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Perceptual Adaptive Quantization Parameter Selection Using Deep Convolutional Features for HEVC Encoder

机译:感知自适应量化参数选择使用HEVC编码器的深度卷积功能

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摘要

In this paper, we propose a perceptual adaptive quantization based on a deep neural network on high efficiency video coding (HEVC) for bitrate reduction while maintaining subjective visual quality. The proposed algorithm adaptively determines frame-level QP values for different picture types of the hierarchical coding structure in HEVC by taking into account the high-level features extracted from the original and previously reconstructed pictures. A predefined model based on the visual geometry group (VGG-16) network is exploited to extract the high-level features for subjective visual characteristics. Furthermore, the Lagrange multiplier for each frame is also adaptively determined by involving the proposed features for deciding the appropriate parameter of the Lagrange multiplier that can be used for rate-distortion optimization during the encoding process. Experimental results reveal that the proposed perceptual adaptive QP selection can facilitate bitrate savings up to 65.73% and 47.68% and improve the BD-rate based on SSIM by approximately 20.68% and 14.27% under low-delay-P and random-access coding structures, respectively, with very minimal visual quality degradation when compared to HM-16.20 without adaptive QP selection.
机译:在本文中,我们提出了一种基于对高效视频编码(HEVC)的深神经网络的感知自适应量化,以进行比特率降低,同时保持主观视觉质量。所提出的算法通过考虑从原始和先前重建的图像中提取的高级特征,自适应地确定HEVC中的分层编码结构的不同图像类型的帧级QP值。利用基于视觉几何组(VGG-16)网络的预定义模型,以提取主观视觉特征的高级功能。此外,每个帧的拉格朗日乘法器也可以通过涉及确定可以用于编码过程期间的速率失真优化的标识乘法器的适当参数来自适应地确定。实验结果表明,拟议的感知自适应QP选择可以促进比特率储蓄高达65.73%和47.68%,并在低延迟-P和随机访问编码结构下将基于SSSIM的BD速率提高约20.68%和14.27%,与HM-16.20相比,分别具有非常微小的视觉质量劣化,没有自适应QP选择。

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