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Non-rigid Image Registration Using Gaussian Mixture Models

机译:使用高斯混合模型的非刚性图像配准

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Non-rigid mutual information (MI) based image registration is prone to converge to local optima due to Parzen or histogram based density estimation used in conjunction with estimation of a high dimensional deformation field. We describe an approach for non-rigid registration that uses the log-likelihood of the target image given the deformed template as a similarity metric, wherein the distribution is modeled using a Gaussian mixture model (GMM). Using GMMs reduces the density estimation step to that of estimating the parameters of the GMM, thus being more computationally efficient and requiring fewer number of samples for accurate estimation. We compare the performance of our approach (GMM-Cond) with that of MI with Parzen density estimation (Parzen-MI), on inter-subject and inter-modality (CT to MR) mouse images. Mouse image registration is challenging because of the presence of a rigid skeleton within non-rigid soft tissue, and due to major shape and posture variability in inter-subject registration. The results show that GMM-Cond has higher registration accuracy than Parzen-MI in terms of sum of squared difference in intensity and dice coefficients of overall and skeletal overlap. The GMM-Cond approach is a general approach that can be considered a semi-parametric approximation to MI based registration, and can be used an alternative to MI for high dimensional non-rigid registration.
机译:由于基于PARZEN或直方图的密度估计与高维变形字段的估计一起使用,基于非刚性相互信息(MI)的图像登记易于收敛到局部最佳估计。我们描述了一种用于非刚性注册的方法,该方法使用将变形模板作为相似度量给出的目标图像的偶像似然,其中使用高斯混合模型(GMM)建模分布。使用GMMS将密度估计步骤降低到估计GMM参数的密度估计步骤,从而更加计算上有效并且需要更少数量的样本,用于准确估计。我们将方法(GMM-CONK)与MI的性能进行比较,具有截止介质估计(Parzen-Mi),在对象间和模态间(CT到MR)鼠标图像中。由于非刚性软组织内的刚性骨架存在刚性骨架,并且由于在主题间登记中存在刚性骨架,因此鼠标图像配准是具有挑战性的。结果表明,在整体和骨骼重叠的强度和骰子系数的平方差和骰子系数的平方和骰子系数的总和中,GMM-COND具有比Parzen-Mi更高的登记精度。 GMM-COND方法是一种通用方法,可以被认为是基于MI的基于MI的半参数近似,并且可以用来用于MI的替代,用于高维非刚性配准。

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