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SubPatch: Random kd-tree on a Sub-sampled Patch Set for Nearest Neighbor Field Estimation

机译:子分量:在用于最近邻域估计的子采样补丁集上随机KD树

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We propose a new method to compute the approximate nearest-neighbors field (ANNF) between image pairs using random kd-tree and patch set sub-sampling. By exploiting image coherence we demonstrate that it is possible to reduce the number of patches on which we compute the ANNF, while maintaining high overall accuracy on the final result. Information on missing patches is then recovered by interpolation and propagation of good matches. The introduction of the sub-sampling factor on patch sets also allows for setting the desired trade off between accuracy and speed, providing a flexibility that lacks in state-of-the-art methods. Tests conducted on a public database prove that our algorithm achieves superior performance with respect to PatchMatch (PM) and Coherence Sensitivity Hashing (CSH) algorithms in a comparable computational time.
机译:我们建议使用随机kd树和修补程序集子采样计算图像对之间的近似最近邻居字段(Annf)的新方法。通过利用图像一致性,我们证明可以减少我们计算Annf的补丁的数量,同时保持最终结果的高总体精度。然后通过良好匹配的插值和传播恢复有关丢失补丁的信息。在补丁集上引入子采样因子还允许在精度和速度之间设置所需的折扣,从而提供最先进的方法的灵活性。在公共数据库上进行的测试证明,我们的算法在可比计算时间中相对于Patchmatch(PM)和相干敏感性散列(CSH)算法实现了卓越的性能。

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