The ability to record high-fidelity videos at high acquisition rates is central to the study of fast moving phenomena. The difficulty of imaging fast moving scenes lies in a trade-off between motion blur and underexposure noise: On the one hand, recordings with long exposure times suffer from motion blur effects caused by movements in the recorded scene. On the other hand, the amount of light reaching camera photosensors decreases with exposure times so that short-exposure recordings suffer from underexposure noise. In this paper, we propose to address this trade-off by treating the problem of high-speed imaging as an underexposed image denoising problem. We combine recent advances on underexposed image denoising using deep learning and adapt these methods to the specificity of the high-speed imaging problem. Leveraging large external datasets with a sensor-specific noise model, our method is able to speedup the acquisition rate of a High-Speed Camera over one order of magnitude while maintaining similar image quality.
翻译:以高摄取率记录高不洁视频的能力是研究快速移动现象的核心。成像快速移动场景的难度在于运动模糊和接触不足噪音之间的权衡:一方面,长期接触时间的录制会因记录现场的移动而产生运动模糊效应。另一方面,光到相机光子传感器的数量随着接触时间的减少而减少,这样短接触记录就会受到接触不足的噪音。在本文中,我们提议通过将高速成像问题作为未充分暴露的图像分辨问题来处理这一权衡。我们利用深层学习将低曝光图像脱色的最新进展结合起来,并将这些方法适应高速成像问题的特殊性。用传感器特定噪声模型利用大型外部数据集,我们的方法能够加快高频照相机在一个级上的获取速度,同时保持类似的图像质量。