MR Image Classification Using Adaboost for Brain Tumor Type

Astina Minz, Chandrakant Mahobiya
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引用次数: 73

Abstract

In medical diagnostic application, early defect detection is a crucial task as it provides critical insight into diagnosis. Medical imaging technique is actively developing field inengineering. Magnetic Resonance imaging (MRI) is one those reliable imaging techniques on which medical diagnostic is based upon. Manual inspection of those images is a tedious job as the amount of data and minute details are hard to recognize by the human. For this automating those techniques are very crucial. In this paper, we are proposing a method which can be utilized to make tumor detection easier. The MRI deals with the complicated problem of brain tumor detection. Due to its complexity and variance getting better accuracy is a challenge. Using Adaboost machine learning algorithm we can improve over accuracy issue. The proposed system consists of three parts such as Preprocessing, Feature extraction and Classification. Preprocessing has removed noise in the raw data, for feature extraction we used GLCM (Gray Level Co- occurrence Matrix) and for classification boosting technique used (Adaboost).
Adaboost用于脑肿瘤类型的MR图像分类
在医学诊断应用中,早期缺陷检测是一项至关重要的任务,因为它为诊断提供了关键的见解。医学影像技术是一个正在积极发展的工程领域。磁共振成像(MRI)是医学诊断所依赖的可靠成像技术之一。人工检查这些图像是一项繁琐的工作,因为大量的数据和微小的细节很难被人类识别。为此,自动化这些技术是非常关键的。在本文中,我们提出了一种可以使肿瘤检测更容易的方法。MRI处理的是复杂的脑肿瘤检测问题。由于它的复杂性和多样性,获得更好的精度是一个挑战。使用Adaboost机器学习算法可以改善精度过高的问题。该系统由预处理、特征提取和分类三部分组成。预处理消除了原始数据中的噪声,我们使用GLCM(灰度共生矩阵)进行特征提取,使用Adaboost进行分类增强技术。
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