基于avc - hevc转码的监控视频背景建模编码单元分类

Peiyin Xing, Yonghong Tian, Xianguo Zhang, Yaowei Wang, Tiejun Huang
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引用次数: 23

摘要

为了节省存储和传输成本,开发快速高效的方法将常年监控视频转码为HEVC, HEVC使压缩比提高了一倍。针对监控视频长时间静态背景的特点,提出了一种基于背景建模的基于编码单元(CU)分类的avc - hevc转码方法。在我们的方法中,首先将原始解码帧建模的背景帧转编码为HEVC流作为长期参考,以提高预测效率。然后,提出了一种以解码后的运动矢量和建模后的背景帧为输入的CU分类算法,将解码后的数据分为背景CU、前景CU和混合CU。然后,针对不同的CU类别,采用不同的CU分区终止转码策略、预测单元候选选择策略和运动估计简化策略来降低复杂性。实验结果表明,与传统的avc - hevc转码相比,该方法可以节省45%的比特,降低50%的复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A coding unit classification based AVC-to-HEVC transcoding with background modeling for surveillance videos
To save the storage and transmission cost, it is applicable now to develop fast and efficient methods to transcode the perennial surveillance videos to HEVC ones, since HEVC has doubled the compression ratio. Considering the long-time static background characteristic of surveillance videos, this paper presents a coding unit (CU) classification based AVC-to-HEVC transcoding method with background modeling. In our method, the background frame modeled from originally decoded frames is firstly transcoded into HEVC stream as long-term reference to enhance the prediction efficiency. Afterwards, a CU classification algorithm which employs decoded motion vectors and the modeled background frame as input is proposed to divide the decoded data into background, foreground and hybrid CUs. Following this, different transcoding strategies of CU partition termination, prediction unit candidate selection and motion estimation simplification are adopted for different CU categories to reduce the complexity. Experimental results show our method can achieve 45% bit saving and 50% complexity reduction against traditional AVC-to-HEVC transcoding.
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