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Deformable Convolution Network based Invertibility-Driven Interpolation Filter for HEVC

机译:基于可变形的卷积网络的HEVC基于网络的可逆驱动插值滤波器

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Fractional-position motion compensation has been widely utilized in video coding standard to improve the inter prediction efficiency. In this paper, we study the three key components of the state-of-the-art method––Invertibility-driven Interpolation Filter (InvIF) and improve each of them to derive an Enhanced InvIF (EInvIF). Firstly, the deformable convolution layer is introduced to make the network's filters have the ability to change its shape and parameters to adapt to the video contents. Secondly, the generative adversarial network is utilized to increase the deep learning models' ability of approximating target distribution. Finally, the motion blur images are adopted as the regularization target instead of discrete cosine transform images. The proposed EInvIF has been integrated into HM-16.7, and the experimental results show that the proposed scheme can achieve 2.5% bitrate reduction on average.
机译:分数 - 位置运动补偿已广泛用于视频编码标准,以提高帧间预测效率。 在本文中,我们研究了最先进的方法 - 可逆驱动的插值滤波器(INVIF)的三个关键组件,并改善了它们中的每一个来导出增强的Invif(EInvif)。 首先,引入可变形卷积层以使网络的滤波器能够改变其形状和参数以适应视频内容。 其次,利用生成的对抗网络来提高近似目标分布的深度学习模型的能力。 最后,采用运动模糊图像作为正则化目标而不是离散余弦变换图像。 拟议的EINVIF已集成到HM-16.7中,实验结果表明,该方案平均达到2.5%的比特率降低。

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