SlideShare a Scribd company logo
Multiview Alignment Hashing for Efficient Image Search
ABSTRACT:
Hashing is a popular and efficient method for nearest neighbor search in large-
scale data spaces by embedding high-dimensional feature descriptors into a
similarity preserving Hamming space with a low dimension. For most hashing
methods, the performance of retrieval heavily depends on the choice of the high-
dimensional feature descriptor. Furthermore, a single type of feature cannot be
descriptive enough for different images when it is used for hashing. Thus, how to
combine multiple representations for learning effective hashing functions is an
imminent task. In this paper, we present a novel unsupervised multiview alignment
hashing approach based on regularized kernel nonnegative matrix factorization,
which can find a compact representation uncovering the hidden semantics and
simultaneously respecting the joint probability distribution of data. In particular,
we aim to seek a matrix factorization to effectively fuse the multiple information
sources meanwhile discarding the feature redundancy. Since the raised problem is
regarded as nonconvex and discrete, our objective function is then optimized via an
alternate way with relaxation and converges to a locally optimal solution. After
finding the low-dimensional representation, the hashing functions are finally
obtained through multivariable logistic regression. The proposed method is
systematically evaluated on three data sets: 1) Caltech-256; 2) CIFAR-10; and 3)
CIFAR-20, and the results show that our method significantly outperforms the
state-of-the-art multiview hashing techniques.
EXISTING SYSTEM:
 One of the most well-known hashing techniques that preserve similarity
information is Locality-Sensitive Hashing (LSH). LSH simply employs
random linear projections (followed by random thresholding) to map data
points close in a Euclidean spaceto similar codes.
 Spectral Hashing (SpH) is a representative unsupervised hashing method, in
which the Laplace-Beltrami eigen functions of manifolds are used to
determine binary codes.
 Moreover, principled linear projections like PCA Hashing (PCAH) has been
suggested for better quantization rather than random projection hashing.
 Besides, another popular hashing approach, Anchor Graphs Hashing (AGH),
is proposed to learn compact binary codes via tractable low-rank adjacency
matrices. AGH allows constant time hashing of a new data point by
extrapolating graph Laplacian eigenvectors to eigen functions
DISADVANTAGES OF EXISTING SYSTEM:
 Only one type of feature descriptor is used for learning hashing functions.
 These methods mainly depend on spectral, graph or deep learning techniques
to achieve data structure preserving encoding. Nevertheless, the hashing
purely with the above schemes are usually sensitive to data noise and
suffering from the high computational complexity.
PROPOSED SYSTEM:
 The drawbacks of prior work motivate us to propose a novel unsupervised
mulitiview hashing approach, termed Multiview Alignment Hashing
(MAH), which can effectively fuse multiple information sources and exploit
the discriminative low-dimensional embedding via Nonnegative Matrix
Factorization (NMF).
 NMF is a popular method in data mining tasks including clustering,
collaborative filtering, outlier detection, etc. Unlike other embedding
methods with positive and negative values, NMF seeks to learn a
nonnegative parts-based representation that gives better visual interpretation
of factoring matrices for high-dimensional data. Therefore, in many cases,
NMF may be more suitable for subspace learning tasks, because it provides
a non-global basis set which intuitively contains the localized parts of
objects.
 In addition, since the flexibility of matrix factorization can handle widely
varying data distributions, NMF enables more robust subspace learning.
More importantly, NMF decomposes an original matrix into a part-based
representation that gives better interpretation of factoring matrices for non-
negative data. When applying NMF to multi-view fusion tasks, a part-based
representation can reduce the corruption between any two views and gain
more discriminative codes.
ADVANTAGES OF PROPOSED SYSTEM:
 To the best of our knowledge, this is the first work using NMF to combine
multiple views for image hashing.
 MAH can find a compact representation uncovering the hidden semantics
from different view aspects and simultaneously respecting the joint
probability distribution of data.
 To solve our non-convex objective function, a new alternate optimization
has been proposed to get the final solution.
 We utilize multivariable logistic regression to generate the hashing function
and achieve the out-of-sample extension.
SYSTEM ARCHITECTURE:
SYSTEM REQUIREMENTS:
HARDWARE REQUIREMENTS:
 System : Pentium IV 2.4 GHz.
 Hard Disk : 40 GB.
 Floppy Drive : 1.44 Mb.
 Monitor : 15 VGA Colour.
 Mouse : Logitech.
 Ram : 512 Mb.
SOFTWARE REQUIREMENTS:
 Operating system : Windows XP/7.
 Coding Language : ASP.net, C#.net
 Tool : Visual Studio 2010
 Database : SQL SERVER 2008
REFERENCE:
Li Liu, Mengyang Yu, Student Member, IEEE, and Ling Shao, Senior Member,
IEEE, “Multiview Alignment Hashing for Efficient Image Search”, IEEE
TRANSACTIONS ON IMAGE PROCESSING, VOL. 24, NO. 3, MARCH
2015.

