Energy-constrained real-time H.264/AVC video coding

T. Fonseca, R. Queiroz
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引用次数: 6

Abstract

Energy consumption has become a leading design constraint for computing devices in order to defray electric bills for individuals and businesses. Over the past years, digital video communication technologies have demanded higher computing power availability and, therefore, higher energy expenditure. In order to meet the challenge to provide software-based video encoding solutions, we adopted an open source software implementation of an H.264 video encoder, the x264 encoder, and optimized its prediction stage in the energy sense (E). Thus, besides looking for the coding options which lead to the best coded representation in terms of rate and distortion (RD), we constrain the process to fit within a certain energy budget. i.e., an RDE optimization. We considered energy as the time integration of the real demanded electric power for a given system. We present an RDE-optimized framework which allows for software-based real-time video compression, meeting the desired targets of electrical consumption, hence, controlling carbon emissions. We show results of energy-constrained compression wherein one can save as much as 35% of the energy with small impact on RD performance.
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能量受限的实时H.264/AVC视频编码
为了支付个人和企业的电费,能源消耗已经成为计算设备的主要设计约束。在过去的几年里,数字视频通信技术要求更高的计算能力,因此,更高的能源消耗。为了应对提供基于软件的视频编码解决方案的挑战,我们采用了H.264视频编码器x264编码器的开源软件实现,并在能量意义(E)上优化了其预测阶段。因此,除了寻找在速率和失真(RD)方面导致最佳编码表示的编码选项外,我们还将该过程约束在一定的能量预算内。例如,RDE优化。我们把能量看作是给定系统实际所需电力的时间积分。我们提出了一个rde优化框架,该框架允许基于软件的实时视频压缩,满足所需的电力消耗目标,从而控制碳排放。我们展示了能量约束压缩的结果,其中可以节省多达35%的能量,对RD性能的影响很小。
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