Assimilation of Standard Regularizer Contextual Model and Composite Kernel with Fuzzy-based Noise Classifier
Abstract
The paper assay the effect of assimilating smoothness prior contextual model and composite kernel function with fuzzy based noise classifier using remote sensing data. The concept of the composite kernel has been taken by fusing two kernels together to improve the classification accuracy. Gaussian and Sigmoid kernel functions have opted for kernel composition. As a contextual model, Markov Random Field (MRF) Standard regularization model (smoothness prior) has been studied with the composite kernel-based Noise Classifier. Comparative analysis of new classifier with the conventional construes increase in overall accuracy.
Copyright (c) 2019 Ishuita SenGupta, Anil Kumar, Rakesh Kumar Dwivedi
This work is licensed under a Creative Commons Attribution 4.0 International License.
Authors retain copyright of their work, with first publication rights granted to Tech Reviews Ltd.