An Attribute-assisted Reranking Model for Web Image Search
ABSTRACT
v
Image search Reranking
is an effective approach to refine the text-based image search result. Most
existing Reranking approaches are based on low-level visual features.
v
exploit semantic attributes
for image search Reranking. Based on the classifiers for all the predefined
attributes, each image is represented by an attribute feature consisting of the
responses from these classifiers. A hypergraph is then used to model the
relationship between images by integrating low-level visual features and
attribute features.
v
Hypergraph ranking is
then performed to order the images. Its basic principle is that visually
similar images should have similar ranking scores. In this work, we propose a
visual-attribute joint hypergraph learning approach to simultaneously explore
two information sources.
EXISTING SYSTEM


Different from the existing methods, a hypergraph is then
used to model the relationship between images by integrating low-level features
and attribute features.
PROPOSED SYSTEM
proposed to refine
text-based search results by exploiting the visual information contained in the
images.
Graph based methods have been
proposed recently and received increasing attention as demonstrated to be
effective. The multimedia entities in top ranks and their visual relationship
can be represented as a collection of nodes and edges.
After a query “baby” is submitted,
an initial result is obtained via a text-based search engine. It is observed
that text-based search often returns “inconsistent” results.
The experimental results
demonstrate superiority of the proposed attribute-assisted reranking approach
over other state-of-the-art reranking methods and their attribute-assisted
variants.
Then the re-ranked result list is
created first by ordering the clusters according to the cluster conditional
probability and next by ordering the samples within a cluster based on their
cluster membership value. In [24], a fast and accurate scheme is proposed for
grouping Web image search results into semantic clusters. It is obvious that
the clustering based reranking methods can work well when the initial search
results contain many nearduplicate media documents.
proposed a semi-supervised
framework to refine the text based image retrieval results via leveraging the
data distribution and the partial supervision information obtained from the top
ranked images
PROPOSED SYSTEM ALGORITHMS


ADVANTAGES
The advantage of
hypergraph can be summarized that not only does it take into account pair wise
relationship between two vertices, but also higher order relationship among
three or more vertices containing grouping information.
regularized
logistic regression trained for each attribute within each class.
as
attribute features are formed by prediction of several classifiers, semantic
description of each image might be inaccurate and noisy
System Architecture

v The
System and Threat Models
Ø Search,
Ø Hypergraph,
Ø Attribute-assisted,
MODULE
DESCRIPTION
Search:








Hypergraph:








Attribute-assisted:



SYSTEM SPECIFICATION
Hardware Requirements:
v System : Pentium IV 2.4 GHz.
v Hard Disk
: 40 GB.
v Floppy Drive :
1.44 Mb.
v Monitor
: 14’ Colour Monitor.
v Mouse : Optical Mouse.
v Ram :
512 Mb.
Software Requirements:
v Operating system : Windows 7 Ultimate.
v Coding Language : ASP.Net with C#
v Front-End : Visual Studio 2010 Professional.
v Data Base : SQL Server 2008.
System Design:





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