Deep-based Film Grain Removal and Synthesis
Zoubida Ameur, Wassim Hamidouche, Edouard Fran\c{c}ois, Milo\v{s}, Radosavljevi\'c, Daniel Menard, Claire-H\'el\`ene Demarty

TL;DR
This paper introduces deep learning models for removing and synthesizing film grain in videos, improving compression efficiency and enabling realistic grain reproduction with controllable intensity levels.
Contribution
It presents novel encoder-decoder and cGAN-based models for film grain removal and synthesis, trained on large datasets, with effective performance in both blind and non-blind scenarios.
Findings
Effective film grain removal at various intensity levels
Realistic film grain synthesis with controllable parameters
Models outperform existing methods in qualitative and quantitative evaluations
Abstract
In this paper, deep learning-based techniques for film grain removal and synthesis that can be applied in video coding are proposed. Film grain is inherent in analog film content because of the physical process of capturing images and video on film. It can also be present in digital content where it is purposely added to reflect the era of analog film and to evoke certain emotions in the viewer or enhance the perceived quality. In the context of video coding, the random nature of film grain makes it both difficult to preserve and very expensive to compress. To better preserve it while compressing the content efficiently, film grain is removed and modeled before video encoding and then restored after video decoding. In this paper, a film grain removal model based on an encoder-decoder architecture and a film grain synthesis model based on a \ac{cgan} are proposed. Both models are trained…
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Taxonomy
TopicsDigital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis · Video Coding and Compression Technologies
