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首页> 外文期刊>International Journal of Computer Vision >Robust Algebraic Segmentation of Mixed Rigid-Body and Planar Motions from Two Views
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Robust Algebraic Segmentation of Mixed Rigid-Body and Planar Motions from Two Views

机译:从两个角度看混合刚体和平面运动的鲁棒代数分割

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This paper studies segmentation of multiple rigid-body motions in a 3-D dynamic scene under perspective camera projection. We consider dynamic scenes that contain both 3-D rigid-body structures and 2-D planar structures. Based on the well-known epipolar and homography constraints between two views, we propose a hybrid perspective constraint (HPC) to unify the representation of rigid-body and planar motions. Given a mixture of K hybrid perspective constraints, we propose an algebraic process to partition image correspondences to the individual 3-D motions, called Robust Algebraic Segmentation (RAS). Particularly, we prove that the joint distribution of image correspondences is uniquely determined by a set of (2K)-th degree polynomials, a global signature for the union of K motions of possibly mixed type. The first and second derivatives of these polynomials provide a means to recover the association of the individual image samples to their respective motions. Finally, using robust statistics, we show that the polynomials can be robustly estimated in the presence of moderate image noise and outliers. We conduct extensive simulations and real experiments to validate the performance of the new algorithm. The results demonstrate that RAS achieves notably higher accuracy than most existing robust motion-segmentation methods, including random sample consensus (RANSAC) and its variations. The implementation of the algorithm is also two to three times faster than the existing methods. The implementation of the algorithm and the benchmark scripts are available at http://perception.csl.illinois.edu/ras/ .
机译:本文研究了透视相机投影下3D动态场景中多个刚体运动的分割。我们考虑同时包含3-D刚体结构和2-D平面结构的动态场景。基于两个视图之间众所周知的对极和单应性约束,我们提出了混合透视约束(HPC)以统一刚体和平面运动的表示。给定混合的K个混合透视约束,我们提出了一种代数过程,将图像对应关系划分为各个3-D运动,称为鲁棒代数分割(RAS)。特别是,我们证明了图像对应关系的联合分布是唯一由一组第(2K)次多项式确定的,这是可能混合类型的K个运动的并集的全局签名。这些多项式的一阶和二阶导数提供了一种手段来恢复各个图像样本与其各自运动的关联。最后,使用稳健的统计数据,我们表明可以在存在适度的图像噪声和离群值的情况下稳健地估计多项式。我们进行了广泛的仿真和真实实验,以验证新算法的性能。结果表明,与大多数现有的鲁棒运动分割方法(包括随机样本共识(RANSAC)及其变体)相比,RAS的准确性明显更高。该算法的实现也比现有方法快两到三倍。该算法的实现和基准脚本可在http://perception.csl.illinois.edu/ras/获得。

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