Source Camera Identification and Detection in Digital Videos through
Blind Forensics
- URL: http://arxiv.org/abs/2309.03353v1
- Date: Wed, 6 Sep 2023 20:36:17 GMT
- Title: Source Camera Identification and Detection in Digital Videos through
Blind Forensics
- Authors: Venkata Udaya Sameer, Shilpa Mukhopadhyay, Ruchira Naskar and Ishaan
Dali
- Abstract summary: We present a blind forensic technique of video source authentication and identification, based on feature extraction, feature selection and subsequent source classification.
The main aim is to determine whether a claimed source for a video is actually its original source. If not, we identify its original source. Our experimental results prove the efficiency of the proposed method compared to traditional fingerprint based technique.
- Score: 3.4546761246181696
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Source camera identification in digital videos is the problem of associating
an unknown digital video with its source device, within a closed set of
possible devices. The existing techniques in source detection of digital videos
try to find a fingerprint of the actual source in the video in form of PRNU
(Photo Response Non--Uniformity), and match it against the SPN (Sensor Pattern
Noise) of each possible device. The highest correlation indicates the correct
source. We investigate the problem of identifying a video source through a
feature based approach using machine learning. In this paper, we present a
blind forensic technique of video source authentication and identification,
based on feature extraction, feature selection and subsequent source
classification. The main aim is to determine whether a claimed source for a
video is actually its original source. If not, we identify its original source.
Our experimental results prove the efficiency of the proposed method compared
to traditional fingerprint based technique.
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