Deep Perceptual Preprocessing for Video Coding

A. Chadha, Y. Andreopoulos
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引用次数: 18

Abstract

We introduce the concept of rate-aware deep perceptual preprocessing (DPP) for video encoding. DPP makes a single pass over each input frame in order to enhance its visual quality when the video is to be compressed with any codec at any bitrate. The resulting bitstreams can be decoded and displayed at the client side without any post-processing component. DPP comprises a convolutional neural network that is trained via a composite set of loss functions that incorporates: (i) a perceptual loss based on a trained no-reference image quality assessment model, (ii) a reference-based fidelity loss expressing L1 and structural similarity aspects, (iii) a motion-based rate loss via block-based transform, quantization and entropy estimates that converts the essential components of standard hybrid video encoder designs into a trainable framework. Extensive testing using multiple quality metrics and AVC, AV1 and VVC encoders shows that DPP+encoder reduces, on average, the bitrate of the corresponding encoder by 11%. This marks the first time a server-side neural processing component achieves such savings over the state-of-the-art in video coding.
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视频编码的深度感知预处理
在视频编码中引入速率感知深度感知预处理(DPP)的概念。当视频要用任何编解码器以任何比特率进行压缩时,DPP对每个输入帧进行单次传输,以增强其视觉质量。产生的比特流可以在客户端进行解码和显示,而不需要任何后处理组件。DPP包括一个卷积神经网络,该网络通过一组复合损失函数进行训练,该损失函数包含:(i)基于训练过的无参考图像质量评估模型的感知损失,(ii)基于表达L1和结构相似性方面的基于参考的保真度损失,(iii)通过基于块的变换、量化和熵估计将标准混合视频编码器设计的基本组件转换为可训练框架的基于运动的速率损失。使用多种质量指标和AVC、AV1和VVC编码器进行的广泛测试表明,DPP+编码器平均降低了相应编码器的比特率11%。这标志着服务器端神经处理组件首次在视频编码中实现如此先进的节省。
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