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Optimization over Random and Gradient Probabilistic Pixel Sampling for Fast, Robust Multi-resolution Image Registration

机译:快速,鲁棒多分辨率图像配准随机和渐变概率像素采样优化

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This paper presents an approach to fast image registration through probabilistic pixel sampling. We propose a practical scheme to leverage the benefits of two state-of-the-art pixel sampling approaches: gradient magnitude based pixel sampling and uniformly random sampling. Our framework involves learning the optimal balance between the two sampling schemes off-line during training, based on a small training dataset, using particle swarm optimization. We then test the proposed sampling approach on 3D rigid registration against two state-of-the-art approaches based on the popular, publicly available, Vanderbilt RIRE dataset. Our results indicate that the proposed sampling approach yields much faster, accurate and robust registration results when compared against the state-of-the-art.
机译:本文通过概率像素采样提出了一种快速图像配准的方法。我们提出了一种实用的方案,以利用两个最先进的像素采样方法的益处:基于梯度幅度的像素采样和均匀随机采样。我们的框架涉及使用粒子群优化的小型训练数据集在训练期间在训练期间离线的两个采样方案之间的最佳平衡。然后,我们根据流行的,公开可用的Vanderbilt Rire数据集测试3D刚性注册的建议采样方法。我们的结果表明,与最先进的相比,所提出的采样方法产生更快,准确和稳健的登记结果。

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