Title
How to Extract Image Features based on Co-occurrence Matrix Securely and Efficiently in Cloud Computing
Abstract
High-dimensional feature extraction based on co-occurrence matrix improves the detection performance of steganalysis, but it is difficult to be realized for massive image data by an analyzer with limited computational ability. We solve this problem by verifiable outsourcing computation, which allows a computationally weak client to outsource the evaluation of a function to a powerful but untrusted server. In this paper, we propose a verifiable outsourcing scheme of feature extraction based on co-occurrence matrix with single untrusted cloud server. The original images are protected from the server by using a projection of one to many with trapdoor, which can be realized by a symmetric probabilistic encryption scheme we present. The analyzer can obtain true results of feature extraction and detect any failure with a probability of 1 if the server misbehaves. Finally, we provide the simulations on the outsourcing of extracting ccJRM features in cloud computing. The theory analysis and experiment result also show that the proposed outsourcing scheme could greatly decrease the computation cost of the analyzer without exposure of the original images and extraction results.
Year
DOI
Venue
2020
10.1109/TCC.2017.2737980
IEEE Transactions on Cloud Computing
Keywords
Field
DocType
Feature extraction,Outsourcing,Servers,Encryption,Cloud computing,Computational modeling
Data mining,Co-occurrence matrix,Computer science,Feature (computer vision),Outsourcing,Feature extraction,Theoretical computer science,Verifiable secret sharing,Probabilistic encryption,Steganalysis,Distributed computing,Cloud computing
Journal
Volume
Issue
ISSN
8
1
2168-7161
Citations 
PageRank 
References 
1
0.37
0
Authors
5
Name
Order
Citations
PageRank
Yanli Ren124724.83
Xinpeng Zhang22541174.68
Guorui Feng322323.26
Zhenxing Qian452539.26
Fengyong Li5579.10