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Robust shape prior modeling based on Gaussian-Bernoulli restricted Boltzmann Machine

机译:基于高斯-伯努利受限玻尔兹曼机的鲁棒形状先验建模

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摘要

Shape information is essential in medical image analysis as the anatomical structures usually have strong shape characteristics. Shape priors can resolve ambiguities when the low level appearance is weak or misleading due to imaging artifacts and diseases. In this paper, we propose a shape prior model based on the Gaussian-Bernoulli Restricted Boltzmann Machine (GB-RBM). This powerful generative model is effective in capturing complex shape variations and handling nonlinear shape transformations. The model also shows great robustness, which is able to handle both outliers and Gaussian noise with large variance. We validate our model on synthetic data and a real clinical problem, i.e., lung segmentation in chest X-ray. Experiments show that our shape modeling method is qualitatively and quantitatively better than other widely-used shape prior methods.
机译:形状信息在医学图像分析中至关重要,因为解剖结构通常具有很强的形状特征。当低水平外观很弱或由于成像伪影和疾病而引起误导时,形状先验可以解决歧义。在本文中,我们提出了基于高斯-伯努利限制玻尔兹曼机(GB-RBM)的形状先验模型。这个强大的生成模型可有效捕获复杂的形状变化并处理非线性形状变换。该模型还显示出强大的鲁棒性,能够以较大的方差处理离群值和高斯噪声。我们根据合成数据和一个实际的临床问题验证了我们的模型,即胸部X光片中的肺分割。实验表明,我们的形状建模方法在质量和数量上都优于其他广泛使用的形状现有方法。

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