Efficient high dynamic range imaging via matrix completion

Grigorios Tsagkatakis, P. Tsakalides
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引用次数: 7

Abstract

Typical digital cameras exhibit a limitation regarding the dynamic range of the scene radiance they can capture. High Dynamic Range (HDR) imaging refers to methods and systems that aim to generate images that exhibit higher dynamic range between the lightest and the darkest parts of the an image. A typical approach for generating HDR images is exposure bracketing where multiple frames, each one with a different exposure setting, are captured and combined to a HDR image of the scene. The large number of images that exposure bracketing requires often leads to motion artefacts that limit the visual quality of the resulting HDR image. In this work, we propose a novel approach in HDR imaging that significantly reduces the necessary number of images. In our proposed system, we employ the notion of random exposure where each pixel of a single frame collects light for a random amount of time. By collecting a small number of such images, the full sequence of low dynamic range images can be reconstructed and subsequently used for HDR generation. The problem is solved by casting the reconstruction of the sequence as a nuclear norm minimization problem following the premises of the recently proposed theory of Matrix Completion. Experimental results suggest that the proposed method is able to reconstruct the sequence from as low as 20% of the images that traditional techniques require with minimal reduction in image quality.
通过矩阵完成高效的高动态范围成像
典型的数码相机所能捕捉到的场景亮度的动态范围是有限的。高动态范围(HDR)成像是指旨在生成图像中最亮和最暗部分之间具有更高动态范围的图像的方法和系统。生成HDR图像的典型方法是曝光覆盖,其中捕获多个帧,每个帧具有不同的曝光设置,并将其组合为场景的HDR图像。曝光包围法所需要的大量图像通常会导致运动伪影,从而限制了生成的HDR图像的视觉质量。在这项工作中,我们提出了一种新的HDR成像方法,可以显着减少所需的图像数量。在我们提出的系统中,我们采用随机曝光的概念,其中单个帧的每个像素在随机时间内收集光线。通过收集少量这样的图像,可以重建完整的低动态范围图像序列,并随后用于HDR生成。根据最近提出的矩阵补全理论的前提,将序列的重构转换为核范数最小化问题,从而解决了该问题。实验结果表明,该方法能够从传统技术所需的低至20%的图像中重建序列,并且图像质量降低最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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