基于字典学习的VVC参考图片重采样

J. Schneider, Christian Rohlfing
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摘要

通用视频编码(VVC)引入了参考图像重采样(RPR)的概念,它允许在解码过程中改变视频的分辨率,而无需在比特流中引入额外的内部随机接入点(IRAP)。当分辨率增加时,为了应用运动补偿预测,需要对参考图像进行上采样操作。从概念上讲,线性插值滤波器的上采样不能恢复下采样期间丢失的频率。然而,上采样参考图像的质量对预测性能至关重要。近年来,基于机器学习的超分辨率(SR)在对先前下采样图像的超分辨率方面表现优于传统的插值滤波器。特别是,基于字典学习的超分辨率(DLSR)被证明可以改善SHVC中的层间预测[1]。因此,本文将DLSR引入到RPR的预测过程中。此外,基于VTM-9.3参考软件的实现对该方法进行了实验评估。仿真结果表明,在相同物镜质量的情况下,PSNR的瞬时比特率平均降低了0.98%。此外,JVET测试集的“Johnny”序列的峰值比特率降低为4.74%。
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Dictionary Learning-based Reference Picture Resampling in VVC
Versatile Video Coding (VVC) introduces the con-cept of Reference Picture Resampling (RPR), which allows for a resolution change of the video during decoding, without introducing an additional Intra Random Access Point (IRAP) into the bitstream. When the resolution is increased, an upsampling operation of the reference picture is required in order to apply motion compensated prediction. Conceptually, the upsampling by linear interpolation filters fails to recover frequencies which were lost during downsampling. Yet, the quality of the upsampled reference picture is crucial to the pre-diction performance. In recent years, machine learning based Super-Resolution (SR) has shown to outperform conventional interpolation filters by far in regard to super-resolving a previ-ously downsampled image. In particular, Dictionary Learning-based Super-Resolution (DLSR) was shown to improve the inter-layer prediction in SHVC [1]. Thus, this paper introduces DLSR to the prediction process in RPR. Further, the approach is experimentally evaluated by an implementation based on the VTM-9.3 reference software. The simulation results show a reduction of the instantaneous bitrate of 0.98% on average at the same objective quality in terms of PSNR. Moreover, the peak bitrate reduction is measured to 4.74% for the “Johnny” sequence of the JVET test set.
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