Rider and Sunflower optimization-driven neural network for image classification

Web Intell. Pub Date : 2021-12-03 DOI:10.3233/web-210454
Hanumantha Rao Nadendla, Srikrishna Atluri, Gangadhara Rao Kancherla
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Abstract

Image classification is the classical issue in computer vision, machine learning, and image processing. The image classification is measured by differentiating the image into the prescribed category based on the content of the vision. In this paper, a novel classifier named RideSFO-NN is developed for image classification. The proposed method performs the image classification by undergoing two steps, namely feature extraction and classification. Initially, the images from various sources are provided to the proposed Weighted Shape-Size Pattern Spectra for pattern analysis. From the pattern analysis, the significant features are obtained for the classification. Here, the proposed Weighted Shape-Size Pattern Spectra is designed by modifying the gray-scale decomposition with Weight-Shape decomposition. Then, the classification is done based on Neural Network (NN) classifier, which is trained using an optimization approach. The optimization will be done by the proposed Ride Sunflower optimization (RideSFO) algorithm, which is the integration of Rider optimization algorithm (ROA), and Sunflower optimization algorithm (SFO). Finally, the image classification performance is evaluated using RideSFO-NN based on sensitivity, specificity, and accuracy. The developed RideSFO-NN method achieves the maximal accuracy of 94%, maximal sensitivity of 93.87%, and maximal specificity of 90.52% based on K-Fold.
Rider和向日葵优化驱动的图像分类神经网络
图像分类是计算机视觉、机器学习和图像处理领域的经典问题。图像分类是通过根据视觉内容将图像划分到规定的类别来衡量的。本文提出了一种新的用于图像分类的RideSFO-NN分类器。该方法通过特征提取和分类两步对图像进行分类。首先,将来自不同来源的图像提供给所提出的加权形状-尺寸模式光谱进行模式分析。从模式分析中得到了分类的重要特征。在此基础上,利用加权形状分解对灰度分解进行改进,设计了加权形状-尺寸模式谱。然后,基于神经网络(NN)分类器进行分类,该分类器使用优化方法进行训练。优化将由提出的骑行向日葵优化算法(RideSFO)完成,该算法是骑手优化算法(ROA)和向日葵优化算法(SFO)的集成。最后,基于灵敏度、特异性和准确性,使用RideSFO-NN对图像分类性能进行评估。基于K-Fold的RideSFO-NN方法的最大准确率为94%,最大灵敏度为93.87%,最大特异性为90.52%。
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