基于事件的运动去模糊模糊核估计

Takuya Nakabayashi, Kunihiro Hasegawa, M. Matsugu, H. Saito
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引用次数: 0

摘要

运动模糊可以显著降低图像质量,研究人员已经开发了各种算法来解决这个问题。一种常见的去模糊方法是使用反卷积来消除模糊效果,但这种方法受到难以准确估计模糊图像的模糊核的限制。这是因为引起模糊的运动通常是复杂和非线性的。本文提出了一种新的模糊核估计方法。该方法使用一个事件相机,捕获像素亮度变化的高时间分辨率数据,以及一个传统的相机来捕获输入的模糊图像。该方法通过对事件数据流的分析,估计出曝光时间内模糊图像在短时间间隔内的二维运动,并将这些信息综合起来估计各种复杂的模糊运动。利用估计的模糊核,对输入的模糊图像进行反卷积去模糊。该方法不依赖于机器学习,因此可以在不依赖于训练数据的质量和数量的情况下恢复模糊图像。实验结果表明,该方法能够较好地估计出被复杂摄像机运动模糊的图像的模糊核,优于传统方法。总的来说,本文提出了一种有前途的运动去模糊方法,可以在一系列领域中有实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event-based Blur Kernel Estimation For Blind Motion Deblurring
Motion blur can significantly reduce the quality of images, and researchers have developed various algorithms to address this issue. One common approach to deblurring is to use deconvolution to cancel out the blur effect, but this method is limited by the difficulty of accurately estimating blur kernels from blurred images. This is because the motion causing the blur is often complex and nonlinear. In this paper, a new method for estimating blur kernels is proposed. This method uses an event camera, which captures high-temporal-resolution data on pixel luminance changes, along with a conventional camera to capture the input blurred image. By analyzing the event data stream, the proposed method estimates the 2D motion of the blurred image at short intervals during the exposure time, and integrates this information to estimate a variety of complex blur motions. With the estimated blur kernel, the input blurred image can be deblurred using deconvolution. The proposed method does not rely on machine learning and therefore can restore blurry images without depending on the quality and quantity of training data. Experimental results show that the proposed method can estimate blur kernels even for images blurred by complex camera motions, outperforming conventional methods. Overall, this paper presents a promising approach to motion deblurring that could have practical applications in a range of fields.
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