首页> 外文会议>Asian Conference on Computer Vision(ACCV 2007) pt.2; 20071118-22; Tokyo(JP) >Learning-Based Super-Resolution System Using Single Facial Image and Multi-resolution Wavelet Synthesis
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Learning-Based Super-Resolution System Using Single Facial Image and Multi-resolution Wavelet Synthesis

机译:基于人脸图像和多分辨率小波合成的基于学习的超分辨率系统

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摘要

A learning-based super-resolution system consisting of training and synthesis processes is presented. In the proposed system, a multi-resolution wavelet approach is applied to carry out the robust synthesis of both the global geometric structure and the local high-frequency detailed features of a facial image. In the training process, the input image is transformed into a series of images of increasingly lower resolution using the Haar discrete wavelet transform (DWT). The images at each resolution level are divided into patches, which are then projected onto an eigenspace to derive the corresponding projection weight vectors. In the synthesis process, a low-resolution input image is divided into patches, which are then projected onto the same eigenspace as that used in the training process. Modeling the resulting projection weight vectors as a Markov network, the maximum a posteriori (MAP) estimation approach is then applied to identity the best-matching patches with which to reconstruct the image at a higher level of resolution. The experimental results demonstrate that the proposed reconstruction system yields better results than the bi-cubic spline interpolation method.
机译:提出了一种基于学习的超分辨率系统,该系统包括训练和综合过程。在提出的系统中,采用多分辨率小波方法对面部图像的全局几何结构和局部高频细节特征进行鲁棒的综合。在训练过程中,使用Haar离散小波变换(DWT)将输入图像转换为分辨率越来越低的一系列图像。将每个分辨率级别的图像划分为小块,然后将其投影到本征空间上以得出相应的投影权重向量。在合成过程中,将低分辨率输入图像划分为小块,然后将其投影到与训练过程中使用的特征空间相同的特征空间。将产生的投影权重向量建模为马尔可夫网络,然后采用最大后验(MAP)估计方法来识别最佳匹配的块,以更高的分辨率重建图像。实验结果表明,所提出的重建系统比双三次样条插值方法产生了更好的结果。

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