Guidance Based Improved Depth Upsampling With Better Initial Estimate

Q3 Computer Science
Chandra Shaker Balure, M RameshKini
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引用次数: 1

Abstract

Like optical images, depth images are also gaining popularity because of its use in many applications like robot navigation, augmented reality, 3DTV and more. The commercially available depth cameras generate depth images which suffer from low spatial resolution, corrupted with noise, and missing regions. Such images need to be super-resolved, denoised and inpainted before using them to have better accuracy. Super-resolution (SR) techniques can be used to produce a high-resolution output. Since SR is an ill-posed inverse problem, a good initial estimate is always a good regulariser to find the optimal solution. We propose an initial estimate as part of our SR pipeline, esp. ×8, which will helps in quick convergence and accurate output. We propose a cascade approach by combining residual interpolation (RI) method with anisotropic total generalised variation (ATGV) method, both uses HR guidance image. The improvements are shown qualitative and quantitative with different levels of noise.
具有更好初始估计的基于制导的改进深度上采样
与光学图像一样,深度图像也因其在机器人导航、增强现实、3DTV等许多应用中的应用而越来越受欢迎。商业上可获得的深度相机生成的深度图像具有低空间分辨率、被噪声破坏和区域缺失的问题。在使用这些图像之前,需要对其进行超分辨率、去噪和修复,以获得更好的精度。超分辨率(SR)技术可用于产生高分辨率输出。由于SR是一个不适定逆问题,一个好的初始估计总是一个很好的正则化器来找到最优解。我们提出了一个初始估计作为SR管道的一部分,特别是×8,这将有助于快速收敛和准确输出。我们提出了一种将残差插值(RI)方法与各向异性全广义变异(ATGV)方法相结合的级联方法,两者都使用HR制导图像。在不同的噪声水平下,显示了定性和定量的改进。
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来源期刊
International Journal of Computational Vision and Robotics
International Journal of Computational Vision and Robotics Computer Science-Computer Science Applications
CiteScore
1.80
自引率
0.00%
发文量
67
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