采用后验信息构建稀疏原子库的超分辨率人脸重建

    Facial Super-resolution Reconstruction of Sparse Dictionaries With Posteriors Information

    • 摘要: 为了提高监控噪声环境下人脸图像的重建质量,提出基于后验信息的鲁棒性原子库构建方法及基于该原子库的超分辨率的方法,通过事后采集现场图像,训练只对输入图像的清晰内容稀疏而对噪声内容不稀疏的低维原子集和与之相对应的高维原子集,计算低维空间的稀疏系数并映射到高维空间以合成出重建人脸图像,从而提高基于稀疏表示的局部脸超分辨率对于监控噪声的鲁棒性.实验结果表明:对于实际拍摄的监控图像输入,提出的基于后验信息的原子库具有很好的鲁棒性能,重建结果比传统方法有更好的主观效果.

       

      Abstract: To improve reconstruction quality of face image under surveillance environment,the construction of robust dictionary and facial super resolution based on posterior information method were proposed.This method utilized the image dataset collected from the spot of surveillance to train a lowd-imensional dictionary,which was only sparse to the clear content part of the input image but not to the noise residue part,and a corresponding high-dimensional dictionary.Then the coefficients calculated from low-dimensional space were mapped directly to the high-dimensional space in order to synthesize the reconstructed facial image.Consequently,robustness of local facial super resolution based on sparse representation to surveillance noise was improved.Resultsdemonstrate that,for the surveillance images,the proposed dictionaries based on posterior information are more robust than the traditional schemes,and the reconstruction results obtain a better subject quality compared with the traditional dictionary.

       

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