标题: 适应性的自动回归模型的增加画面更新率转换方法
An Adaptive Auto-Regressive Model for Frame Rate Up-Conversion
作者: 王世明
Wang, Shih-Ming
蔡文锦
Tsai, Wen-Jiin
资讯科学与工程研究所
关键字: 适应性的自动回归模型;增加画面更新率;Frame rate up-conversion;adaptive auto-regressive model
公开日期: 2010
摘要: 增加画面更新率是视讯处理中众多议题的其中之一。本篇论文提出了一种适应性的自动回归模型,使其产生的画面有更好的视觉品质及更少的计算负担。在传统的自动回归模型中,每个像素被建模为时间上像素点或空间上像素点的线性组合。而在本论文中,我们提出了一个利用视讯资料的特性来选择回归模型的机制。选择适当的回归模型,可以在回归运算当中减少不必要的变数,在计算复杂度上得到了相当程度的改善。实验结果显示出在运算时间上得到了显着的进步,并且在内插出的画面中,视觉效果也得到了改善。
An adaptive auto-regressive model is proposed in this thesis for frame rate up-conversion. In conventional AR model, each pixel in the to-be-interpolated frame is modeled as a linear combination of temporal neighborhood, spatial neighborhood, or joint temporal-spatial neighborhood pixels. This thesis proposed a temporal AR model (called TAR) utilizing temporal neighborhood; and a spatial AR model (called SAR) utilizing spatial neighborhood. Besides that this thesis also proposed a scheme which selects TAR or SAR adaptively according to motion information in the video sequence. By selecting appropriate AR model, unnecessary variables can be eliminated from regression process. Compared to STAR model [2] which utilizes joint temporal-spatial neighborhood for each pixel, computational cost can be greatly reduced with the proposed method. In addition, the experiment results show that visual quality can also be improved by adaptively adopting appropriate AR models for frame interpolation. The results demonstrate the superiority of the proposed method in regarding to improved visual quality and reduced computational cost.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079755585
http://hdl.handle.net/11536/45930
显示于类别:Thesis


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