Two dimensional discrete Wavelet transform and Probabilistic neural network used for brain tumor detection and classification

S. Nagtode, Bhakti B. Potdukhe, Pradnya Morey
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引用次数: 14

Abstract

This paper present brain tumor detection and classification using discrete wavelet transform and Probabilistic neural network. The 2D Gabor wavelet (GW) analysis and Probabilistic neural network analysis has been generally used in face identification. Owing to the robustness of GW features against local distortions, variance of illumination and Probabilistic neural network give the proper results of classification. Taking advantage of wavelet transform use in face recognition and its proper outcomes, this Gabor Wavelet approach can be used in other image studies, such as practical images. The proper study of Basic brain images is of huge importance in the early detection of brain inconsistency and disorder, as they provide important detached information in the brain. In this paper, a two dimensional Gabor wavelet analysis application for brain images, for early identification of tumor and a method for brain tumor classification, where images are classified into non-cancerous (benign) brain tumor and cancerous (malignant) brain tumor.
二维离散小波变换和概率神经网络用于脑肿瘤检测与分类
本文提出了基于离散小波变换和概率神经网络的脑肿瘤检测与分类方法。二维Gabor小波分析和概率神经网络分析已广泛应用于人脸识别。由于GW特征对局部畸变具有鲁棒性,光照方差和概率神经网络给出了合适的分类结果。利用小波变换在人脸识别中的应用及其正确的结果,Gabor小波方法可用于其他图像研究,如实际图像。对基本脑图像的适当研究对于早期发现大脑不一致和紊乱非常重要,因为它们提供了大脑中重要的独立信息。本文将二维Gabor小波分析应用于脑图像,用于肿瘤的早期识别,并提出了一种脑肿瘤分类的方法,将图像分为非癌性(良性)脑肿瘤和癌性(恶性)脑肿瘤。
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