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Semi-Supervised Robust One-Class Classification in RKHS for Abnormality Detection in Medical Images

机译:RKHS中的半监督鲁棒一类分类,用于医学图像异常检测

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Abnormality detection in medical images is a one-class classification problem for which typical methods use variants of kernel principal component analysis or one-class support vector machines. However, in practical deployment scenarios, many such methods are sensitive to the outliers present in the imperfectly-curated training sets. Current robust methods use heuristics for model fitting or lack formulations to leverage even a small amount of high-quality expert feedback. In contrast, we propose a novel method combining (i) robust statistical modeling, extending the multivariate generalized-Gaussian to a reproducing kernel Hilbert space, with (ii) semi-supervised learning to leverage a small expert-labeled outlier set. Results on simulated and real-world data, including endoscopy data, show that our method outperforms the state of the art in accurately detecting abnormalities.
机译:医学图像中的异常检测是一类分类问题,典型方法是使用核主成分分析的变体或一类支持向量机进行分类。但是,在实际的部署方案中,许多这样的方法对不完美策划的训练集中存在的异常值很敏感。当前的鲁棒方法使用启发式方法进行模型拟合或缺乏公式来利用即使是少量的高质量专家反馈。相比之下,我们提出了一种新颖的方法,该方法结合了(i)鲁棒的统计建模,将多元广义高斯扩展到再现核Hilbert空间,并且(ii)半监督学习以利用专家标记的小异常集。对模拟数据和实际数据(包括内窥镜检查数据)的结果表明,在准确检测异常方面,我们的方法优于最新技术。

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