基于JND估计的感知质量驱动自适应视频编码

Masaru Takeuchi, Shintaro Saika, Yusuke Sakamoto, Tatsuya Nagashima, Zhengxue Cheng, Kenji Kanai, J. Katto, Kaijin Wei, Ju Zengwei, Xu Wei
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引用次数: 15

摘要

我们提出了一种感知视频质量驱动的视频编码方案,用于优化自适应流媒体。通过使用像MPEG-DASH这样的多比特率/分辨率编码,视频流服务可以在客户端可用带宽和观看设备能力的条件下向客户端提供最佳视频流。然而,传统的固定编码方法(即分辨率-比特率对)存在许多问题,例如不正确的分辨率选择和流冗余。为了避免这些问题,我们提出了一种新的视频编码方法,该方法以恒定的justvisible Difference (JND)间隔生成多个表示。为此,我们利用支持向量回归(SVR)开发了JND尺度估计器,并设计了一个预编码器,该预编码器以自适应方式输出恒定JND间隔的编码配方来输入视频。
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Perceptual Quality Driven Adaptive Video Coding Using JND Estimation
We introduce a perceptual video quality driven video encoding solution for optimized adaptive streaming. By using multiple bitrate/resolution encoding like MPEG-DASH, video streaming services can deliver the best video stream to a client, under the conditions of the client's available bandwidth and viewing device capability. However, conventional fixed encoding recipes (i.e., resolution-bitrate pairs) suffer from many problems, such as improper resolution selection and stream redundancy. To avoid these problems, we propose a novel video coding method, which generates multiple representations with constant JustNoticeable Difference (JND) interval. For this purpose, we developed a JND scale estimator using Support Vector Regression (SVR), and designed a pre-encoder which outputs an encoding recipe with constant JND interval in an adaptive manner to input video.
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