Wide Separate 3D Convolution for Video Super Resolution

Xiafei Yu, Jiying Zhao
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引用次数: 1

Abstract

Video super-resolution (VSR) aims to recover realistic high-resolution (HR) frame from its corresponding center low-resolution (LR) frame and some neighbouring supporting frames. To utilize the extra temporal information of supporting LR frames, most of VSR methods highly rely on accurate motion estimation and compensation models to align LR frames. However, the motions between frames have no ground truth, and it is difficult to train motion estimation and compensation models. Inaccurate results will lead to artifacts and blurs, which also will damage the recovery of high-resolution frames. We propose an effective separate 3D Convolution Neural Network (CNN) with wide activation to overcome the drawback of utilizing motion estimation and compensation models. Separate 3D convolution is factorizing the 3D convolution into 2D convolution along spatial domain and 1D convolution along temporal domain, which can not only capture temporal and spatial information simultaneously but also reduce the computation complexity compared to 3D CNN.
宽分离3D卷积视频超分辨率
视频超分辨率(VSR)旨在从相应的中心低分辨率(LR)帧和一些邻近的支持帧中恢复真实的高分辨率(HR)帧。为了利用支持LR帧的额外时间信息,大多数VSR方法高度依赖精确的运动估计和补偿模型来对齐LR帧。然而,帧与帧之间的运动没有真值,运动估计和补偿模型难以训练。不准确的结果会导致伪影和模糊,这也会损害高分辨率帧的恢复。为了克服运动估计和补偿模型的缺点,提出了一种有效的宽激活独立三维卷积神经网络(CNN)。分离三维卷积是将三维卷积分解为沿空间域的二维卷积和沿时间域的一维卷积,不仅可以同时捕获时空信息,而且与三维CNN相比,降低了计算复杂度。
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