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Deep Adaptive Log-Demons: Diffeomorphic Image Registration with Very Large Deformations

机译:深度自适应日志 - 恶魔:扩散图像配准,变形非常大

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This paper proposes a new framework for capturing large and complex deformation in image registration. Traditionally, this challenging problem relies firstly on a preregistration, usually an affine matrix containing rotation, scale, and translation and afterwards on a nonrigid transformation. According to preregistration, the directly calculated affine matrix, which is obtained by limited pixel information, may misregistrate when large biases exist, thus misleading following registration subversively. To address this problem, for two-dimensional (2D) images, the two-layer deep adaptive registration framework proposed in this paper firstly accurately classifies the rotation parameter through multilayer convolutional neural networks (CNNs) and then identifies scale and translation parameters separately. For three-dimensional (3D) images, affine matrix is located through feature correspondences by a triplanar 2D CNNs. Then deformation removal is done iteratively through preregistration and demons registration. By comparison with the state-of-the-art registration framework, our method gains more accurate registration results on both synthetic and real datasets. Besides, principal component analysis (PCA) is combined with correlation like Pearson and Spearman to form new similarity standards in 2D and 3D registration. Experiment results also show faster convergence speed.
机译:本文提出了一种用于在图像配准中捕获大而复杂变形的新框架。传统上,这种具有挑战性的问题首先依赖于预转移,通常是包含旋转,尺度和翻译的仿射矩阵以及在非脂肪转换上。根据预转移,通过有限的像素信息获得的直接计算的仿射矩阵可以在存在大偏差时可能错位,从而越象空地误导。为了解决这个问题,对于二维(2D)图像,本文提出的双层深度自适应登记框架首先通过多层卷积神经网络(CNN)精确地对旋转参数进行分类,然后单独识别比例和翻译参数。对于三维(3D)图像,仿射矩阵通过Triplanar 2D CNNS通过特征对应关系定位。然后通过预转化和恶魔登记迭代地进行变形去除。通过与最先进的登记框架进行比较,我们的方法在合成和实际数据集中获得了更准确的注册结果。此外,主成分分析(PCA)与Pearson和Spearman等相关性相结合,以在2D和3D注册中形成新的相似标准。实验结果还显示了更快的收敛速度。

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