基于参考帧插值的模糊视频编码深度预测

Zezhi Zhu, Lili Zhao, Xuhu Lin, Xuezhou Guo, Jianwen Chen
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引用次数: 1

摘要

在高效视频编码(HEVC)中,相互预测是消除时间冗余的重要模块。当前框架和参考框架之间的相似性很大程度上影响了内部预测的准确性。然而,对于模糊视频,由于摄像机抖动或场景中物体的加速度而产生的运动模糊会降低互编码的性能。为了解决这个问题,我们提出通过帧插值网络合成额外的参考帧。将合成的参考帧加入到参考图片列表中,以提供更可信的候选参考帧,并相应地改变运动候选帧的搜索机制。此外,为了使我们的插值网络对具有不同压缩伪像的各种输入具有更强的鲁棒性,我们建立了一个新的模糊视频数据库来训练我们的网络。通过训练良好的帧插值网络,与参考软件HM-16.9相比,该方法在随机访问(RA)配置下对模糊视频的平均bd率降低了1.55%,对普通测试序列的平均bd率降低了0.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Inter Prediction via Reference Frame Interpolation for Blurry Video Coding
In High Efficiency Video Coding (HEVC), inter prediction is an important module for removing temporal redundancy. The accuracy of inter prediction is much affected by the similarity between the current and reference frames. However, for blurry videos, the performance of inter coding will be degraded by varying motion blur, which is derived from camera shake or the acceleration of objects in the scene. To address this problem, we propose to synthesize additional reference frame via the frame interpolation network. The synthesized reference frame is added into reference picture lists to supply more credible reference candidate, and the searching mechanism for motion candidates is changed accordingly. In addition, to make our interpolation network more robust to various inputs with different compression artifacts, we establish a new blurry video database to train our network. With the well-trained frame interpolation network, compared with the reference software HM-16.9, the proposed method achieves on average 1.55% BD-rate reduction under random access (RA) configuration for blurry videos, and also obtains on average 0.75% BD-rate reduction for common test sequences.
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