Depth and Image Restoration from Light Field in a Scattering Medium

Jiandong Tian, Zak Murez, Tong Cui, Zhen Zhang, D. Kriegman, R. Ramamoorthi
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引用次数: 35

Abstract

Traditional imaging methods and computer vision algorithms are often ineffective when images are acquired in scattering media, such as underwater, fog, and biological tissue. Here, we explore the use of light field imaging and algorithms for image restoration and depth estimation that address the image degradation from the medium. Towards this end, we make the following three contributions. First, we present a new single image restoration algorithm which removes backscatter and attenuation from images better than existing methods do, and apply it to each view in the light field. Second, we combine a novel transmission based depth cue with existing correspondence and defocus cues to improve light field depth estimation. In densely scattering media, our transmission depth cue is critical for depth estimation since the images have low signal to noise ratios which significantly degrades the performance of the correspondence and defocus cues. Finally, we propose shearing and refocusing multiple views of the light field to recover a single image of higher quality than what is possible from a single view. We demonstrate the benefits of our method through extensive experimental results in a water tank.
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散射介质中光场的深度和图像恢复
传统的成像方法和计算机视觉算法在散射介质(如水下、雾和生物组织)中获取图像时往往无效。在这里,我们探索使用光场成像和算法的图像恢复和深度估计,以解决图像退化的介质。为此,我们作出以下三点贡献。首先,我们提出了一种新的单幅图像恢复算法,该算法比现有方法更好地消除了图像的后向散射和衰减,并将其应用于光场中的每个视图。其次,我们将一种新的基于传输的深度线索与现有的对应和离焦线索相结合,以改进光场深度估计。在密集散射介质中,我们的传输深度线索对于深度估计至关重要,因为图像的信噪比较低,这会显著降低对应和离焦线索的性能。最后,我们建议对光场的多个视图进行剪切和重新聚焦,以恢复比单个视图更高质量的单个图像。我们通过在水箱中的大量实验结果证明了我们的方法的好处。
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