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Fully Neural Network Mode Based Intra Prediction of Variable Block Size

机译:基于全神经网络模式的可变块大小的帧内预测

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Intra prediction is an essential component in the image coding. This paper gives an intra prediction framework completely based on neural network modes (NM). Each NM can be regarded as a regression from the neighboring reference blocks to the current coding block. (1) For variable block size, we utilize different network structures. For small blocks 4×4 and 8×8, fully connected networks are used, while for large blocks 16×16 and 32×32, convolutional neural networks are exploited. (2) For each prediction mode, we develop a specific pre-trained network to boost the regression accuracy. When integrating into HEVC test model, we can save 3.55%, 3.03% and 3.27% BD-rate for Y, U, V components compared with the anchor. As far as we know, this is the first work to explore a fully NM based framework for intra prediction, and we reach a better coding gain with a lower complexity compared with the previous work.
机译:帧内预测是图像编码中的基本组件。本文基于神经网络模式(NM)完全提供了帧内预测框架。每个NM可以被视为从相邻参考块到当前编码块的回归。 (1)对于可变块大小,我们使用不同的网络结构。对于小块4×4和8×8,使用完全连接的网络,而对于大块16×16和32×32,卷积神经网络被利用。 (2)对于每种预测模式,我们开发特定的预训练网络以提高回归精度。与锚定相结合进入HEVC测试模型时,我们可以节省3.55%,3.03%和3.27%的BD速率。据我们所知,这是探索基于NM的帧内预测框架的第一项工作,与前一项工作相比,我们达到了更好的复杂性编码增益。

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