Efficient video integrity analysis through container characterization
Pengpeng Yang, Daniele Baracchi, Massimo Iuliani, Dasara Shullani,, Rongrong Ni, Yao Zhao, Alessandro Piva

TL;DR
This paper presents a fast, container-structure-based method using decision trees to identify video manipulation software and source device OS, achieving high accuracy even on heavily compressed or low-resolution videos.
Contribution
It introduces a novel, efficient container analysis technique with a decision-tree classifier for forensic video source and manipulation detection, outperforming existing methods.
Findings
97.6% accuracy in distinguishing tampered from pristine videos
Effective classification of editing software and source OS
Robust performance on heavily compressed or low-resolution videos
Abstract
Most video forensic techniques look for traces within the data stream that are, however, mostly ineffective when dealing with strongly compressed or low resolution videos. Recent research highlighted that useful forensic traces are also left in the video container structure, thus offering the opportunity to understand the life-cycle of a video file without looking at the media stream itself. In this paper we introduce a container-based method to identify the software used to perform a video manipulation and, in most cases, the operating system of the source device. As opposed to the state of the art, the proposed method is both efficient and effective and can also provide a simple explanation for its decisions. This is achieved by using a decision-tree-based classifier applied to a vectorial representation of the video container structure. We conducted an extensive validation on a…
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