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Guided depth image reconstruction from very sparse measurements

机译:从非常稀疏的测量中引导深度图像重建

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Depth images captured from modern depth cameras generally suffer from low spatial resolution, noise, and missing regions. These kinds of images cannot be used directly in applications related to depth images, e.g., robot navigation, 3DTV, and augmented reality, which basically need high-resolution input images with no noise o missing regions to function properly. To address the problem of low spatial resolution, noise degradation, and missing regions in depth images, we propose methods based on a guidance color image for depth reconstruction (DR) from sparse depth inputs and depth image super-resolution (SR). We also suggest a scenario wherein these problems can be integrated and addressed simultaneously. Further, we also demonstrate applications of the proposed approach for depth image denoising and depth image inpainting. In our approach, the guidance color image is used for obtaining the segment cues by applying mean-shift (MS) or simple linear iterative clustering (SLIC) segmentation on it. These strong segment cues help in aiding the DR and SR problems by considering the corresponding segments in the input depth image, and estimate the unknown pixels by either plane fitting or median filling approaches. Furthermore, we explore both direct and pyramidal (hierarchical) approaches for SR and DR-SR for higher upsampling factor. As such, our approaches are relatively simpler than some of the contemporary methods, yet the experimental results of the proposed methods show superior performance as compared with some other state-of-the-art DR and SR methods. (C) 2018 SPIE and IS&T.
机译:从现代深度相机捕获的深度图像通常遭受低空间分辨率,噪声和缺失区域的困扰。这些类型的图像不能直接用于与深度图像有关的应用程序中,例如,机器人导航,3DTV和增强现实,这些应用程序基本上需要高分辨率的输入图像,且没有噪声或缺失区域才能正常工作。为了解决空间分辨率低,噪声降级和深度图像中缺少区域的问题,我们提出了一种基于引导彩色图像的方法,用于从稀疏深度输入和深度图像超分辨率(SR)进行深度重建(DR)。我们还提出了一种方案,其中可以同时集成和解决这些问题。此外,我们还演示了该方法在深度图像去噪和深度图像修复中的应用。在我们的方法中,通过在其上应用均值漂移(MS)或简单线性迭代聚类(SLIC)分割,将引导彩色图像用于获取分割提示。这些强大的片段提示可通过考虑输入深度图像中的相应片段来帮助解决DR和SR问题,并通过平面拟合或中值填充方法估计未知像素。此外,对于较高的上采样因子,我们探索了SR和DR-SR的直接和金字塔式(分层)方法。因此,我们的方法比某些现代方法相对简单,但是与其他一些最新的DR和SR方法相比,所提出的方法的实验结果显示出优越的性能。 (C)2018 SPIE和IS&T。

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