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Sparse coded spatial pyramid matching and multi-kernel integrated SVM for non-linear scene classification Cover

Sparse coded spatial pyramid matching and multi-kernel integrated SVM for non-linear scene classification

Open Access
|Dec 2021

Abstract

Support vector machine (SVM) techniques and deep learning have been prevalent in object classification for many years. However, deep learning is computation-intensive and can require a long training time. SVM is significantly faster than Convolution Neural Network (CNN). However, the SVM has limited its applications in the mid-size dataset as it requires proper tuning. Recently the parameterization of multiple kernels has shown greater flexibility in the characterization of the dataset. Therefore, this paper proposes a sparse coded multi-scale approach to reduce training complexity and tuning of SVM using a non-linear fusion of kernels for large class natural scene classification. The optimum features are obtained by parameterizing the dictionary, Scale Invariant Feature Transform (SIFT) parameters, and fusion of multiple kernels. Experiments were conducted on a large dataset to examine the multi-kernel space capability to find distinct features for better classification. The proposed approach founds to be promising than the linear multi-kernel SVM approaches achieving 91.12 % maximum accuracy.

DOI: https://doi.org/10.2478/jee-2021-0053 | Journal eISSN: 1339-309X | Journal ISSN: 1335-3632
Language: English
Page range: 374 - 380
Submitted on: May 3, 2021
Published on: Dec 22, 2021
Published by: Slovak University of Technology in Bratislava
In partnership with: Paradigm Publishing Services
Publication frequency: 6 issues per year

© 2021 Bhavinkumar Gajjar, Hiren Mewada, Ashwin Patani, published by Slovak University of Technology in Bratislava
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.