Bit-depth enhancement detection for compressed video
Nickolay Safonov, Dmitriy Vatolin

TL;DR
This paper presents an algorithm to detect whether a video has been processed with bit-depth enhancement techniques before compression, addressing the challenge of identifying dequantization effects despite compression artifacts.
Contribution
The authors develop a detection algorithm that accurately identifies processed videos and generalizes well to unseen dequantization algorithms, even under compression.
Findings
High detection accuracy for processed videos
Good generalization to unseen dequantization algorithms
Effective detection despite compression artifacts
Abstract
In recent years, display intensity and contrast have increased considerably. Many displays support high dynamic range (HDR) and 10-bit color depth. Since high bit-depth is an emerging technology, video content is still largely shot and transmitted with a bit depth of 8 bits or less per color component. Insufficient bit-depths produce distortions called false contours or banding, and they are visible on high contrast screens. To deal with such distortions, researchers have proposed algorithms for bit-depth enhancement (dequantization). Such techniques convert videos with low bit-depth (LBD) to videos with high bit-depth (HBD). The quality of converted LBD video, however, is usually lower than that of the original HBD video, and many consumers prefer to keep the original HBD versions. In this paper, we propose an algorithm to determine whether a video has undergone conversion before…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image Enhancement Techniques · Image and Video Quality Assessment
