Learning Event Guided High Dynamic Range Video Reconstruction

Yixin Yang, Jin Han, Jinxiu Liang, Imari Sato, Boxin Shi
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引用次数: 4

Abstract

Limited by the trade-off between frame rate and exposure time when capturing moving scenes with conventional cameras, frame based HDR video reconstruction suffers from scene-dependent exposure ratio balancing and ghosting artifacts. Event cameras provide an alternative visual representation with a much higher dynamic range and temporal resolution free from the above issues, which could be an effective guidance for HDR imaging from LDR videos. In this paper, we propose a multimodal learning framework for event guided HDR video reconstruction. In order to better leverage the knowledge of the same scene from the two modalities of visual signals, a multimodal representation alignment strategy to learn a shared latent space and a fusion module tailored to complementing two types of signals for different dynamic ranges in different regions are proposed. Temporal correlations are utilized recurrently to suppress the flickering effects in the reconstructed HDR video. The proposed HDRev-Net demonstrates state-of-the-art performance quantitatively and qualitatively for both synthetic and real-world data.
学习事件引导的高动态范围视频重建
当使用传统相机捕捉运动场景时,由于帧率和曝光时间之间的权衡,基于帧的HDR视频重建受到场景依赖的曝光比平衡和重影的影响。事件摄像机提供了另一种视觉表现,具有更高的动态范围和时间分辨率,不存在上述问题,这可能是从LDR视频进行HDR成像的有效指导。在本文中,我们提出了一个用于事件引导HDR视频重建的多模态学习框架。为了更好地利用视觉信号的两种模态对同一场景的知识,提出了一种学习共享潜在空间的多模态表示对齐策略和一种针对不同区域不同动态范围的两种类型信号进行互补的融合模块。在重构的HDR视频中反复利用时间相关性来抑制闪烁效应。拟议的HDRev-Net在合成数据和实际数据方面都展示了最先进的定量和定性性能。
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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