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3D non-rigid registration by gradient descent on a Gaussian-windowed similarity measure using convolutions

机译:使用卷积在高斯窗口相似性度量上通过梯度下降进行3D非刚性配准

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Non-rigid registration of medical images is usually presented as a physical model driven by forces deriving from a measure of similarity of the images. These forces can be computed using a gradient-descent scheme for simple intensity-based similarity measures. However, for more complex similarity measures, using for instance local statistics, the forces are usually found using a block matching scheme. Here, the authors introduce a Gaussian window scheme, where the local statistics (here the sum of local correlation coefficients) are weighted with Gaussian kernels. The authors show that the criterion can be deducted easily to obtain forces to guide the registration. Moreover, these forces can be computed very efficiently by global convolutions inside the real image of the Gaussian window in a time independent of the size of the Gaussian window. The authors also present two minimization strategies by gradient descent to optimize the similarity measure: a linear search and a Gauss-Newton-like scheme. Experiments on synthetic and real 3D data show that the sum of local correlation coefficients optimized using a Gauss-Newton scheme is a fast and accurate method to register images corrupted by a non-uniform bias.
机译:医学图像的非刚性配准通常表示为物理模型,该物理模型由来自图像相似性度量的力驱动。可以使用梯度下降方案针对基于强度的简单相似性度量来计算这些力。但是,对于更复杂的相似性度量,例如使用本地统计信息,通常使用块匹配方案来找到力。在这里,作者介绍了一种高斯窗方案,其中使用高斯核对局部统计量(此处为局部相关系数之和)进行加权。作者表明,可以轻松推导出该标准,以获得指导注册的力量。而且,这些力可以通过高斯窗口的实像内的全局卷积在不依赖于高斯窗口大小的时间内进行非常有效的计算。作者还提出了两种通过梯度下降的最小化策略来优化相似性度量:线性搜索和类似高斯-牛顿的方案。对合成和真实3D数据进行的实验表明,使用高斯-牛顿方案优化的局部相关系数之和是一种快速,准确的方法,用于记录因非均匀偏差而损坏的图像。

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