More Related Content

What's hot (15)

PDF
M.Phil Computer Science Image Processing Projects
Vijay Karan
 
PDF
M.Phil Computer Science Image Processing Projects
Vijay Karan
 
PDF
Laplacian-regularized Graph Bandits
lauratoni4
 
PDF
Graph Signal Processing for Machine Learning A Review and New Perspectives - ...
lauratoni4
 
PDF
Implementation of Fuzzy Logic for the High-Resolution Remote Sensing Images w...
IOSR Journals
 
PPT
Cristopher M. Bishop's tutorial on graphical models
butest
 
DOCX
Fractal analysis for reduced reference
jpstudcorner
 
DOCX
Learning weighted lower linear envelope potentials in binary markov random fi...
jpstudcorner
 
DOCX
EMR: A SCALABLE GRAPH-BASED RANKING MODEL FOR CONTENT-BASED IMAGE RETRIEVAL
I3E Technologies
 
PDF
Clustering sentence level text using a novel fuzzy relational clustering algo...
Ecway Technologies
 
PDF
IEEE 2014 Matlab Projects
Vijay Karan
 
PDF
IEEE 2014 Matlab Projects
Vijay Karan
 
PDF
Image Processing IEEE 2015 Projects
Vijay Karan
 
PDF
Vector sparse representation of color image using quaternion matrix analysis.
LeMeniz Infotech
 
DOCX
Vector sparse representation of color image using quaternion matrix analysis
parry prabhu
 
M.Phil Computer Science Image Processing Projects
Vijay Karan
 
M.Phil Computer Science Image Processing Projects
Vijay Karan
 
Laplacian-regularized Graph Bandits
lauratoni4
 
Graph Signal Processing for Machine Learning A Review and New Perspectives - ...
lauratoni4
 
Implementation of Fuzzy Logic for the High-Resolution Remote Sensing Images w...
IOSR Journals
 
Cristopher M. Bishop's tutorial on graphical models
butest
 
Fractal analysis for reduced reference
jpstudcorner
 
Learning weighted lower linear envelope potentials in binary markov random fi...
jpstudcorner
 
EMR: A SCALABLE GRAPH-BASED RANKING MODEL FOR CONTENT-BASED IMAGE RETRIEVAL
I3E Technologies
 
Clustering sentence level text using a novel fuzzy relational clustering algo...
Ecway Technologies
 
IEEE 2014 Matlab Projects
Vijay Karan
 
IEEE 2014 Matlab Projects
Vijay Karan
 
Image Processing IEEE 2015 Projects
Vijay Karan
 
Vector sparse representation of color image using quaternion matrix analysis.
LeMeniz Infotech
 
Vector sparse representation of color image using quaternion matrix analysis
parry prabhu
 

Similar to Multiview alignment hashing for (20)

PDF
Multiview Alignment Hashing for Efficient Image Search
1crore projects
 
PDF
IEEE 2015 Matlab Projects
Vijay Karan
 
PDF
IEEE 2015 Matlab Projects
Vijay Karan
 
PDF
M.E Computer Science Remote Sensing Projects
Vijay Karan
 
PDF
M phil-computer-science-remote-sensing-projects
Vijay Karan
 
PDF
M.Phil Computer Science Remote Sensing Projects
Vijay Karan
 
PDF
M phil-computer-science-remote-sensing-projects
Vijay Karan
 
PDF
Remote Sensing IEEE 2015 Projects
Vijay Karan
 
PDF
Remote Sensing IEEE 2015 Projects
Vijay Karan
 
PDF
A Kernel Approach for Semi-Supervised Clustering Framework for High Dimension...
IJCSIS Research Publications
 
DOCX
Salient object detection with higher order potentials and learning affinity
I3E Technologies
 
DOCX
Clustering sentence level text using a novel fuzzy relational clustering algo...
JPINFOTECH JAYAPRAKASH
 
