论文标题

现实世界中的深层本地运动去除

Real-World Deep Local Motion Deblurring

论文作者

Li, Haoying, Zhang, Ziran, Jiang, Tingting, Luo, Peng, Feng, Huajun, Xu, Zhihai

论文摘要

大多数现有的脱毛方法着重于消除由摄像机震动引起的全局模糊,而它们无法很好地处理由对象运动引起的局部模糊。为了填补真实场景中本地Deblurring的空缺,我们建立了第一个真实的局部运动Blur数据集(Reloblur),该数据集(Reloblur)由同步的梁拆分照相系统捕获,并通过后期过程的管道进行纠正。基于Reloblur,我们提出了一个局部模糊的封闭式网络(LBAG)和几种局部模糊感知技术,以弥合全球和局部deblurring之间的差距:1)基于背景减法的模糊检测方法,以定位模糊区域; 2)指导我们的网络专注于模糊区域的门机制; 3)一种模糊的补丁裁剪策略,以解决数据不平衡问题。广泛的实验证明了Reloblur数据集的可靠性,并证明LBAG在没有我们提出的本地局部模糊技术的情况下,LBAG比最先进的全球Deblurring方法更好。

Most existing deblurring methods focus on removing global blur caused by camera shake, while they cannot well handle local blur caused by object movements. To fill the vacancy of local deblurring in real scenes, we establish the first real local motion blur dataset (ReLoBlur), which is captured by a synchronized beam-splitting photographing system and corrected by a post-progressing pipeline. Based on ReLoBlur, we propose a Local Blur-Aware Gated network (LBAG) and several local blur-aware techniques to bridge the gap between global and local deblurring: 1) a blur detection approach based on background subtraction to localize blurred regions; 2) a gate mechanism to guide our network to focus on blurred regions; and 3) a blur-aware patch cropping strategy to address data imbalance problem. Extensive experiments prove the reliability of ReLoBlur dataset, and demonstrate that LBAG achieves better performance than state-of-the-art global deblurring methods without our proposed local blur-aware techniques.

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