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Unsupervised Lesion Detection with Locally Gaussian Approximation

机译:局部高斯近似的无监督病变检测

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Generative models have recently been applied to unsupervised lesion detection, where a distribution of normal data, i.e. the normative distribution, is learned and lesions are detected as out-of-distribu-tion regions. However, directly calculating the probability for the lesion region using the normative distribution is intractable. In this work, we address this issue by approximating the normative distribution with local Gaussian approximation and evaluating the probability of test samples in an iterative manner. We show that the local Gaussian approximator can be applied to several auto-encoding models to perform image restoration and unsupervised lesion detection. The proposed method is evaluated on the BraTS Challenge dataset, where the proposed method shows improved detection and achieves state-of-the-art results.
机译:生成模型最近已被用于无监督的病灶检测,其中学习了正常数据的分布,即规范分布,并且将病灶检测为分布范围外的区域。但是,使用规范分布直接计算病变区域的概率很困难。在这项工作中,我们通过用局部高斯近似来近似规范分布并以迭代方式评估测试样本的概率来解决这个问题。我们表明,局部高斯近似器可以应用于几种自动编码模型,以执行图像恢复和无监督病变检测。在BraTS Challenge数据集上对提出的方法进行了评估,该方法显示了改进的检测能力并获得了最新技术成果。

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