A Dual-Critic Reinforcement Learning Framework for Frame-level Bit Allocation in HEVC/H.265

2021 Data Compression Conference (DCC)(2021)

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摘要
This paper introduces a dual-critic reinforcement learning (RL) framework to address the problem of frame-level bit allocation in HEVC/H.265. The objective is to minimize the distortion of a group of pictures (GOP) under a rate constraint. Previous RL-based methods tackle such a constrained optimization problem by maximizing a single reward function that often combines a distortion and a rate rewa...
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关键词
Training,Bit rate,Video sequences,Rate-distortion,Reinforcement learning,Rate distortion theory,Distortion
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