1. Brain tumor image segmentation using kernel dictionary learning.
- Author
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Jeon Lee, Seung-Jun Kim, Rong Chen, and Herskovits EH
- Subjects
- Algorithms, Brain, Humans, Image Processing, Computer-Assisted, Reproducibility of Results, Brain Neoplasms
- Abstract
Automated brain tumor image segmentation with high accuracy and reproducibility holds a big potential to enhance the current clinical practice. Dictionary learning (DL) techniques have been applied successfully to various image processing tasks recently. In this work, kernel extensions of the DL approach are adopted. Both reconstructive and discriminative versions of the kernel DL technique are considered, which can efficiently incorporate multi-modal nonlinear feature mappings based on the kernel trick. Our novel discriminative kernel DL formulation allows joint learning of a task-driven kernel-based dictionary and a linear classifier using a K-SVD-type algorithm. The proposed approaches were tested using real brain magnetic resonance (MR) images of patients with high-grade glioma. The obtained preliminary performances are competitive with the state of the art. The discriminative kernel DL approach is seen to reduce computational burden without much sacrifice in performance.
- Published
- 2015
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