Optimal motion estimation

M. Spetsakis, J. Aloimonos
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引用次数: 52

Abstract

The problem of using feature correspondences to recover the structure and 3D motion of a moving object from its successive images is analyzed. They formulate the problem as a quadratic minimization problem with a nonlinear constraint. Then they derive the condition for the solution to be optimal under the assumption of Gaussian noise in the input, in the maximum-likelihood-principle sense. The authors present two efficient ways to approximate it and discuss some inherent limitations of the structure-from-motion problem when two frames are used that should be taken into account in robotics applications that involve dynamic imagery. Finally, it is shown that some of the difficulties inherent in the two-frame approach disappear when redundancy in the data is introduced. This is concluded from experiments using a structure-from-motion algorithm that is based on multiple frames and uses only the rigidity assumption.<>
最优运动估计
分析了利用特征对应从连续图像中恢复运动物体的结构和三维运动的问题。他们把这个问题表述为一个非线性约束的二次最小化问题。然后,在最大似然原理的意义上,他们推导了在输入高斯噪声假设下解的最优条件。作者提出了两种有效的近似方法,并讨论了当使用两帧时,在涉及动态图像的机器人应用中应该考虑的运动结构问题的一些固有局限性。最后,研究表明,当引入数据冗余时,两帧方法固有的一些困难消失了。这是通过使用基于多帧且仅使用刚度假设的运动构造算法的实验得出的结论。
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