Classification of lung nodules with feature extraction using CT scan images

M. Jayalaxmi, J. Dhanaselvam, R. Swathi, M. Babu
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Abstract

OBJECTIVE: The main aim is to differentiate the various types of lung nodules using the SVM classifier. By identifying the lung nodules, the cause of lung cancer can be avoided. METHODOLOGY: The major contributions in this system are (i) Patch based division, to partition the original images (ii) Feature extraction stage, to extract feature information (iii) Classification stage, to classify the four types of lung nodules with the help of SVM classifier with pLSA. FINDINGS: This system has an improvement with the Local Tetra Pattern (LTrP) to provide more feature information. This pattern extracts feature information from more than two direction to give accurate results. IMPROVEMENT: This system can be improved with different classifier to achieve accurate classification.
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基于CT扫描图像特征提取的肺结节分类
目的:主要目的是利用SVM分类器区分不同类型的肺结节。通过鉴别肺结节,可以避免肺癌的发生。方法:本系统的主要贡献有:(i)基于Patch的分割,对原始图像进行分割;(ii)特征提取阶段,提取特征信息;(iii)分类阶段,利用SVM分类器结合pLSA对四种类型的肺结节进行分类。结果:该系统改进了局部利乐模式(ltp),提供了更多的特征信息。该模式从两个以上的方向提取特征信息,从而得到准确的结果。改进:本系统可采用不同的分类器进行改进,实现准确的分类。
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