Herskovits Edward H
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:658-61. doi: 10.1109/EMBC.2015.7318448.
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.
具有高精度和可重复性的自动脑肿瘤图像分割在提升当前临床实践方面具有巨大潜力。字典学习(DL)技术近来已成功应用于各种图像处理任务。在这项工作中,采用了DL方法的核扩展。考虑了核DL技术的重构性和判别性版本,它们能够基于核技巧有效地纳入多模态非线性特征映射。我们新颖的判别性核DL公式允许使用K-SVD型算法联合学习基于任务驱动的核字典和线性分类器。所提出的方法使用高级别胶质瘤患者的真实脑磁共振(MR)图像进行了测试。获得的初步性能与当前技术水平具有竞争力。可以看出,判别性核DL方法在性能上没有太大牺牲的情况下减轻了计算负担。