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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

摘要

A robust method to automatically segment and identify tumor regions in medical images is extremely valuable for clinical diagnosis and disease modeling. In various embodiments, an efficient algorithm uses sparse models in feature spaces to identify pixels belonging to tumorous regions. By fusing both intensity and spatial location information of the pixels, this technique can automatically localize tumor regions without user intervention. Using a few expert-segmented training images, a sparse coding-based classifier is learned. For a new test image, the sparse code obtained from every pixel is tested with the classifier to determine if it belongs to a tumor region. Particular embodiments also provide a highly accurate, low-complexity procedure for cases when the user can provide an initial estimate of the tumor in a test image.
机译:自动分割和识别医学图像中肿瘤区域的可靠方法对于临床诊断和疾病建模非常有价值。在各种实施例中,有效的算法在特征空间中使用稀疏模型来识别属于肿瘤区域的像素。通过融合像素的强度和空间位置信息,此技术可以自动定位肿瘤区域,而无需用户干预。使用一些专家分段的训练图像,学习了基于稀疏编码的分类器。对于新的测试图像,使用分类器测试从每个像素获得的稀疏代码,以确定其是否属于肿瘤区域。对于用户可以在测试图像中提供肿瘤的初始估计的情况,特定实施例还提供了高度准确,低复杂度的过程。

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