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CNN-Based Intra-Prediction for Lossless HEVC

机译:基于CNN的无损HEVC的内部预测

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摘要

The paper proposes a novel block-wise prediction paradigm based on Convolutional Neural Networks (CNNs) for lossless video coding. A deep neural network model which follows a multi-resolution design is employed for block-wise prediction. Several contributions are proposed to improve neural network training. A first contribution proposes a novel loss function formulation for an efficient network training based on a new approach for patch selection. Another contribution consists in replacing all HEVC-based angular intra-prediction modes with a CNN-based intra-prediction method, where each angular prediction mode is complemented by a CNN-based prediction mode using a specifically trained model. Another contribution consists in an efficient adaptation of the CNN-based intra-prediction residual for lossless video coding. Experimental results on standard test sequences show that the proposed coding system outperforms the HEVC standard with an average bitrate improvement of around 5%. To our knowledge, the paper is the first to replace all the traditional HEVC-based angular intra-prediction modes with an intra-prediction method based on modern Machine Learning techniques for lossless video coding applications.
机译:本文提出了一种基于卷积神经网络(CNNS)的新颖的块 - 明智的预测范例,用于无损视频编码。使用多分辨率设计的深度神经网络模型用于块明智的预测。提出了几项贡献来改善神经网络培训。第一款贡献提出了一种基于补丁选择的新方法的高效网络培训的新型损失函数制定。另一个贡献包括用基于CNN的帧内预测方法替换所有基于HEVC的角度帧内预测模式,其中每个角度预测模式使用特定训练的模型通过基于CNN的预测模式互补。另一种贡献包括有效适应基于CNN的帧内预测残余的无损视频编码。标准试验序列的实验结果表明,所提出的编码系统优于HEVC标准,平均比特率提高约5%。据我们所知,本文是第一个基于现代机器学习技术的预测方法替换所有基于HEVC的角度内预测模式,用于无损视频编码应用。

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