A novel optimization of hybrid feature selection algorithms for image classification technique using RBFNN and MFO

Kumar Siddamallappa U, Vijay R. Sonawane, N. Gandhewar
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引用次数: 3

Abstract

A brain tumor develops when abnormal cells in brain tissue multiply uncontrollably. For radiologists, finding and categorizing tumors manually has become a demanding and time-consuming task. When radiologists or other clinical professionals need to extract an infected tumor area from an MR picture, they have to go through a lengthy and laborious process. To improve performance and simplify the segmentation process, we investigate the FCM-predicted picture segmentation techniques in this study. In addition, classifiers for automating the detection and reclassification of encephalon tumors receive input consisting of critical information obtained from each segmented tissue. We have assessed, verified, and demonstrated the experimental efficacy of the proposed method. The purpose of this research was to develop a novel MFO (Moth-Flame Optimization) based LLRBFNN model for the automatic detection and classification of benign and malignant brain tumors. In order to alleviate the burden of manually detecting encephalon cancers from MR images, the suggested LLRBFNN model parameters are improved via MFO training. The Modified FCM method removes outlying nodes from the LLRBFNN model, and the MFO algorithm keeps the current of node centres in the aforementioned model. The proposed MFO-LLRBFNN model was evaluated alongside the Decision Tree and the Random Forest. To prove the reliability of this model, an MFO-based LLWNN (Local Linear Wavelet Neural Network) model for autonomously detecting brain cancers was presented. We extracted features from MR images using the MFCM (modified fuzzy C-Means) segmentation algorithm and the GLCM (Gray Level Co-occurrence Matrix) technique.
一种基于RBFNN和MFO的图像分类混合特征选择优化算法
当脑组织中的异常细胞不受控制地繁殖时,脑肿瘤就会发生。对于放射科医生来说,手动发现和分类肿瘤已经成为一项艰巨而耗时的任务。当放射科医生或其他临床专业人员需要从磁共振图像中提取感染肿瘤区域时,他们必须经历一个漫长而费力的过程。为了提高分割性能和简化分割过程,我们研究了fcm预测的图像分割技术。此外,用于自动检测和重新分类脑肿瘤的分类器接收由从每个分段组织获得的关键信息组成的输入。我们已经评估、验证并证明了所提出方法的实验有效性。本研究的目的是建立一种新的基于蛾焰优化(Moth-Flame Optimization)的LLRBFNN模型,用于脑肿瘤的良恶性自动检测和分类。为了减轻人工从MR图像中检测脑癌的负担,通过MFO训练对建议的LLRBFNN模型参数进行了改进。改进的FCM方法去除LLRBFNN模型中的外围节点,MFO算法保持模型中节点中心的电流。将MFO-LLRBFNN模型与决策树和随机森林一起进行评估。为了证明该模型的可靠性,提出了一种基于mfo的局部线性小波神经网络(LLWNN)脑癌自主检测模型。我们使用MFCM(改进模糊c均值)分割算法和GLCM(灰度共生矩阵)技术从MR图像中提取特征。
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