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CNN Driven Sparse Multi-Level B-spline Image Registration

机译:CNN驱动稀疏多级B样条图像配准

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Traditional single-grid and pyramidal B-spline parameterizations used in deformable image registration require users to specify control point spacing configurations capable of accurately capturing both global and complex local deformations. In many cases, such grid configurations are non-obvious and largely selected based on user experience. Recent regularization methods imposing sparsity upon the B-spline coefficients throughout simultaneous multi-grid optimization, however, have provided a promising means of determining suitable configurations automatically. Unfortunately, imposing sparsity on over-parameterized Bsp line models is computationally expensive and introduces additional difficulties such as undesirable local minima in the B-spline coefficient optimization process. To overcome these difficulties in determining B-spline grid configurations, this paper investigates the use of convolutional neural networks (CNNs) to learn and infer expressive sparse multi-grid configurations prior to B-spline coefficient optimization. Experimental results show that multi-grid configurations produced in this fashion using our CNN based approach provide registration quality comparable to L_1-norm constrained over-parameterizations in terms of exactness, while exhibiting significantly reduced computational requirements.
机译:可变形图像注册中使用的传统单网和金字塔曲线参数要求用户要求用户指定能够准确地捕获全局和复杂的本地变形的控制点间距配置。在许多情况下,这种网格配置基于用户体验是非显而易见的且很大程度上选择。然而,最近的正则化方法在同时多电网优化的过程中对B样条系数施加稀疏性,已经提供了自动确定合适配置的有希望的方法。遗憾的是,对过度参数化BSP线模型的稀疏性是计算昂贵的并且在B样条系数优化过程中引入了额外的诸如不良局部最小值的额外困难。为了克服这些困难来确定B样条网格配置,本文研究了卷积神经网络(CNNS)的使用来学习和推断出在B样条系数优化之前的表达稀疏多网格配置。实验结果表明,使用基于CNN的方法以这种方式生产的多电网配置提供了与精确度的L_1-NOM限制相当的配准质量,同时表现出显着降低的计算要求。

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