Discriminant analysis of multi sensor data fusion based on percentile forward feature selection

Feature extraction is a widely used approach to extract significant features in multi sensor data fusion. However, feature extraction suffers from some drawbacks. The biggest problem is the failure to identify discriminative features within multi-group data. Thus, this study proposed a new discrimin...

Full description

Saved in:
Bibliographic Details
Main Author: Maz Jamilah, Masnan
Format: Thesis
Language:English
English
Published: 2017
Subjects:
Online Access:http://etd.uum.edu.my/7001/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uum.etd.7001
record_format eprints
spelling my.uum.etd.70012021-05-10T06:32:56Z http://etd.uum.edu.my/7001/ Discriminant analysis of multi sensor data fusion based on percentile forward feature selection Maz Jamilah, Masnan TK7885-7895 Computer engineering. Computer hardware Feature extraction is a widely used approach to extract significant features in multi sensor data fusion. However, feature extraction suffers from some drawbacks. The biggest problem is the failure to identify discriminative features within multi-group data. Thus, this study proposed a new discriminant analysis of multi sensor data fusion using feature selection based on the unbounded and bounded Mahalanobis distance to replace the feature extraction approach in low and intermediate levels data fusion. This study also developed percentile forward feature selection (PFFS) to identify discriminative features feasible for sensor data classification. The proposed discriminant procedure begins by computing the average distance between multi- group using the unbounded and bounded distances. Then, the selection of features started by ranking the fused features in low and intermediate levels based on the computed distances. The feature subsets were selected using the PFFS. The constructed classification rules were measured using classification accuracy measure. The whole investigations were carried out on ten e-nose and e-tongue sensor data. The findings indicated that the bounded Mahalanobis distance is superior in selecting important features with fewer features than the unbounded criterion. Moreover, with the bounded distance approach, the feature selection using the PFFS obtained higher classification accuracy. The overall proposed procedure is found fit to replace the traditional discriminant analysis of multi sensor data fusion due to greater discriminative power and faster convergence rate of higher accuracy. As conclusion, the feature selection can solve the problem of feature extraction. Next, the proposed PFFS has been proved to be effective in selecting subsets of features of higher accuracy with faster computation. The study also specified the advantage of the unbounded and bounded Mahalanobis distance in feature selection of high dimensional data which benefit both engineers and statisticians in sensor technology 2017 Thesis NonPeerReviewed text en /7001/1/s92919_01.pdf text en /7001/2/s92919_02.pdf Maz Jamilah, Masnan (2017) Discriminant analysis of multi sensor data fusion based on percentile forward feature selection. Doctoral thesis, Universiti Utara Malaysia.
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Electronic Theses
url_provider http://etd.uum.edu.my/
language English
English
topic TK7885-7895 Computer engineering. Computer hardware
spellingShingle TK7885-7895 Computer engineering. Computer hardware
Maz Jamilah, Masnan
Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
description Feature extraction is a widely used approach to extract significant features in multi sensor data fusion. However, feature extraction suffers from some drawbacks. The biggest problem is the failure to identify discriminative features within multi-group data. Thus, this study proposed a new discriminant analysis of multi sensor data fusion using feature selection based on the unbounded and bounded Mahalanobis distance to replace the feature extraction approach in low and intermediate levels data fusion. This study also developed percentile forward feature selection (PFFS) to identify discriminative features feasible for sensor data classification. The proposed discriminant procedure begins by computing the average distance between multi- group using the unbounded and bounded distances. Then, the selection of features started by ranking the fused features in low and intermediate levels based on the computed distances. The feature subsets were selected using the PFFS. The constructed classification rules were measured using classification accuracy measure. The whole investigations were carried out on ten e-nose and e-tongue sensor data. The findings indicated that the bounded Mahalanobis distance is superior in selecting important features with fewer features than the unbounded criterion. Moreover, with the bounded distance approach, the feature selection using the PFFS obtained higher classification accuracy. The overall proposed procedure is found fit to replace the traditional discriminant analysis of multi sensor data fusion due to greater discriminative power and faster convergence rate of higher accuracy. As conclusion, the feature selection can solve the problem of feature extraction. Next, the proposed PFFS has been proved to be effective in selecting subsets of features of higher accuracy with faster computation. The study also specified the advantage of the unbounded and bounded Mahalanobis distance in feature selection of high dimensional data which benefit both engineers and statisticians in sensor technology
format Thesis
author Maz Jamilah, Masnan
author_facet Maz Jamilah, Masnan
author_sort Maz Jamilah, Masnan
title Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
title_short Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
title_full Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
title_fullStr Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
title_full_unstemmed Discriminant analysis of multi sensor data fusion based on percentile forward feature selection
title_sort discriminant analysis of multi sensor data fusion based on percentile forward feature selection
publishDate 2017
url http://etd.uum.edu.my/7001/
_version_ 1701165217124188160
score 13.160551