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Motion Competition: Variational Integration of Motion Segmentation and Shape Regularization

机译:运动竞赛:运动分割和形状规则化的变分集成

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We present a variational method for the segmentation of piecewise affine flow fields. Compared to other approaches to motion segmentation, we minimize a single energy functional both with respect to the affine motion models in the separate regions and with respect to the shape of the separating contour. In the manner of region competition, the evolution of the segmenting contour is driven by a force which aims at maximizing a homogeneity measure with respect to the estimated motion in the adjoining regions. We compare segmentations obtained for the models of piecewise affine motion, piecewise constant motion, and piecewise constant intensity. For objects which cannot be discriminated from the background by their appearance, the desired motion segmentation is obtained, although the corresponding segmentation based on image intensities fails. The region-based formulation facilitates convergence of the contour from its initialization over fairly large distances, and the estimated discontinuous flow field is progressively improved during the gradient descent minimization. By including in the variational method a statistical shape prior, the contour evolution is restricted to a subspace of familiar shapes, such that a robust estimation of irregularly moving shapes becomes feasible.
机译:我们提出了一种分段仿射流场分割的变分方法。与其他运动分割方法相比,相对于分离区域中的仿射运动模型以及分离轮廓的形状,我们将单个能量函数最小化。以区域竞争的方式,分割轮廓的演变由力驱动,该力旨在相对于相邻区域中的估计运动最大化同质性度量。我们比较分段仿射运动,分段恒定运动和分段恒定强度模型获得的分割。对于无法通过外观与背景进行区分的对象,尽管基于图像强度的相应分割失败了,但仍获得了所需的运动分割。基于区域的公式化促进了轮廓在相当长的距离上的收敛,并且在梯度下降最小化过程中,估计的不连续流场逐渐得到改善。通过在变化方法中包括先验统计形状,轮廓演变被限制在熟悉形状的子空间中,从而对不规则运动形状的鲁棒估计变得可行。

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