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A perceptual quantization strategy for HEVC based on a convolutional neural network trained on natural images

机译:基于自然图像训练的卷积神经网络的HEVC感知量化策略

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Fast prediction models of local distortion visibility and local quality can potentially make modern spatiotem-porally adaptive coding schemes feasible for real-time applications. In this paper, a fast convolutional-neural-network based quantization strategy for HEVC is proposed. Local artifact visibility is predicted via a network trained on data derived from our improved contrast gain control model. The contrast gain control model was trained on our recent database of local distortion visibility in natural scenes [Alam et al. JOV 2014]. Furthermore, a structural facilitation model was proposed to capture effects of recognizable structures on distortion visibility via the contrast gain control model. Our results provide on average 11% improvements in compression efficiency for spatial luma channel of HEVC while requiring almost one hundredth of the computational time of an equivalent gain control model. Our work opens the doors for similar techniques which may work for different forthcoming compression standards.
机译:局部失真可见性和局部质量的快速预测模型有可能使现代的时空自适应编码方案可用于实时应用。本文提出了一种基于快速卷积神经网络的HEVC量化策略。本地伪影可见性是通过对从我们改进的对比度增益控制模型得出的数据进行训练的网络进行预测的。在我们最近的自然场景中局部失真可见性的数据库中,训练了对比度增益控制模型[Alam等。 2014年11月]。此外,提出了一种结构简化模型,以通过对比增益控制模型捕获可识别结构对畸变可见性的影响。我们的结果为HEVC的空间亮度通道平均提供了11%的压缩效率改善,而所需的等效增益控制模型的计算时间却几乎增加了百分之一。我们的工作为类似的技术打开了大门,这些技术可能适用于即将到来的不同压缩标准。

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