分而治之的全分辨率光场去模糊

M. Mohan, A. Rajagopalan
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引用次数: 8

摘要

随着计算光场相机(LF)的日益普及,需要解决运动模糊问题,这是手持摄影中普遍存在的现象。对于一般3D场景的LF,最先进的盲去模糊方法仅限于处理下采样的LF,无论是空间分辨率还是角度分辨率。这是由于处理数据饥渴的全分辨率4D LF所涉及的计算开销。此外,该方法需要高端gpu进行优化,但对于广角设置和不规则相机运动无效。在本文中,我们引入了一种新的LFs盲运动去模糊策略,该策略显著地缓解了这些限制。我们的模型通过隔离2D子孔径图像中的4D LF运动模糊来实现这一点,从而为这些子孔径图像的独立去模糊铺平了道路。此外,我们的模型适应了跨子孔径图像的常见相机运动参数化。因此,任何单个子孔径图像的盲去模糊都为其他子孔径图像的经济有效的非盲去模糊铺平了道路。我们的方法在计算上是cpu高效的,并且可以有效地消除全分辨率LFs的模糊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Divide and Conquer for Full-Resolution Light Field Deblurring
The increasing popularity of computational light field (LF) cameras has necessitated the need for tackling motion blur which is a ubiquitous phenomenon in hand-held photography. The state-of-the-art method for blind deblurring of LFs of general 3D scenes is limited to handling only downsampled LF, both in spatial and angular resolution. This is due to the computational overhead involved in processing data-hungry full-resolution 4D LF altogether. Moreover, the method warrants high-end GPUs for optimization and is ineffective for wide-angle settings and irregular camera motion. In this paper, we introduce a new blind motion deblurring strategy for LFs which alleviates these limitations significantly. Our model achieves this by isolating 4D LF motion blur across the 2D subaperture images, thus paving the way for independent deblurring of these subaperture images. Furthermore, our model accommodates common camera motion parameterization across the subaperture images. Consequently, blind deblurring of any single subaperture image elegantly paves the way for cost-effective non-blind deblurring of the other subaperture images. Our approach is CPU-efficient computationally and can effectively deblur full-resolution LFs.
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