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Structure Selective Depth Superresolution for RGB-D Cameras

机译:RGB-D摄像机的结构选择性深度超分辨率

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This paper describes a method for high-quality depth superresolution. The standard formulations of image-guided depth upsampling, using simple joint filtering or quadratic optimization, lead to texture copying and depth bleeding artifacts. These artifacts are caused by inherent discrepancy of structures in data from different sensors. Although there exists some correlation between depth and intensity discontinuities, they are different in distribution and formation. To tackle this problem, we formulate an optimization model using a nonconvex regularizer. A nonlocal affinity established in a high-dimensional feature space is used to offer precisely localized depth boundaries. We show that the proposed method iteratively handles differences in structure between depth and intensity images. This property enables reducing texture copying and depth bleeding artifacts significantly on a variety of range data sets. We also propose a fast alternating direction method of multipliers algorithm to solve our optimization problem. Our solver shows a noticeable speed up compared with the conventional majorize-minimize algorithm. Extensive experiments with synthetic and real-world data sets demonstrate that the proposed method is superior to the existing methods.
机译:本文介绍了一种高质量的深度超分辨率方法。使用简单的联合滤波或二次优化的图像引导深度向上采样的标准公式会导致纹理复制和深度渗漏伪像。这些伪影是由来自不同传感器的数据中结构的固有差异引起的。尽管深度和强度不连续性之间存在一定的相关性,但它们在分布和形成上是不同的。为了解决这个问题,我们使用非凸正则化器来制定优化模型。在高维特征空间中建立的非局部亲和力用于提供精确的局部深度边界。我们表明,提出的方法可以迭代处理深度和强度图像之间的结构差异。此属性可以在各种范围数据集上显着减少纹理复制和深度出血伪像。我们还提出了乘数算法的快速交替方向方法来解决我们的优化问题。与传统的majorize-minimize算法相比,我们的求解器显示出显着的速度提升。使用综合和真实数据集进行的大量实验表明,该方法优于现有方法。

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