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Monocular Extraction of 2.1D Sketch Using Constrained Convex Optimization

机译:基于约束凸优化的单眼2.1D草图提取

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This paper presents an approach to estimating the 2.1D sketch from monocular, low-level visual cues. We use a low-level segmenter to partition the image into regions, and, then, estimate their 2.1D sketch, subject to figure-ground and similarity constraints between neighboring regions. The 2.1D sketch assigns a depth ordering to image regions which are expected to correspond to objects and surfaces in the scene. This is cast as a constrained convex optimization problem, and solved within the optimization transfer framework. The optimization objective takes into account the curvature and convexity of parts of region boundaries, appearance, and spatial layout properties of regions. Our new optimization transfer algorithm admits a closed-form expression of the duality gap, and thus allows explicit computation of the achieved accuracy. The algorithm is efficient with quadratic complexity in the number of constraints between image regions. Quantitative and qualitative results on challenging, real-world images of Berkeley segmentation, Geometric Context, and Stanford Make3D datasets demonstrate our high accuracy, efficiency, and robustness.
机译:本文提出了一种从单眼,低级视觉提示中估计2.1D草图的方法。我们使用低级分割器将图像划分为多个区域,然后根据相邻区域之间的图形背景和相似性约束,估计其2.1D草图。 2.1D草图将深度顺序分配给预期与场景中的对象和曲面相对应的图像区域。这被转换为约束凸优化问题,并在优化传递框架内解决。优化目标考虑了区域边界的部分的曲率和凸度,区域的外观和空间布局属性。我们的新优化传递算法允许对偶间隙的闭合形式表示,从而允许显式计算所实现的精度。该算法在图像区域之间的约束数量上具有二次复杂度,效率很高。在具有挑战性的真实世界中,伯克利分割,几何上下文和Stanford Make3D数据集的定量和定性结果证明了我们的高精度,高效率和鲁棒性。

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