Tuning Neural Ode Networks To increase Adversarial Robustness in Image Forensics
Roberto Caldelli, Fabio Carrara, Fabrizio Falchi
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This paper presents the Grouping of Modes based on Random Forest (GM-RF), a fast decision algorithm for the AOMedia Video 1 (AV1) intra-frame prediction applying machine learning (ML). AV1 implements a wide variety of intra-frame prediction tools, significantly increasing the required computational effort. The GM-RF uses trained Random Forest (RF) models to reduce the number of intra-frame prediction modes evaluated for each encoded block. Experimental results show that the GM-RF achieves an average time savings of 50.19%, with a BD-BR of 7.41%. Compared with related works, GM-RF reached time savings from 5.6 to 10 times higher at a cost of a higher BDBR. To the best of the authors? knowledge, this is the first solution in the literature using ML to reduce the AV1 intra-frame prediction computational effort.