运行时机器学习HEVC/H.265快速分区决策

S. Momcilovic, N. Roma, L. Sousa, I. Milentijevic
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引用次数: 15

摘要

一种新的HEVC/H编码树单元快速划分方法。本文提出了265编码器。该方法依靠运行时训练的神经网络实现快速的编码单元分割决策。与最先进的解决方案相比,该方法不需要任何预训练,并且对视频内容的动态变化具有很高的适应性。通过有效的采样策略和多线程实现,该技术成功地降低了训练过程中对整体处理性能和初始编码延迟的固有计算开销。实验表明,该方法有效地降低了HEVC/H。265编码时间高达65%与可忽略不计的率失真处罚。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Run-Time Machine Learning for HEVC/H.265 Fast Partitioning Decision
A novel fast Coding Tree Unit partitioning for HEVC/H.265 encoder is proposed in this paper. This method relies on run-time trained neural networks for fast Coding Units splitting decisions. Contrasting to state-of-the-art solutions, this method does not require any pre-training and provides a high adaptivity to the dynamic changes in video contents. By an efficient sampling strategy and a multi-thread implementation, the presented technique successfully mitigates the computational overhead inherent to the training process on both the overall processing performance and on the initial encoding delay. The experiments show that the proposed method successfully reduces the HEVC/H.265 encoding time for up to 65% with negligible rate-distortion penalties.
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