Title of article :
Lung Nodule Image Classification Based on Local Difference Pattern and Combined Classifier
Author/Authors :
Mao, Keming Northeastern University - Shenyang - Liaoning Province, China , Deng, Zhuofu Northeastern University - Shenyang - Liaoning Province, China
Abstract :
This paper proposes a novel lung nodule classification method for low-dose CT images.The method includes two stages. First, Local
Difference Pattern (LDP) is proposed to encode the feature representation, which is extracted by comparing intensity difference
along circular regions centered at the lung nodule. Then, the single-center classifier is trained based on LDP. Due to the diversity of
feature distribution for different class, the training images are further clustered into multiple cores and the multicenter classifier is
constructed. The two classifiers are combined to make the final decision. Experimental results on public dataset show the superior
performance of LDP and the combined classifier.
Keywords :
LDP , Combined , PCA
Journal title :
Computational and Mathematical Methods in Medicine