Coded exposure deblurring: Optimized codes for PSF estimation and invertibility

Amit K. Agrawal, Yi Xu
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引用次数: 89

Abstract

We consider the problem of single image object motion deblurring from a static camera. It is well-known that deblurring of moving objects using a traditional camera is ill-posed, due to the loss of high spatial frequencies in the captured blurred image. A coded exposure camera modulates the integration pattern of light by opening and closing the shutter within the exposure time using a binary code. The code is chosen to make the resulting point spread function (PSF) invertible, for best deconvolution performance. However, for a successful deconvolution algorithm, PSF estimation is as important as PSF invertibility. We show that PSF estimation is easier if the resulting motion blur is smooth and the optimal code for PSF invertibility could worsen PSF estimation, since it leads to non-smooth blur. We show that both criterions of PSF invertibility and PSF estimation can be simultaneously met, albeit with a slight increase in the deconvolution noise. We propose design rules for a code to have good PSF estimation capability and outline two search criteria for finding the optimal code for a given length. We present theoretical analysis comparing the performance of the proposed code with the code optimized solely for PSF invertibility. We also show how to easily implement coded exposure on a consumer grade machine vision camera with no additional hardware. Real experimental results demonstrate the effectiveness of the proposed codes for motion deblurring.
编码曝光去模糊:PSF估计和可逆性的优化代码
研究了静态摄像机中单幅图像物体运动的去模糊问题。众所周知,由于在捕获的模糊图像中丢失了高空间频率,使用传统相机对运动物体进行去模糊是不恰当的。编码曝光相机通过使用二进制代码在曝光时间内打开和关闭快门来调制光的集成模式。为了获得最佳的反卷积性能,选择的代码使结果点扩展函数(PSF)可逆。然而,对于一个成功的反卷积算法,PSF估计和PSF可逆性同样重要。我们表明,如果产生的运动模糊是平滑的,PSF估计更容易,而PSF可逆性的最佳代码可能会恶化PSF估计,因为它会导致非平滑模糊。我们证明了PSF可逆性和PSF估计的两个准则可以同时满足,尽管反卷积噪声略有增加。我们提出了具有良好PSF估计能力的代码的设计规则,并概述了寻找给定长度的最优代码的两个搜索准则。我们提出了理论分析,比较了所提出的代码与仅针对PSF可逆性优化的代码的性能。我们还展示了如何在没有额外硬件的情况下在消费级机器视觉相机上轻松实现编码曝光。实际实验结果证明了所提代码对运动去模糊的有效性。
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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