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Robust $L_{2}E$ Estimation of Transformation for Non-Rigid Registration

机译:健壮的 $ L_ {2} E $ 非刚性注册的转换估计

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摘要

We introduce a new transformation estimation algorithm using the estimator and apply it to non-rigid registration for building robust sparse and dense correspondences. In the sparse point case, our method iteratively recovers the point correspondence and estimates the transformation between two point sets. Feature descriptors such as shape context are used to establish rough correspondence. We then estimate the transformation using our robust algorithm. This enables us to deal with the noise and outliers which arise in the correspondence step. The transformation is specified in a functional space, more specifically a reproducing kernel Hilbert space. In the dense point case for nonrigid image registration, our approach consists of matching both sparsely and densely sampled SIFT features, and it has particular advantages in handling significant scale changes and rotations. The experimental results show that our approach greatly outperforms state-of-the-art methods, particularly when the data contains severe outliers.
机译:我们引入了一种新的使用估计器的变换估计算法,并将其应用于非刚性注册,以构建鲁棒的稀疏和密集的对应关系。在稀疏点的情况下,我们的方法迭代地恢复点对应关系并估计两个点集之间的变换。特征描述符(例如形状上下文)用于建立粗略的对应关系。然后,我们使用鲁棒的算法来估计转换。这使我们能够处理在对应步骤中出现的噪声和异常值。转换是在功能空间中指定的,更具体地说是在再生内核Hilbert空间中指定的。在用于非刚性图像配准的密集点情况下,我们的方法包括匹配稀疏和密集采样的SIFT特征,并且在处理显着的比例变化和旋转方面具有特殊优势。实验结果表明,我们的方法大大优于最新方法,特别是当数据包含严重异常值时。

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