Journal of Jilin University(Information Science Ed
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JIN Lanyi, GUO Shuxu, MA Shuzhi, LIU Xiaoming, SUN Changjian, LI Xueyan
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Abstract: Aiming at the challenges, such as fewer labeled samples and expensive manual annotation in medical images, a network of liver CT(Computed Tomography) images segmentation model based on semi-supervised ladder is presented. First, the input data is reduced by super-pixel segmentation. Next, the patches are extracted around the center of pixels, and the patches are used to train a semi-supervised model. Finally, the trained model is used to achieve liver segmentation. Experiment results show that a small number of labeled pictures are able to obtain similar results with supervised learning.
Key words: ladder network, medical image segmentation, semi supervised learning, super-pixel
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JIN Lanyi, GUO Shuxu, MA Shuzhi, LIU Xiaoming, SUN Changjian, LI Xueyan. Liver Segmentation in CT Image Based on Semi-Supervised Ladder Network[J].Journal of Jilin University(Information Science Ed, 2018, 36(2): 158-164.
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http://xuebao.jlu.edu.cn/xxb/EN/Y2018/V36/I2/158
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