Yi Chen, Yunhao Mao, Shiqi Wang, Xianguo Zhang, S. Kwong
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引用次数: 0
摘要
近年来,人们对视频编码技术的需求不断增加,视频编码技术不断发展,以满足视频相关应用的各种需求。由开放媒体联盟(AOM)开发的amedia Video 1 (AVl)是一个开源和免版税的标准。在此基础上,我们基于机器学习模型实现了AVI的高效率速率控制,该模型以数据驱动的方式建立速率-量化关系。更具体地说,支持向量回归(SVR)用于速率模型参数估计。使用足够的训练数据对模型进行训练,并将其整合到编码器中。实验结果表明,与AV 1中的默认率控制方案相比,在可容忍的比特率误差下,可以节省2.01%的比特率。
Machine-Learning Based High Efficiency Rate Control for AV1
Recent years have witnessed the increasing demand of video coding technologies, which have been continuously developed to meet various requirements in video-related applications. Developed by Alliance for Open Media (AOM), the AOMedia Video 1 (AVl) is an open-source and royalty-free standard. Herein, we achieve high efficiency rate control for AVI based on the machine-learning model, which establishes the rate-quantization relationship in a data-driven manner. More specifically, the Supporting Vector Regression (SVR) is used for rate model parameter estimation. The model is trained using sufficient training data, and incorporated in the encoder. Compared to the default rate control scheme in AV 1, experimental results have shown that 2.01% bitrate could be saved with tolerable bitrate error.