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Analysis of Rolling Shutter Effect on ENF-Based Video Forensics

机译:基于ENF的视频取证上的卷帘快门效果分析

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摘要

Electric network frequency (ENF) is a time-varying signal of the frequency of mains electricity in a power grid. It continuously fluctuates around a nominal value (50/60 Hz) clue to changes in the supply and demand of power over time. Depending on these ENF variations, the luminous intensity of a mains-powered light source also fluctuates. These fluctuations in luminance can he captured by video recordings. Accordingly, the ENF can he estimated from such videos by the analysis of steady content in the video scene. When videos are captured by using a rolling shutter sampling mechanism, as is done mostly with CMOS cameras, there is an idle period between successive frames. Consequently, a number of illumination samples of the scene are effectively lost due to the idle period. These missing samples affect the ENF estimation, in the sense of the frequency shift caused and the power attenuation that results. This paper develops an analytical model for videos captured using a rolling shutter mechanism. This model illustrates how the frequency of the main ENF harmonic varies depending on the idle period length, and how the power of the captured ENF attenuates as idle period increases. Based on this, a novel idle period estimation method for potential use in camera forensics that is able to operate independently of video frame rate is proposed. Finally, a novel time-of-recording verification approach based on the use of multiple ENF components, idle period assumptions, and the interpolation of missing ENF samples is also proposed.
机译:电网频率(ENF)是电网中市电频率的时变信号。它会不断围绕标称值(50/60 Hz)波动,这可能是电源供应和需求随时间变化的线索。取决于这些ENF的变化,市电供电的光源的发光强度也会波动。这些亮度的波动可以通过录像来捕获。因此,ENF可以通过分析视频场景中的稳定内容来从此类视频中进行估算。当使用滚动快门采样机制捕获视频时(如大多数CMOS相机所做的那样),连续帧之间会有一个空闲周期。因此,由于空闲时间段,有效地丢失了场景的许多照明样本。从引起的频移和产生的功率衰减的意义上讲,这些丢失的样本会影响ENF估计。本文为使用滚动快门机制捕获的视频开发了一种解析模型。该模型说明了主要ENF谐波的频率如何随空闲周期长度而变化,以及捕获的ENF的功率如何随空闲周期的增加而衰减。基于此,提出了一种新颖的闲置时间估计方法,可以在摄像机取证中潜在使用,该方法可以独立于视频帧频进行操作。最后,还提出了一种新颖的记录时间验证方法,该方法基于多个ENF分量的使用,空闲周期假设以及缺失ENF样本的插值。

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