卢卡斯-卡纳德能否用于估计3D混乱场景中的运动视差?

V. Chapdelaine-Couture, M. Langer
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引用次数: 0

摘要

当观察者在3D静态场景中移动时,运动场取决于可见物体的深度以及观察者的瞬时平移和旋转。通过计算附近运动场矢量的差值,观测器可以估计出局部运动视差的方向,进而估计出航向的方向。最近有人认为,在诸如森林之类的3D杂乱场景中,使用经典光流方法计算局部图像运动是有问题的,因为这些经典方法在深度不连续处存在问题。因此,从光流估计局部运动视差也应该是有问题的。本文对这一说法进行了评价。我们用经典的Lucas-Kanade法估计光流,用Rieger-Lawton法从估计的光流估计运动视差的方向。我们将运动视差估计与基于频率的Mann-Langer方法进行了比较。我们发现,如果Lucas-Kanade估计被充分修剪,同时使用特征值条件和平均绝对误差条件,那么Lucas-Kanade /Rieger-Lawton方法可以表现得和基于频率的方法一样好,甚至更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Lucas-Kanade be used to estimate motion parallax in 3D cluttered scenes?
When an observer moves in a 3D static scene, the motion field depends on the depth of the visible objects and on the observer's instantaneous translation and rotation. By computing the difference between nearby motion field vectors, the observer can estimate the direction of local motion parallax and in turn the direction of heading. It has recently been argued that, in 3D cluttered scenes such as a forest, computing local image motion using classical optical flow methods is problematic since these classical methods have problems at depth discontinuities. Hence, estimating local motion parallax from optical flow should be problematic as well. In this paper we evaluate this claim. We use the classical Lucas-Kanade method to estimate optical flow and the Rieger-Lawton method to estimate the direction of motion parallax from the estimated flow. We compare the motion parallax estimates to those of the frequency based method of Mann-Langer. We find that if the Lucas-Kanade estimates are sufficiently pruned, using both an eigenvalue condition and a mean absolute error condition, then the Lucas- Kanade/Rieger-Lawton method can perform as well as or better than the frequency-based method.
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