Joint trilateral filtering for depth map super-resolution

Kai-Han Lo, Y. Wang, K. Hua
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引用次数: 34

Abstract

Depth map super-resolution is an emerging topic due to the increasing needs and applications using RGB-D sensors. Together with the color image, the corresponding range data provides additional information and makes visual analysis tasks more tractable. However, since the depth maps captured by such sensors are typically with limited resolution, it is preferable to enhance its resolution for improved recognition. In this paper, we present a novel joint trilateral filtering (JTF) algorithm for solving depth map super-resolution (SR) problems. Inspired by bilateral filtering, our JTF utilizes and preserves edge information from the associated high-resolution (HR) image by taking spatial and range information of local pixels. Our proposed further integrates local gradient information of the depth map when synthesizing its HR output, which alleviates textural artifacts like edge discontinuities. Quantitative and qualitative experimental results demonstrate the effectiveness and robustness of our approach over prior depth map upsampling works.
深度图超分辨率联合三边滤波
由于RGB-D传感器的需求和应用日益增加,深度图超分辨率是一个新兴的课题。与彩色图像一起,相应的距离数据提供了额外的信息,使可视化分析任务更容易处理。然而,由于这种传感器捕获的深度图通常具有有限的分辨率,因此最好提高其分辨率以提高识别能力。在本文中,我们提出了一种新的联合三边滤波(JTF)算法来解决深度图超分辨率问题。受双边滤波的启发,我们的JTF通过获取局部像素的空间和距离信息,利用并保留相关高分辨率(HR)图像的边缘信息。在合成深度图的HR输出时,我们进一步整合了深度图的局部梯度信息,减轻了边缘不连续等纹理伪影。定量和定性实验结果证明了我们的方法比先前的深度图上采样工作的有效性和鲁棒性。
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