Work place: Netaji Subhas University of Technology, New Delhi, India
E-mail: sushma.nagpal@nsut.ac.in
Website:
Research Interests: Data Structures and Algorithms, Social Information Systems, Data Mining, Network Security, Computational Learning Theory
Biography
Sushama Nagpal is currently working as Professor in the Division of Computer Engineering at NSUT, New Delhi. She has almost 25 years of experience in teaching and has actively engaged herself in research. Her areas of interests include Software Quality Measurement, Data Warehouse, Data Mining/Machine Learning, Social Network Analysis and Recommender Systems. She has published various research papers in reputed international journals and conferences. She has reviewed number of research articles for reputed international journals and acted as Member, Technical Program Committee for international conferences.
By Neetu Singla Sushama Nagpal Jyotsna Singh
DOI: https://doi.org/10.5815/ijigsp.2022.05.04, Pub. Date: 8 Oct. 2022
In recent years, video forensic investigation has become a prominent research area, due to the adverse effect of fake videos on networks, people and society. This paper summarizes all the existing methodologies used for forgery detection in H.265/HEVC videos. HEVC video forgery is generally classified into two categories as video quality forgery and video content forgery. The occurrence of various forgeries such as transcoding, fake-bitrate, inter-frame forgery and intra-frame forgery is deeply analyzed based on features extracted from the HEVC compression domain. The major findings of this research are (i) Less focus on transcoding detection, (ii) Non-availability of HEVC forged video dataset (iii) More focus on double compression detection for forgery detection, and (iv) Non-consideration of adaptive-GOP structure. The forgery detection in the video is critically important due to its wide use as the primary source of information in criminal investigations and proving the authenticity of contents. So, the forgery detection accuracy is of major concern at the present time. Although, various forgery detection methods are developed in past but the findings of this review point out the need of developing more effective detection methods with high accuracy.
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