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Weighted Robust PCA for Statistical Shape Modeling

机译:用于统计形状建模的加权鲁棒PCA

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Statistical shape models (SSMs) play an important role in medical image analysis. A sufficiently large number of high quality datasets is needed in order to create a SSM containing all possible shape variations. However, the available datasets may contain corrupted or missing data due to the fact that clinical images are often captured incompletely or contain artifacts. In this work, we propose a weighted Robust Principal Component Analysis (WRPCA) method to create SSMs from incomplete or corrupted datasets. In particular, we introduce a weighting scheme into the conventional Robust Principal Component Analysis (RPCA) algorithm in order to discriminate unusable data from meaningful ones in the decomposition of the training data matrix more accurately. For evaluation, the proposed WRPCA is compared with conventional RPCA on both corrupted (63 CT datasets of the liver) and incomplete datasets (15 MRI datasets of the human foot). The results show a significant improvement in terms of reconstruction accuracy on both datasets.
机译:统计形状模型(SSMS)在医学图像分析中发挥着重要作用。需要足够大量的高质量数据集,以便创建包含所有可能的形状变化的SSM。然而,由于临床图像通常不完全或包含伪像,因此可用的数据集可能包含损坏或缺失的数据。在这项工作中,我们提出了一种加权强大的主成分分析(WRPCA)方法来从不完整或损坏的数据集创建SSM。特别地,我们将加权方案介绍到传统的鲁棒主成分分析(RPCA)算法中,以便更准确地将无法使用的数据与有意义的数据分解中的分解。为了评估,将所提出的WRPCA与常规RPCA进行比较,腐败(肝脏63CT数据集)和不完全数据集(人脚的15 MRI数据集)。结果表明,在两个数据集上的重建准确性方面表现出显着的改进。

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