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Kernel Sparse Models for Automated Tumor Segmentation

机译:用于自动肿瘤分割的内核稀疏模型

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摘要

In this paper, we propose sparse coding-based approaches for segmentation of tumor regions from magnetic resonance (MR) images. Sparse coding with data-adapted dictionaries has been successfully employed in several image recovery and vision problems. The proposed approaches obtain sparse codes for each pixel in brain MR images considering their intensity values and location information. Since it is trivial to obtain pixel-wise sparse codes, and combining multiple features in the sparse coding setup is not straight- forward, we propose to perform sparse coding in a high-dimensional feature space where non-linear similarities can be effectively modeled. We use the training data from expert- segmented images to obtain kernel dictionaries with the kernel K-lines clustering procedure. For a test image, sparse codes are computed with these kernel dictionaries, and they are used to identify the tumor regions. This approach is completely automated, and does not require user intervention to initialize the tumor regions in a test image. Furthermore, a low complexity segmentation approach based on kernel sparse codes, which allows the user to initialize the tumor region, is also presented. Results obtained with both the proposed approaches are validated against manual segmentation by an expert radiologist, and it is shown that proposed methods lead to accurate tumor identification.
机译:在本文中,我们提出了基于稀疏编码的从磁共振(MR)图像分割肿瘤区域的方法。具有数据自适应字典的稀疏编码已成功地用于一些图像恢复和视觉问题。考虑到它们的强度值和位置信息,所提出的方法为大脑MR图像中的每个像素获取稀疏代码。由于获得逐像素的稀疏代码并不容易,并且在稀疏编码设置中组合多个特征不是直接的,因此我们建议在可以有效建模非线性相似性的高维特征空间中执行稀疏编码。我们使用来自专家分割图像的训练数据,通过核K线聚类程序获得核字典。对于测试图像,将使用这些内核字典计算稀疏代码,并将它们用于识别肿瘤区域。这种方法是完全自动化的,不需要用户干预即可初始化测试图像中的肿瘤区域。此外,还提出了一种基于内核稀疏代码的低复杂度分割方法,该方法允许用户初始化肿瘤区域。通过这两种提议的方法获得的结果均经过专家放射科医生的手动分割验证,结果表明,提出的方法可准确鉴定肿瘤。

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