Building Confidential and Efficient Query Services
in the Cloud with RASP Data Perturbation
ABSTRACT:
With the wide
deployment of public cloud computing infrastructures, using clouds to host data
query services has become an appealing solution for the advantages on
scalability and cost-saving. However, some data might be sensitive that the
data owner does not want to move to the cloud unless the data confidentiality
and query privacy are guaranteed. On the other hand, a secured query service
should still provide efficient query processing and significantly reduce the
in-house workload to fully realize the benefits of cloud computing. We propose
the random space perturbation (RASP) data perturbation method to provide secure
and efficient range query and kNN query services for protected data in the
cloud. The RASP data perturbation method combines order preserving encryption,
dimensionality expansion, random noise injection, and random projection, to
provide strong resilience to attacks on the perturbed data and queries. It also
preserves multidimensional ranges, which allows existing indexing techniques to
be applied to speedup range query processing. The kNN-R algorithm is designed
to work with the RASP range query algorithm to process the kNN queries. We have
carefully analyzed the attacks on data and queries under a precisely defined
threat model and realistic security assumptions. Extensive experiments have
been conducted to show the advantages of this approach on efficiency and
security.
EXISTING SYSTEM:
With the wide
deployment of public cloud computing infrastructures, using clouds to host data
query services has become an appealing solution for the advantages on
scalability and cost-saving. However, some data might be sensitive that the
data owner does not want to move to the cloud unless the data confidentiality
and query privacy are guaranteed. On the other hand, a secured query service
should still provide efficient query processing and significantly reduce the
in-house workload to fully realize the benefits of cloud computing.
DISADVANTAGES
OF EXISTING SYSTEM:
·
Adversaries,
such as curious service providers, can possibly make a copy of the database or
eavesdrop users’ queries, which will be difficult to detect and prevent in the
cloud infrastructures.
PROPOSED SYSTEM:
We propose the
RAndom Space Perturbation (RASP) approach to constructing practical range query
and k-nearest-neighbor (kNN) query services in the cloud. The proposed approach
will address all the 2 four aspects of the CPEL criteria and aim to achieve a
good balance on them. The basic idea is to randomly transform the
multidimensional datasets with a combination of order preserving encryption,
dimensionality expansion, random noise injection, and random project, so that
the utility for processing range queries is preserved. The RASP perturbation is
designed in such a way that the queried ranges are securely transformed into
polyhedra in the RASP-perturbed data space, which can be efficiently processed
with the support of indexing structures in the perturbed space. The RASP kNN
query service (kNN-R) uses the RASP range query service to process kNN queries.
The key components in the RASP framework include (1) the definition and
properties of RASP perturbation; (2) the construction of the privacy-preserving
range query services; (3) the construction of privacy-preserving kNN query
services; and (4) an analysis of the attacks on the RASP-protected data and
queries.
ADVANTAGES
OF PROPOSED SYSTEM:
·
The
RASP perturbation is a unique combination of OPE, dimensionality expansion,
random noise injection, and random projection, which provides strong
confidentiality guarantee.
The proposed
service constructions are able to minimize the in-house processing workload
because of the low perturbation cost and high precision query results. This is
an important feature enabling practical cloud-based solutions
SYSTEM
REQUIREMENTS:
HARDWARE REQUIREMENTS:
Ø
System : Pentium IV 2.4 GHz.
Ø
Hard Disk :
40 GB.
Ø
Floppy Drive : 1.44
Mb.
Ø
Monitor : 15
VGA Colour.
Ø
Mouse :
Logitech.
Ø Ram :
512 Mb.
SOFTWARE
REQUIREMENTS:
Ø Operating system : Windows
XP/7.
Ø Coding Language : ASP.net,
C#.net
Ø Tool : Visual Studio 2010
Ø Database : SQL
SERVER 2008
REFERENCE:
Huiqi Xu, Shumin
Guo, and Keke Chen ,“Building Confidential and Efficient Query Services in
the Cloud with RASP Data Perturbation”, IEEE TRANSACTIONS ON KNOWLEDGE AND
DATA ENGINEERING, VOL. 26, NO. 2, FEBRUARY 2014.
No comments:
Post a Comment