首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Comparison and evaluation of joint histogram estimation methods for mutual information based image registration
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Comparison and evaluation of joint histogram estimation methods for mutual information based image registration

机译:基于互信息的图像配准联合直方图估计方法的比较与评价

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Joint histogram is the only quantity required to calculate the mutual information (MI) between two images. For MI based image registration, joint histograms are often estimated through linear interpolation or partial volume interpolation (PVI). It has been pointed out that both methods may result in a phenomenon known as interpolation induced artifacts. In this paper, we implemented a wide range of interpolation/approximation kernels for joint histogram estimation. Some kernels are nonnegative. In this case, these kernels are applied in two ways as the linear kernel is applied in linear interpolation and PVI. In addition, we implemented two other joint histogram estimation methods devised to overcome the interpolation artifact problem. They are nearest neighbor interpolation with jittered sampling with/without histogram blurring and data resampling. We used the clinical data obtained from Vanderbilt University for all of the experiments. The objective of this study is to perform a comprehensive comparison and evaluation of different joint histogram estimation methods for MI based image registration in terms of artifacts reduction and registration accuracy.
机译:联合直方图是计算两个图像之间的互信息(MI)所需的唯一数量。对于基于MI的图像配准,通常通过线性插值或部分体积插值(PVI)估算联合直方图。已经指出,两种方法都可能导致被称为内插引起的伪像的现象。在本文中,我们为联合直方图估计实现了广泛的内插/近似核。一些内核是非负的。在这种情况下,将线性核应用于线性插值和PVI时,将以两种方式应用这些核。此外,我们还实施了另外两种联合直方图估计方法,这些方法旨在克服插值伪像问题。它们是具有/不具有直方图模糊和数据重采样的抖动采样的最近邻居插值。我们将范德比尔特大学获得的临床数据用于所有实验。这项研究的目的是针对伪影减少和配准精度对基于MI的图像配准进行不同的联合直方图估计方法的综合比较和评估。

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