domain without any interactive protocol between the client and the service provider. Using the proposed solution, various image processing operations, such as local smoothing filter, un-sharp masking, and histogram equalization, can be performed in the encrypted domain at the cloud server without any privacy concerns. Our experimental results from standard test images reveal that these image processing operations can be performed without pre-processing, without client-server interactive protocol, and without any error between the encrypted domain and the plain domain.

Journal

ACM Transactions on Multimedia Computing, Communications, and Applications (TOMM)Association for Computing Machinery

Published: Sep 12, 2019

Keywords: Encrypted domain

References