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Analysis and improvement of joint bilateral upsampling for depth image super-resolution

机译:深度图像超分辨率联合双边上采样的分析与改进

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We analyze and propose an improved implementation of joint bilateral upsampling algorithm [5] for depth image super-resolution (SR). The input to the algorithm is a low resolution (LR) depth image and its corresponding high resolution (HR) color image. With the guidance of HR color image, the depth edges can be preserved during the SR process. However, in the original implementation, the sparse sampling operation on the HR color image leads noticeable staircase effect on the generated result. In this paper, we perform a detailed analysis of the original implementation and formulate it as the joint bilateral filtering and nearest neighbor upsampling process. An improved implementation is then proposed to perform dense sampling on the guidance image. It will reduce staircase effect and demonstrated effective both quantitatively and qualitatively in the benchmark dataset.
机译:我们分析并提出了一种针对深度图像超分辨率(SR)的联合双边上采样算法[5]的改进实现。该算法的输入是低分辨率(LR)深度图像及其对应的高分辨率(HR)彩色图像。借助HR彩色图像,可以在SR过程中保留深度边缘。但是,在原始实现中,对HR彩色图像进行稀疏采样操作会对生成的结果产生明显的阶梯效应。在本文中,我们对原始实现进行了详细的分析,并将其表述为联合双边滤波和最近邻上采样过程。然后提出一种改进的实施方式,以对引导图像执行密集采样。它将减少阶梯效应,并在基准数据集中定量和定性地证明有效。

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