IR-MF-SVMe: Image Retrieval using Multiple Features Extraction with Support Vector Machine ensemble
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Published:2021-12-22
Issue:
Volume:15
Page:1781-1789
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ISSN:1998-4464
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Container-title:International Journal of Circuits, Systems and Signal Processing
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language:en
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Short-container-title:
Author:
Venkataravana Nayak K.,1, Arunalatha J. S.1, Venugopal K. R.2
Affiliation:
1. University Visvesvaraya College of Engineering, Bengaluru, India 2. Bangalore University, Bengaluru, India
Abstract
Image representation is a widespread strategy of image retrieval based on appearance, shape information. The traditional feature representation methods ignore hidden information that exists in the dataset samples; it reduces the discriminative performance of the classifier and excludes various geometric and photometric variations consideration in obtaining the features; these degrade retrieval performance. Hence, proposed multiple features fusion and Support Vector Machines Ensemble (IR-MF-SVMe); an Image Retrieval framework to enhance the performance of the retrieval process. The Color Histogram (CH), Color Auto-Correlogram (CAC), Color Moments (CM), Gabor Wavelet (GW), and Wavelet Moments (WM) descriptors are used to extract multiple features that separate the element vectors of images in representation. The multi-class classifier is constructed with the aggregation of binary Support Vector Machines, which decrease the count of false positives within the interrelated semantic classes. The proposed framework is validated on the WANG dataset and results in the accuracy of 84% for the individual features and 86% for the fused features related to the state-of-the-arts.
Publisher
North Atlantic University Union (NAUN)
Subject
Electrical and Electronic Engineering,Signal Processing
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