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Hierarchical Extended Bilateral Motion Estimation-Based Frame Rate Upconversion Using Learning-Based Linear Mapping

机译:使用基于学习的线性映射的基于分层扩展双边运动估计的帧速率上转换

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摘要

We present a novel and effective learning-based frame rate upconversion (FRUC) scheme, using linear mapping. The proposed learning-based FRUC scheme consists of: 1) a new hierarchical extended bilateral motion estimation (HEBME) method; 2) a light-weight motion deblur (LWMD) method; and 3) a synthesis-based motion-compensated frame interpolation (S-MCFI) method. First, the HEBME method considerably enhances the accuracy of the motion estimation (ME), which can lead to a significant improvement of the FRUC performance. The proposed HEBME method consists of two ME pyramids with a three-layered hierarchy, where the motion vectors (MVs) are searched in a coarse-to-fine manner via each pyramid. The found MVs are further refined in an enhanced resolution of four times by jointly combining the MVs from the two pyramids. The HEBME method employs a new elaborate matching criterion for precise ME which effectively combines a bilateral absolute difference, an edge variance, pixel variances, and an MV difference among two consecutive blocks and its neighboring blocks. Second, the LWMD method uses the MVs found by the HEBME method and removes the small motion blurs in original frames via transformations by linear mapping. Third, the S-MCFI method finally generates interpolated frames by applying linear mapping kernels for the deblurred original frames. In consequence, our FRUC scheme is capable of precisely generating interpolated frames based on the HEBME for accurate ME, the S-MCFI for elaborate frame interpolation, and the LWMD for contrast enhancement. The experimental results show that our FRUC significantly outperforms the state-of-the-art non-deep learning-based schemes with an average of 1.42 dB higher in the peak signal-to-noise-ratio and shows comparable performance with the state-of-the-art deep learning-based scheme.
机译:我们提出了一种使用线性映射的新颖有效的基于学习的帧速率上转换(FRUC)方案。提出的基于学习的FRUC方案包括:1)一种新的分层扩展双边运动估计(HEBME)方法; 2)轻量运动去模糊(LWMD)方法; 3)基于合成的运动补偿帧插值(S-MCFI)方法。首先,HEBME方法大大提高了运动估计(ME)的准确性,这可以显着提高FRUC性能。提出的HEBME方法由具有三层结构的两个ME金字塔组成,其中通过每个金字塔以粗略到精细的方式搜索运动矢量(MV)。通过将两个金字塔中的MV组合在一起,可以将发现的MV进一步提高为四倍的高分辨率。 HEBME方法对精确的ME采用了新的精细匹配准则,该准则有效地结合了两个连续块及其相邻块之间的双边绝对差,边缘差,像素差和MV差。其次,LWMD方法使用通过HEBME方法找到的MV,并通过线性映射进行变换,从而消除了原始帧中的小运动模糊。第三,S-MCFI方法最终通过对去模糊的原始帧应用线性映射内核来生成内插帧。因此,我们的FRUC方案能够基于HEBME(用于精确的ME),S-MCFI(用于精细的帧插值)和LWMD(用于增强对比度)来精确生成插值帧。实验结果表明,我们的FRUC明显优于最新的基于非深度学习的方案,其峰值信噪比平均提高了1.42 dB,并且与最先进的基于深度学习的方案。

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