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Improved Gauss-Newton optimisation methods in affine registration of SPECT brain images

机译:改进的Gauss-Newton优化方法在SPECT脑图像的仿射配准中

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摘要

In single photon emission computed tomography images, the differences between brains of different subjects require the normalisation of the images with respect to a reference template. The general affine model with 12 parameters is usually chosen as a first normalisation procedure. Usually, the Levenberg-Marquardt or mostly the Gauss-Newton method are used in order to optimise a cost function, which presents an extreme value when the image matches with the template. In this reported work, these optimisation algorithms are compared with two alternative versions of the Gauss-Newton method. Both proposed alternatives include an additional parameter, which allows the adaptive change of the step length along the descent direction. Experimental and simulated results show that the inclusion of this parameter improves the convergence rate considerably.
机译:在单光子发射计算机断层扫描图像中,不同对象的大脑之间的差异要求将图像相对于参考模板进行标准化。通常选择具有12个参数的通用仿射模型作为第一个规范化过程。通常,使用Levenberg-Marquardt或主要是Gauss-Newton方法来优化成本函数,当图像与模板匹配时,成本函数表现出极高的价值。在这份报告的工作中,将这些优化算法与高斯-牛顿法的两个替代版本进行了比较。两种建议的替代方案都包括一个附加参数,该参数允许沿下降方向自适应改变步长。实验和仿真结果表明,该参数的加入大大提高了收敛速度。

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