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Simultaneous Super-Resolution of Depth and Images Using a Single Camera

机译:使用单个摄像头同时实现深度和图像的超高分辨率

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摘要

In this paper, we propose a convex optimization framework for simultaneous estimation of super-resolved depth map and images from a single moving camera. The pixel measurement error in 3D reconstruction is directly related to the resolution of the images at hand. In turn, even a small measurement error can cause significant errors in reconstructing 3D scene structure or camera pose. Therefore, enhancing image resolution can be an effective solution for securing the accuracy as well as the resolution of 3D reconstruction. In the proposed method, depth map estimation and image super-resolution are formulated in a single energy minimization framework with a convex function and solved efficiently by a first-order primal-dual algorithm. Explicit inter-frame pixel correspondences are not required for our super-resolution procedure, thus we can avoid a huge computation time and obtain improved depth map in the accuracy and resolution as well as high-resolution images with reasonable time. The superiority of our algorithm is demonstrated by presenting the improved depth map accuracy, image super-resolution results, and camera pose estimation.
机译:在本文中,我们提出了一个凸优化框架,用于同时估计单个移动摄像机的超分辨深度图和图像。 3D重建中的像素测量误差与手头图像的分辨率直接相关。反过来,即使很小的测量误差也可能在重建3D场景结构或相机姿态时引起重大错误。因此,增强图像分辨率可以是用于确保3D重建的精度和分辨率的有效解决方案。该方法在具有凸函数的单一能量最小化框架中制定了深度图估计和图像超分辨率,并通过一阶原始对偶算法有效求解。我们的超分辨率程序不需要明确的帧间像素对应关系,因此我们可以避免大量的计算时间,并获得精度和分辨率得到改进的深度图,以及具有合理时间的高分辨率图像。通过提供改进的深度图精度,图像超分辨率结果和相机姿态估计,证明了我们算法的优越性。

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