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When Discrete Meets Differential Assessing the Stability of Structure from Small Motion

机译:当离散遇到微分运动时评估结构的稳定性

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We provide a theoretical proof showing that under a proportional noise model, the discrete eight point algorithm behaves similarly to the differential eight point algorithm when the motion is small. This implies that the discrete algorithm can handle arbitrarily small motion for a general scene, as long as the noise decreases proportionally with the amount of image motion and the proportionality constant is small enough. This stability result extends to all normalized variants of the eight point algorithm. Using simulations, we show that given arbitrarily small motions and proportional noise regime, the normalized eight point algorithms outperform their differential counterparts by a large margin. Using real data, we show that in practical small motion problems involving optical flow, these discrete structure from motion (SFM) algorithms also provide better estimates than their differential counterparts, even when the motion magnitudes reach sub-pixel level. The better performance of these normalized discrete variants means that there is much to recommend them as differential SFM algorithms that are linear and normalized. Keywords Structure from motion - Perturbation analysis The support of the DSO grant R263-000-400-592 is gratefully acknowledged.
机译:我们提供了理论证明,表明在比例噪声模型下,运动较小时,离散八点算法的行为类似于差分八点算法。这意味着,只要噪声与图像运动量成比例地减小并且比例常数足够小,离散算法就可以处理一般场景的任意小运动。该稳定性结果扩展到八点算法的所有规范化变体。通过仿真,我们表明,在任意较小的运动和成比例的噪声情况下,归一化的八点算法在很大程度上要优于其差分方法。使用实际数据,我们发现在涉及光流的实际小运动问题中,即使运动幅度达到亚像素水平,这些运动离散结构(SFM)算法也比差分方法提供更好的估计。这些归一化离散变体的更好性能意味着有很多建议将它们作为线性和归一化的差分SFM算法。关键字运动的结构-扰动分析非常感谢DSO资助R263-000-400-592的支持。

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