PDF
Eg4301808811
IJERA Editor
 
PDF
10.1.1.163.1173 - Copy.pdf aafefwe sfweew er wewewe erger
DestaChuche
 
PDF
Big data Clustering Algorithms And Strategies
Farzad Nozarian
 
DOCX
Query adaptive image search with hash codes
JPINFOTECH JAYAPRAKASH
 
PDF
Data mining projects topics for java and dot net
redpel dot com
 
PDF
Vchunk join an efficient algorithm for edit similarity joins
Vijay Koushik
 
PDF
Vensoft IEEE 2014 2015 Matlab Projects tiltle Image Processing Wireless Signa...
Vensoft Technologies
 
PDF
IEEE Datamining 2016 Title and Abstract
tsysglobalsolutions
 
Multiview Alignment Hashing for Efficient Image Search
1crore projects
 
IEEE 2015 Matlab Projects
Vijay Karan
 
IEEE 2015 Matlab Projects
Vijay Karan
 
M.E Computer Science Remote Sensing Projects
Vijay Karan
 
M phil-computer-science-remote-sensing-projects
Vijay Karan
 
M.Phil Computer Science Remote Sensing Projects
Vijay Karan
 
M phil-computer-science-remote-sensing-projects
Vijay Karan
 
Remote Sensing IEEE 2015 Projects
Vijay Karan
 
Remote Sensing IEEE 2015 Projects
Vijay Karan
 
A Kernel Approach for Semi-Supervised Clustering Framework for High Dimension...
IJCSIS Research Publications
 
Salient object detection with higher order potentials and learning affinity
I3E Technologies
 
Clustering sentence level text using a novel fuzzy relational clustering algo...
JPINFOTECH JAYAPRAKASH
 
Eg4301808811
IJERA Editor
 
10.1.1.163.1173 - Copy.pdf aafefwe sfweew er wewewe erger
DestaChuche
 
Big data Clustering Algorithms And Strategies
Farzad Nozarian
 
Query adaptive image search with hash codes
JPINFOTECH JAYAPRAKASH
 
Data mining projects topics for java and dot net
redpel dot com
 
Vchunk join an efficient algorithm for edit similarity joins
Vijay Koushik
 
Vensoft IEEE 2014 2015 Matlab Projects tiltle Image Processing Wireless Signa...
Vensoft Technologies
 
IEEE Datamining 2016 Title and Abstract
tsysglobalsolutions
 
Ad

More from jpstudcorner (20)

DOCX
Variable length signature for near-duplicate
jpstudcorner
 
DOCX
Robust representation and recognition of facial
jpstudcorner
 
DOCX
Revealing the trace of high quality jpeg
jpstudcorner
 
DOCX
Revealing the trace of high quality jpeg
jpstudcorner
 
DOCX
Pareto depth for multiple-query image retrieval
jpstudcorner
 
DOCX
Multifocus image fusion based on nsct
jpstudcorner
 
DOCX
Image super resolution based on
jpstudcorner
 
DOCX
Face sketch synthesis via sparse representation based greedy search
jpstudcorner
 
DOCX
Face recognition across non uniform motion
jpstudcorner
 
DOCX
Combining left and right palmprint images for
jpstudcorner
 
DOCX
A probabilistic approach for color correction
jpstudcorner
 
DOCX
A no reference texture regularity metric
jpstudcorner
 
DOCX
A feature enriched completely blind image
jpstudcorner
 
DOCX
Sel csp a framework to facilitate
jpstudcorner
 
DOCX
Query aware determinization of uncertain
jpstudcorner
 
DOCX
Psmpa patient self controllable
jpstudcorner
 
DOCX
Privacy preserving and truthful detection
jpstudcorner
 
DOCX
Privacy policy inference of user uploaded
jpstudcorner
 
DOCX
Page a partition aware engine
jpstudcorner
 
DOCX
Optimal configuration of network
jpstudcorner
 
Variable length signature for near-duplicate
jpstudcorner
 
Robust representation and recognition of facial
jpstudcorner
 
Revealing the trace of high quality jpeg
jpstudcorner
 
Revealing the trace of high quality jpeg
jpstudcorner
 
Pareto depth for multiple-query image retrieval
jpstudcorner
 
Multifocus image fusion based on nsct
jpstudcorner
 
Image super resolution based on
jpstudcorner
 
Face sketch synthesis via sparse representation based greedy search
jpstudcorner
 
Face recognition across non uniform motion
jpstudcorner
 
Combining left and right palmprint images for
jpstudcorner
 
A probabilistic approach for color correction
jpstudcorner
 
A no reference texture regularity metric
jpstudcorner
 
A feature enriched completely blind image
jpstudcorner
 
Sel csp a framework to facilitate
jpstudcorner
 
Query aware determinization of uncertain
jpstudcorner
 
Psmpa patient self controllable
jpstudcorner
 
Privacy preserving and truthful detection
jpstudcorner
 
Privacy policy inference of user uploaded
jpstudcorner
 
Page a partition aware engine
jpstudcorner
 
Optimal configuration of network
jpstudcorner
 
Ad

Recently uploaded (20)

