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C4.5 Algorithm Based Adversarial Learning-Based ADA Based Color and Multispectral Processing for Enhanced Image Analysis


Affiliations
1 Department of Information Technology, Easwari Engineering College, India
2 Department of Computer Science and Engineering, Manipur Institute of Technology, India
3 Geneva Business Center, Swiss School of Business and Management, Switzerland
4 Department of Electronics and Communication Engineering, VSB College of Engineering Technical Campus, India
     

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This research presents a novel approach that combines the C4.5 algorithm with Adversarial Learning-based Adaptive Data Augmentation (ADA) for Color and Multispectral Processing, leading to a significant enhancement in Image Analysis. The C4.5 algorithm, known for its decision tree construction, is integrated with ADA, which employs adversarial learning principles to generate diverse and realistic training samples. This integration enables the augmentation of both color and multispectral images, effectively boosting the robustness and accuracy of image analysis tasks. The proposed method showcases improved performance in various applications such as object recognition, classification, and scene understanding. Experimental results demonstrate the superiority of the proposed approach compared to traditional methods, substantiating its potential for advancing image analysis techniques.

Keywords

C4.5 algorithm, Adversarial Learning, Adaptive Data Augmentation (ADA), Color Processing, Multispectral Processing, Image Analysis
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  • C4.5 Algorithm Based Adversarial Learning-Based ADA Based Color and Multispectral Processing for Enhanced Image Analysis

Abstract Views: 107  |  PDF Views: 1

Authors

N. Ananthi
Department of Information Technology, Easwari Engineering College, India
Thiyam Ibungomacha Singh
Department of Computer Science and Engineering, Manipur Institute of Technology, India
Nihar Ranjan Behera
Geneva Business Center, Swiss School of Business and Management, Switzerland
R. K. Gnanamurthy
Department of Electronics and Communication Engineering, VSB College of Engineering Technical Campus, India

Abstract


This research presents a novel approach that combines the C4.5 algorithm with Adversarial Learning-based Adaptive Data Augmentation (ADA) for Color and Multispectral Processing, leading to a significant enhancement in Image Analysis. The C4.5 algorithm, known for its decision tree construction, is integrated with ADA, which employs adversarial learning principles to generate diverse and realistic training samples. This integration enables the augmentation of both color and multispectral images, effectively boosting the robustness and accuracy of image analysis tasks. The proposed method showcases improved performance in various applications such as object recognition, classification, and scene understanding. Experimental results demonstrate the superiority of the proposed approach compared to traditional methods, substantiating its potential for advancing image analysis techniques.

Keywords


C4.5 algorithm, Adversarial Learning, Adaptive Data Augmentation (ADA), Color Processing, Multispectral Processing, Image Analysis

References