Visible to the public IReF: Improved Residual Feature For Video Frame Deletion Forensics

TitleIReF: Improved Residual Feature For Video Frame Deletion Forensics
Publication TypeConference Paper
Year of Publication2022
AuthorsYi Gong, Huang, Chun Hui, Feng, Dan Dan, Bai
Conference Name2022 4th International Conference on Data Intelligence and Security (ICDIS)
KeywordsDeep Learning, Forensics, Human Behavior, human factors, Image edge detection, information forensics, inter-frame video forensics, Jitter, lighting, Memory management, Metrics, noise reduction, pubcrawl, resilience, Resiliency, Scalability, Three-dimensional displays, Video Forensics
AbstractFrame deletion forensics has been a major area of video forensics in recent years. The detection effect of current deep neural network-based methods outperforms previous traditional detection methods. Recently, researchers have used residual features as input to the network to detect frame deletion and have achieved promising results. We propose an IReF (Improved Residual Feature) by analyzing the effect of residual features on frame deletion traces. IReF preserves the main motion features and edge information by denoising and enhancing the residual features, making it easier for the network to identify the tampered features. And the sparse noise reduction reduces the storage requirement. Experiments show that under the 2D convolutional neural network, the accuracy of IReF compared with residual features is increased by 3.81 %, and the storage space requirement is reduced by 78%. In the 3D convolutional neural network with video clips as feature input, the accuracy of IReF features is increased by 5.63%, and the inference efficiency is increased by 18%.
DOI10.1109/ICDIS55630.2022.00045
Citation Keyyi_gong_iref_2022