基于改进U-Net的FRUC算法研究

Qingqing Deng, Zhaohua Long
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引用次数: 0

摘要

帧率上转换(FRUC)作为一种视频后处理技术,对提高视频质量有很大的帮助。目前广泛应用的帧率改进技术是基于运动补偿帧插值(MCFI)技术。虽然这种方法明显改善了视频的抖动和模糊,但仍然存在块效果和孔洞等问题。提出了一种将U-Net与残差神经网络(ResNet)相结合的U-Net帧率改进方法。ResNet结构可以有效地解决传输过程中的信息丢失、梯度消失和爆炸等问题。结合这两种网络,对视频序列的插值帧进行预测,得到的插值帧更接近原始帧,预测的插值帧效果更好,有效避免了块效应、孔洞等问题。实验表明,本文算法在插值帧的PSNR值上优于其他FRUC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on FRUC Algorithm Based on Improved U-Net
Frame rate up up-conversion(FRUC), as a video post-processing technology, is of great help in improving video quality. The widely used frame rate improvement technology is based on the motion-compensated frame interpolation (MCFI). Although this method significantly improves video jitter and blur, there will still be problems such as block effects and holes. The paper proposes an improved U-Net frame rate improvement method that combines the U-Net and the Residual Neural Network (ResNet). The ResNet structure can effectively solve the problems of information loss, gradient disappearance and explosion during transmission. Combining these two networks and predicting the interpolation frames of the video sequences, such interpolation frames are closer to the original frames, and the predicted interpolation frames are better and effectively avoid problems such as block effects and holes. Experiments show that the algorithm in this paper is superior to other FRUC algorithms in the PSNR value of the interpolated frame.
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