PPTX
filteration _ pre.pptx 11111110001.pptx
awasthivaibhav825
 
PPTX
ENSA_Module_7.pptx_wide_area_network_concepts
RanaMukherjee24
 
PPTX
MULTI LEVEL DATA TRACKING USING COOJA.pptx
dollysharma12ab
 
PDF
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
PDF
Advanced LangChain & RAG: Building a Financial AI Assistant with Real-Time Data
Soufiane Sejjari
 
PDF
AI-Driven IoT-Enabled UAV Inspection Framework for Predictive Maintenance and...
ijcncjournal019
 
PDF
Machine Learning All topics Covers In This Single Slides
AmritTiwari19
 
PPTX
cybersecurityandthe importance of the that
JayachanduHNJc
 
PDF
20ME702-Mechatronics-UNIT-1,UNIT-2,UNIT-3,UNIT-4,UNIT-5, 2025-2026
Mohanumar S
 
PPTX
ETP Presentation(1000m3 Small ETP For Power Plant and industry
MD Azharul Islam
 
PDF
Natural_Language_processing_Unit_I_notes.pdf
sanguleumeshit
 
PDF
CAD-CAM U-1 Combined Notes_57761226_2025_04_22_14_40.pdf
shailendrapratap2002
 
PDF
Introduction to Ship Engine Room Systems.pdf
Mahmoud Moghtaderi
 
PDF
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
PPTX
Chapter_Seven_Construction_Reliability_Elective_III_Msc CM
SubashKumarBhattarai
 
PDF
2025 Laurence Sigler - Advancing Decision Support. Content Management Ecommer...
Francisco Javier Mora Serrano
 
PDF
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
PDF
Packaging Tips for Stainless Steel Tubes and Pipes
heavymetalsandtubes
 
PDF
STUDY OF NOVEL CHANNEL MATERIALS USING III-V COMPOUNDS WITH VARIOUS GATE DIEL...
ijoejnl
 
PDF
Biodegradable Plastics: Innovations and Market Potential (www.kiu.ac.ug)
publication11
 
filteration _ pre.pptx 11111110001.pptx
awasthivaibhav825
 
ENSA_Module_7.pptx_wide_area_network_concepts
RanaMukherjee24
 
MULTI LEVEL DATA TRACKING USING COOJA.pptx
dollysharma12ab
 
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
Advanced LangChain & RAG: Building a Financial AI Assistant with Real-Time Data
Soufiane Sejjari
 
AI-Driven IoT-Enabled UAV Inspection Framework for Predictive Maintenance and...
ijcncjournal019
 
Machine Learning All topics Covers In This Single Slides
AmritTiwari19
 
cybersecurityandthe importance of the that
JayachanduHNJc
 
20ME702-Mechatronics-UNIT-1,UNIT-2,UNIT-3,UNIT-4,UNIT-5, 2025-2026
Mohanumar S
 
ETP Presentation(1000m3 Small ETP For Power Plant and industry
MD Azharul Islam
 
Natural_Language_processing_Unit_I_notes.pdf
sanguleumeshit
 
CAD-CAM U-1 Combined Notes_57761226_2025_04_22_14_40.pdf
shailendrapratap2002
 
Introduction to Ship Engine Room Systems.pdf
Mahmoud Moghtaderi
 
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
Chapter_Seven_Construction_Reliability_Elective_III_Msc CM
SubashKumarBhattarai
 
2025 Laurence Sigler - Advancing Decision Support. Content Management Ecommer...
Francisco Javier Mora Serrano
 
67243-Cooling and Heating & Calculation.pdf
DHAKA POLYTECHNIC
 
Packaging Tips for Stainless Steel Tubes and Pipes
heavymetalsandtubes
 
STUDY OF NOVEL CHANNEL MATERIALS USING III-V COMPOUNDS WITH VARIOUS GATE DIEL...
ijoejnl
 
Biodegradable Plastics: Innovations and Market Potential (www.kiu.ac.ug)
publication11
 

