针对模糊图像展开的事件辅助模糊表征学习

Pengyu Zhang;Hao Ju;Lei Yu;Weihua He;Yaoyuan Wang;Ziyang Zhang;Qi Xu;Shengming Li;Dong Wang;Huchuan Lu;Xu Jia
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引用次数: 0

摘要

模糊图像去模糊和展开任务的目标是从模糊图像中恢复单帧或序列清晰图像。最近,随着受生物启发的视觉传感器--事件相机的引入,其性能得到了极大改善。现有的事件辅助去模糊方法大多侧重于设计强大的网络架构和有效的训练策略,而忽略了模糊建模在去除动态场景中各种模糊的作用。在这项工作中,我们提出通过使用事件辅助模糊度编码器计算模糊度表示,对图像中的模糊进行隐式建模。模糊度表示的学习被表述为一个基于特殊合成对的排序问题。模糊度感知图像展开是通过将模糊度表示中包含的相关信息整合到基础展开网络中来实现的。这种整合主要通过所提出的模糊度引导调制和多尺度聚合模块来实现。在 GOPRO 和 HQF 数据集上的实验表明,与最先进的方法相比,所提出的方法具有良好的性能。在真实世界数据上的更多结果验证了该方法在从模糊图像中恢复潜在锐利帧序列方面的有效性。
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Event-Assisted Blurriness Representation Learning for Blurry Image Unfolding
The goal of blurry image deblurring and unfolding task is to recover a single sharp frame or a sequence from a blurry one. Recently, its performance is greatly improved with introduction of a bio-inspired visual sensor, event camera. Most existing event-assisted deblurring methods focus on the design of powerful network architectures and effective training strategy, while ignoring the role of blur modeling in removing various blur in dynamic scenes. In this work, we propose to implicitly model blur in an image by computing blurriness representation with an event-assisted blurriness encoder. The learning of blurriness representation is formulated as a ranking problem based on specially synthesized pairs. Blurriness-aware image unfolding is achieved by integrating blur relevant information contained in the representation into a base unfolding network. The integration is mainly realized by the proposed blurriness-guided modulation and multi-scale aggregation modules. Experiments on GOPRO and HQF datasets show favorable performance of the proposed method against state-of-the-art approaches. More results on real-world data validate its effectiveness in recovering a sequence of latent sharp frames from a blurry image.
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