Performance Analysis of Lung Cancer Classification using Multiple Feature Extraction with SVM and KNN Classifiers

A. S., M. Z. Kurain, M. Nagaraja
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引用次数: 2

Abstract

All over the world for individual’s death lung malignancy is considered as typical reason. Image processing utilization has increased stage by stage. With tremendous images volume in general radiologist predictions to discover lung malignancy may not be perfect. This paper concentrates at texture feature extraction and classification of lung CT image as normal or affected. Different phases involved are preprocessing, segmentation, feature extraction and classifier. Preprocessing is done using median filter followed by Watershed segmentation. Watershed segmentation is culled for choosing the required region of interest, and then the performance analysis of lung cancer classification is done using multiple features such as GLCM, LBP and HOG and various classifier to choose the best suitable combination of features and classifier for improved classification results. The results and methodology represents further improvements in precision in lung malignancy identification and with enhanced exactness in classification outcomes.
基于SVM和KNN分类器的多特征提取肺癌分类性能分析
在世界范围内,肺恶性肿瘤被认为是导致个体死亡的典型原因。图像处理的利用率逐步提高。随着大量图像的出现,放射科医生对肺部恶性肿瘤的预测可能并不完美。本文主要研究肺部CT图像的纹理特征提取及正常与受影响的分类。所涉及的不同阶段包括预处理、分割、特征提取和分类。预处理使用中值滤波,然后进行分水岭分割。对分水岭分割进行剔除,选择所需的感兴趣区域,然后利用GLCM、LBP、HOG等多个特征和各种分类器对肺癌分类性能进行分析,选择最适合的特征与分类器组合,以提高分类效果。结果和方法进一步提高了肺恶性肿瘤鉴定的准确性,并提高了分类结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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