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Deep and Structured Robust Information Theoretic Learning for Image Analysis

  • Yue Deng
  • , Feng Bao
  • , Xuesong Deng
  • , Ruiping Wang
  • , Youyong Kong
  • , Qionghai Dai
  • Tsinghua University
  • University of California at San Francisco
  • CAS - Institute of Computing Technology
  • Southeast University, Nanjing

科研成果: 期刊稿件文章同行评审

摘要

This paper presents a robust information theoretic (RIT) model to reduce the uncertainties, i.e., missing and noisy labels, in general discriminative data representation tasks. The fundamental pursuit of our model is to simultaneously learn a transformation function and a discriminative classifier that maximize the mutual information of data and their labels in the latent space. In this general paradigm, we, respectively, discuss three types of the RIT implementations with linear subspace embedding, deep transformation, and structured sparse learning. In practice, the RIT and deep RIT are exploited to solve the image categorization task whose performances will be verified on various benchmark data sets. The structured sparse RIT is further applied to a medical image analysis task for brain magnetic resonance image segmentation that allows group-level feature selections on the brain tissues.

源语言英语
文章编号7506023
页(从-至)4209-4221
页数13
期刊IEEE Transactions on Image Processing
25
9
DOI
出版状态已出版 - 9月 2016
已对外发布

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