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Effective two-step method for face hallucination based on sparse compensation on over-complete patches

机译:基于稀疏补偿的过完整补丁有效的两步幻觉方法

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Sparse representation has been successfully applied to image d using low- and high-resolution training face images based on sparse representation. In this study, the sparse residual compensation is adopted to face hallucination. Firstly, a global face image is constructed by optimal coefficients of the interpolated training images. Secondly, the high-resolution residual image (local face image) is found by using an over-complete patch dictionary and the sparse representation. Finally, a hallucinated face image is obtained by combining these two steps. In addition, the more details of the face image in high frequency parts are recovered using a residual compensation strategy. In the authors?? experimental work, it is observed that balance sparsity parameter (;B;) has affected the residual compensation. Further, the proposed algorithm can acquire a highresolution image even though the number of training image pairs is comparatively smaller. The experiments show that the authors?? method is more effective than the other existing two-step face hallucination methods.
机译:稀疏表示已成功地基于稀疏表示使用低分辨率和高分辨率的训练面部图像应用于图像d。在这项研究中,稀疏残差补偿被用来面对幻觉。首先,通过内插训练图像的最佳系数构造全局人脸图像。其次,通过使用不完整的补丁字典和稀疏表示来找到高分辨率残差图像(局部面部图像)。最后,通过组合这两个步骤获得幻觉的面部图像。此外,使用残差补偿策略可以恢复高频部分中人脸图像的更多细节。在作者中?实验工作中,观察到平衡稀疏性参数(; B;)已影响剩余补偿。此外,即使训练图像对的数量相对较少,所提出的算法也可以获取高分辨率图像。实验表明作者?该方法比其他现有的两步面部幻觉方法更有效。

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    《Image Processing, IET》 |2013年第6期|624-632|共9页
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