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Generalized Partial Volume: An Inferior Density Estimator to Parzen Windows for Normalized Mutual Information

机译:广义局部体积:Parzen Windows的弱密度估计器,用于归一化互信息

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Mutual Information (MI) and normalized mutual information (NMI) are popular choices as similarity measure for multimodal image registration. Presently, one of two approaches is often used for estimating these measures: The Parzen Window (PW) and the Generalized Partial Volume (GPV). Their theoretical relation has so far been unexplored. We present the direct connection between PW and GPV for NMI in the case of rigid and non-rigid image registration. Through step-by-step derivations of PW and GPV we clarify the difference and show that GPV is algorithmically inferior to PW from a model point of view as well as w.r.t. computational complexity. Finally, we present algorithms for both approaches for NMI which is comparable in speed to Sum of Squared Differences (SSD), and we illustrate the differences between PW and GPV on a number of registration examples.
机译:互信息(MI)和归一化互信息(NMI)作为多模式图像配准的相似性度量是很受欢迎的选择。当前,经常使用两种方法之一来估计这些度量:Parzen窗口(PW)和广义局部体积(GPV)。到目前为止,它们的理论关系尚未得到探索。在刚性和非刚性图像配准的情况下,我们介绍了用于NMI的PW和GPV之间的直接连接。通过逐步推导PW和GPV,我们弄清了差异,并从模型角度和w.r.t.方面证明了GPV在算法上不如PW。计算复杂度。最后,我们提供了NMI两种方法的算法,其速度与平方差之和(SSD)相当,并且在许多注册示例中说明了PW和GPV之间的差异。

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