首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Mutual information-based multimodal image registration using a novel joint histogram estimation.
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Mutual information-based multimodal image registration using a novel joint histogram estimation.

机译:使用新型联合直方图估计的基于互信息的多峰图像配准。

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摘要

Mutual information (MI)-based image registration has been proved to be very effective in multimodal medical image applications. For computing the mutual information between two images, the joint histogram needs to be estimated. As we know, the joint histogram estimation through linear interpolation and partial volume (PV) interpolation methods may result in the emergency of the local extreme in mutual information registration function. The local extreme is likely to hamper the optimization process and influence the registration accuracy. In this paper, we present a novel joint histogram estimation method (HPV) by using an approximate function of Hanning windowed sinc as kernel function of partial volume interpolation. We apply it to both rigid registration and non-rigid registration. In addition, we give a new method estimating the gradient of mutual information with respect to the model parameters during non-rigid registration. By the experiments on both synthetic and real images, it is clearly shown that the new algorithm has the ability to reduce the local extreme, and the registration accuracy is improved.
机译:基于互信息(MI)的图像配准已被证明在多模式医学图像应用中非常有效。为了计算两个图像之间的互信息,需要估计联合直方图。众所周知,通过线性插值和部分体积(PV)插值方法进行联合直方图估计可能会导致互信息注册函数出现局部极值的紧急情况。局部极值可能会妨碍优化过程并影响套准精度。在本文中,我们通过使用Hanning开窗Sinc的近似函数作为部分体积插值的核函数,提出了一种新颖的联合直方图估计方法(HPV)。我们将其应用于刚性注册和非刚性注册。此外,我们提供了一种新方法,可以估计非刚性配准过程中互信息相对于模型参数的梯度。通过对合成图像和真实图像的实验,可以清楚地表明,该新算法具有减少局部极值的能力,提高了配准精度。

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