Multiview alignment hashing for

  • 1. Multiview Alignment Hashing for Efficient Image Search ABSTRACT: Hashing is a popular and efficient method for nearest neighbor search in large- scale data spaces by embedding high-dimensional feature descriptors into a similarity preserving Hamming space with a low dimension. For most hashing methods, the performance of retrieval heavily depends on the choice of the high- dimensional feature descriptor. Furthermore, a single type of feature cannot be descriptive enough for different images when it is used for hashing. Thus, how to combine multiple representations for learning effective hashing functions is an imminent task. In this paper, we present a novel unsupervised multiview alignment hashing approach based on regularized kernel nonnegative matrix factorization, which can find a compact representation uncovering the hidden semantics and simultaneously respecting the joint probability distribution of data. In particular, we aim to seek a matrix factorization to effectively fuse the multiple information sources meanwhile discarding the feature redundancy. Since the raised problem is regarded as nonconvex and discrete, our objective function is then optimized via an alternate way with relaxation and converges to a locally optimal solution. After finding the low-dimensional representation, the hashing functions are finally obtained through multivariable logistic regression. The proposed method is systematically evaluated on three data sets: 1) Caltech-256; 2) CIFAR-10; and 3)
  • 2. CIFAR-20, and the results show that our method significantly outperforms the state-of-the-art multiview hashing techniques. EXISTING SYSTEM:  One of the most well-known hashing techniques that preserve similarity information is Locality-Sensitive Hashing (LSH). LSH simply employs random linear projections (followed by random thresholding) to map data points close in a Euclidean spaceto similar codes.  Spectral Hashing (SpH) is a representative unsupervised hashing method, in which the Laplace-Beltrami eigen functions of manifolds are used to determine binary codes.  Moreover, principled linear projections like PCA Hashing (PCAH) has been suggested for better quantization rather than random projection hashing.  Besides, another popular hashing approach, Anchor Graphs Hashing (AGH), is proposed to learn compact binary codes via tractable low-rank adjacency matrices. AGH allows constant time hashing of a new data point by extrapolating graph Laplacian eigenvectors to eigen functions DISADVANTAGES OF EXISTING SYSTEM:  Only one type of feature descriptor is used for learning hashing functions.
  • 3.  These methods mainly depend on spectral, graph or deep learning techniques to achieve data structure preserving encoding. Nevertheless, the hashing purely with the above schemes are usually sensitive to data noise and suffering from the high computational complexity. PROPOSED SYSTEM:  The drawbacks of prior work motivate us to propose a novel unsupervised mulitiview hashing approach, termed Multiview Alignment Hashing (MAH), which can effectively fuse multiple information sources and exploit the discriminative low-dimensional embedding via Nonnegative Matrix Factorization (NMF).  NMF is a popular method in data mining tasks including clustering, collaborative filtering, outlier detection, etc. Unlike other embedding methods with positive and negative values, NMF seeks to learn a nonnegative parts-based representation that gives better visual interpretation of factoring matrices for high-dimensional data. Therefore, in many cases, NMF may be more suitable for subspace learning tasks, because it provides a non-global basis set which intuitively contains the localized parts of objects.  In addition, since the flexibility of matrix factorization can handle widely varying data distributions, NMF enables more robust subspace learning.
  • 4. More importantly, NMF decomposes an original matrix into a part-based representation that gives better interpretation of factoring matrices for non- negative data. When applying NMF to multi-view fusion tasks, a part-based representation can reduce the corruption between any two views and gain more discriminative codes. ADVANTAGES OF PROPOSED SYSTEM:  To the best of our knowledge, this is the first work using NMF to combine multiple views for image hashing.  MAH can find a compact representation uncovering the hidden semantics from different view aspects and simultaneously respecting the joint probability distribution of data.  To solve our non-convex objective function, a new alternate optimization has been proposed to get the final solution.  We utilize multivariable logistic regression to generate the hashing function and achieve the out-of-sample extension.
  • 5. SYSTEM ARCHITECTURE: SYSTEM REQUIREMENTS: HARDWARE REQUIREMENTS:  System : Pentium IV 2.4 GHz.  Hard Disk : 40 GB.  Floppy Drive : 1.44 Mb.
  • 6.  Monitor : 15 VGA Colour.  Mouse : Logitech.  Ram : 512 Mb. SOFTWARE REQUIREMENTS:  Operating system : Windows XP/7.  Coding Language : ASP.net, C#.net  Tool : Visual Studio 2010  Database : SQL SERVER 2008 REFERENCE: Li Liu, Mengyang Yu, Student Member, IEEE, and Ling Shao, Senior Member, IEEE, “Multiview Alignment Hashing for Efficient Image Search”, IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 24, NO. 3, MARCH 2015.