Deterministic Multi-kernel based extreme learning machine for pattern classification
•Integration of deterministic and multiple kernel learning approach.•Feature vectors are determined based on holistic and local appearance.•Hidden layer parameters are analytically designed rather than random selection.•Resultant Kernel function is linear combination of pre-specified kernels.•Applic...
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Veröffentlicht in: | Expert systems with applications 2021-11, Vol.183, p.115308, Article 115308 |
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Sprache: | eng |
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Zusammenfassung: | •Integration of deterministic and multiple kernel learning approach.•Feature vectors are determined based on holistic and local appearance.•Hidden layer parameters are analytically designed rather than random selection.•Resultant Kernel function is linear combination of pre-specified kernels.•Applicable for classification problems containing heterogeneous data.
The Extreme learning machine (ELM) designed by Huang et al. is proved to be a fast and good classifier over a decade, but existing ELM is non-deterministic in nature as well as kernel dependent and needs attention to optimize the selection of kernels. In ELM feature space is obtained with the help of single kernel function. The choice of kernel depends on perceptiveness of classification problem. So a generalized framework with deterministic nature along with optimized kernel is ought to be designed that can be applied to large domain of real world heterogeneous pattern classification problems. This paper presents a deterministic extreme learning machine for neural network with feedforward architecture which is formulated with multiple kernel learning. We further enhance this approach by incorporating Gray level co-occurrence matrix (GLCM) for multi-modal feature extraction. Two formulation of kernel extreme learning machine are introduced, with target kernel function as a linear combination of different base kernels. The first one is based on deterministic multiple kernel learning while the second one uses deterministic multiple kernel learning along with GLCM for extracting the invariant feature vectors. The performance of proposed algorithms are analyzed on pattern recognition problem for face recognition by changing the number of training set, types of kernel used and coefficients used for combining base kernels. The superior recognition rate is achieved for prominent multi-class face databases, when compared with contemporary methods that prove the efficacy of proposed algorithms. |
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ISSN: | 0957-4174 1873-6793 |
DOI: | 10.1016/j.eswa.2021.115308 |