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Semi-Supervised Robust Mixture Models in RKHS for Abnormality Detection in Medical Images

机译:在医学图像中的RKHS中的半监督鲁棒混合模型

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Abnormality detection in medical images is a one-class classification problem for which existing methods typically involve variants of kernel principal component analysis or one-class support vector machines. However, existing methods rely on highly-curated training sets with full supervision, often using heuristics for model fitting or ignore the variances of the data within principal subspaces. In contrast, we propose novel methods that can work with imperfectly curated datasets using robust statistical learning, by extending the multivariate generalized-Gaussian distribution to a reproducing kernel Hilbert space (RKHS) and employing it within a mixture model. We propose a novel semi-supervised extension of our learning scheme, showing that a small amount of expert feedback through high-quality labeled data of the outlier class can boost performance. We propose expectation maximization for our semi-supervised robust mixture-model learning in RKHS, using solely the Gram matrix and without the explicit lifting map. Our methods incorporate optimal component means, principal directions, and variances for abnormality detection. Results on four large public datasets on retinopathy and cancer, compared against a variety of contemporary methods, show that our method gives benefits over the state of the art in one-class classification for abnormality detection.
机译:医学图像中的异常检测是一种单级分类问题,现有方法通常涉及内核主成分分析或单级支持向量机的变体。然而,现有方法依赖于具有全面监督的高度策划培训集,通常使用模型拟合的启发式或忽略主管内部空间内数据的差异。相比之下,我们提出了一种新的方法,可以使用鲁棒统计学习来使用不完全策划的数据集,通过将多变量通用 - 高斯分布扩展到再现内核希尔伯特空间(RKHS)并在混合模型中使用它。我们提出了一种新的半监督延长我们的学习计划,显示通过高质量标记数据的少量专家反馈可以提高性能。我们提出了在RKHS中的半监督稳健混合模型学习的预期最大化,仅使用克矩阵,而没有明确的提升地图。我们的方法包含最佳分量装置,主方向和异常检测差异。结果四种大型公共数据集对视网膜病变和癌症进行了各种当代方法,表明我们的方法在一流的异常检测中提供了在一流的分类中的益处。

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