Video Frame Interpolation via Local Lightweight Bidirectional Encoding with Channel Attention Cascade

Xiangling Ding, Pu Huang, Dengyong Zhang, Xianfeng Zhao
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引用次数: 3

Abstract

Deep Neural Networks based video frame interpolation, synthesizing in-between frames given two consecutive neighboring frames, typically depends on heavy model architectures, preventing them from being deployed on small terminals. When directly adopting the lightweight network architecture from these models, the synthesized frames may suffer from poor visual appearance. In this paper, a lightweight-driven video frame interpolation network (L2BEC2) is proposed. Concretely, we first improve the visual appearance by introducing the bidirectional encoding structure with channel attention cascade to better characterize the motion information; then we further adopt the local network lightweight idea into the aforementioned structure to significantly eliminate its redundant parts of the model parameters. As a result, our L2BEC2 performs favorably at the cost of only one third of the parameters compared with the state-of-the-art methods on public datasets. Our source code is available at https://github.com/Pumpkin123709/LBEC.git.
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基于信道注意级联的局部轻量级双向编码视频帧插值
基于深度神经网络的视频帧插值,在给定两个连续相邻帧的情况下合成中间帧,通常依赖于重型模型架构,这阻碍了它们在小型终端上的部署。当直接采用这些模型的轻量级网络架构时,合成帧的视觉效果可能会很差。本文提出了一种轻量驱动的视频帧插值网络(L2BEC2)。具体而言,我们首先通过引入通道注意级联的双向编码结构来改善视觉外观,更好地表征运动信息;然后,我们在上述结构中进一步采用局部网络轻量化思想,显著消除了其模型参数中的冗余部分。因此,与公共数据集上最先进的方法相比,我们的L2BEC2仅以三分之一的参数为代价表现良好。我们的源代码可从https://github.com/Pumpkin123709/LBEC.git获得。
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