This paper proposes an algorithm for obtaining an event-based video from a noisy input video given by physics-based Monte Carlo path tracing of synthetic 3D scenes. Since the dynamic vision sensor (DVS) detects temporal brightness changes as events, the problem of efficiently rendering event-based video boils down to detecting the changes from noisy brightness values. To this end, we extend a denoising method based on a weighted local regression (WLR) to detect the brightness changes rather than applying denoising to each video frame. Specifically, we regress a WLR model only on frames where an event is detected, which significantly reduces the computational cost of the regression. We show that our efficient method is robust to noisy video frames obtained from a few path-traced samples and performs comparably to or even better than an approach that denoises every frame.
翻译:本文建议从基于物理的蒙特卡洛追踪合成三维场景的路径所拍摄的噪音输入视频中获取事件视频的算法。 由于动态视觉传感器(DVS)检测到时间亮度随事件变化而变化, 高效生成事件视频的问题归结为检测噪音亮度值变化的问题。 为此, 我们根据加权本地回归法( WLR) 推广了一种分层方法, 以检测亮度变化, 而不是对每个视频框进行分层。 具体地说, 我们只在检测事件时将 WLR 模型反射到框架上, 这大大降低了回归的计算成本。 我们显示, 我们的有效方法对于从几个路标标样本中获得的噪音视频框非常有力, 并且比每个框都锁定的仪更精确或更好。</s>