Startseite Mathematik 13. A fuzzy entropy-based multilevel image thresholding using neural network optimization algorithm
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13. A fuzzy entropy-based multilevel image thresholding using neural network optimization algorithm

  • Diksha Thakur , Nitin Mittal , Simrandeep Singh und Rajshree Srivastva

Abstract

In the analysis and preprocessing of images, image segmentation is a very important step. Due to their simplicity, robustness, reduced convergence times, and accuracy, standard multilevel thresholding techniques for bilevel thresholds are efficient. However, a number of computational expenditures are needed, and efficiency is broken down as extensive research is used to decide the optimum thresholds, resulting in the implementation of evolutionary algorithms and swarm intelligence (SI) to achieve the optimum thresholds. Object segmentation’s primary objective is to distinguish the foreground from the background. By optimizing Shannon or fuzzy entropy based on the neural network optimization algorithm, this chapter provided a multilevel image border for object segmentation. The suggested algorithm is evaluated on standard image sets using Firefly algorithm (FA), Differential Evolution (DE), and particle swarm optimization, and the results are compared with entropy approaches for Shannon or fuzzy. The suggested approach shows better efficiency in objective factor than state-of-the-art approaches, structural similarity index, Peak signal to noise ratio (PSNR), and standard derivation.

Abstract

In the analysis and preprocessing of images, image segmentation is a very important step. Due to their simplicity, robustness, reduced convergence times, and accuracy, standard multilevel thresholding techniques for bilevel thresholds are efficient. However, a number of computational expenditures are needed, and efficiency is broken down as extensive research is used to decide the optimum thresholds, resulting in the implementation of evolutionary algorithms and swarm intelligence (SI) to achieve the optimum thresholds. Object segmentation’s primary objective is to distinguish the foreground from the background. By optimizing Shannon or fuzzy entropy based on the neural network optimization algorithm, this chapter provided a multilevel image border for object segmentation. The suggested algorithm is evaluated on standard image sets using Firefly algorithm (FA), Differential Evolution (DE), and particle swarm optimization, and the results are compared with entropy approaches for Shannon or fuzzy. The suggested approach shows better efficiency in objective factor than state-of-the-art approaches, structural similarity index, Peak signal to noise ratio (PSNR), and standard derivation.

Heruntergeladen am 19.1.2026 von https://www.degruyterbrill.com/document/doi/10.1515/9783110648195-013/html
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