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A Novel Projection Based Approach for Medical Image Registration

机译:一种基于投影的医学图像配准新方法

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摘要

In this paper, we propose a computationally efficient method for medical image registration. The centerpiece of the approach is to reduce the dimensions of each image via a projection operation. The two sequences of projection images corresponding to each image are used for estimating the registration parameters. Depending upon how the projection geometry is set up, the lower dimension registration problem can be parameterized and solved for a subset of parameters from the original problem. Computation of similarity metrics on the lower dimension projection images is significantly less complex than on the original volumetric images. Furthermore, depending on the type of projection operator used, one can achieve a better signal to noise ratio for the projection images than the original images. In order to further accelerate the process, we use Graphic Processing Units (GPUs) for generating projections of the volumetric data. We also perform the similarity computation on the graphics board, using a GPU with a programmable rendering pipeline. By doing that, we avoid transferring a large amount of data from graphics memory to system memory for computation. Furthermore, the performance of the more complex algorithms exploiting the graphics processor's capabilities is greatly improved. We evaluate the performance and the speed of the proposed projection based registration approach using various similarity measures and benchmark them against an SSE-accelerated CPU based implementation.
机译:在本文中,我们提出了一种计算有效的医学图像配准方法。该方法的核心是通过投影操作减小每个图像的尺寸。与每个图像相对应的两个投影图像序列用于估计配准参数。根据投影几何的设置方式,可以对较低尺寸的配准问题进行参数设置,并针对原始问题中的参数子集进行求解。在较低维度的投影图像上的相似性度量的计算比在原始体积图像上的复杂度显着降低。此外,根据所使用的投影算子的类型,可以比原始图像获得更好的投影图像信噪比。为了进一步加速该过程,我们使用图形处理单元(GPU)来生成体积数据的投影。我们还使用带有可编程渲染管线的GPU在图形板上执行相似度计算。这样,我们避免了将大量数据从图形内存传输到系统内存进行计算。此外,利用图形处理器功能的更复杂算法的性能也大大提高。我们使用各种相似性度量来评估所建议的基于投影的注册方法的性能和速度,并针对基于SSE加速CPU的实现对它们进行基准测试。

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