基于无相位质量度量的稀疏表示绘画

Takahiro Ogawa, Keisuke Maeda, M. Haseyama
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引用次数: 0

摘要

提出了一种基于新的无相质量度量的稀疏表示的图像绘制方法。由于图像中局部区域的功率谱(无相特征)比其像素值更能成功地表示其纹理特征,因此新导出了一种基于这些无相特征的图像表示质量度量。具体来说,该方法实现了目标信号的备用表示,即目标补丁,包括通过相位检索收敛的监测误差作为新的无相位质量度量的缺失强度。这是我们研究的主要贡献。在这种方法中,我们的方法中使用的相位检索算法有以下两个重要作用:(1)推导新的质量度量,甚至可以推导出缺失强度的图像;(2)将无相特征(即功率谱)转换为像素值(即强度)。因此,上述新颖的方法解决了现有的无法使用更好的特征或更好的质量指标进行喷漆的问题。实验结果表明,基于新的无相质量度量的稀疏表示方法优于先前报道的直接使用像素值进行绘制的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inpainting via Sparse Representation Based on a Phaseless Quality Metric
SUMMARY An inpainting method via sparse representation based on a new phaseless quality metric is presented in this paper. Since power spectra, phaseless features, of local regions within images enable more successful representation of their texture characteristics compared to their pixel values, a new quality metric based on these phaseless features is newly derived for image representation. Specifically, the proposed method enables spare representation of target signals, i.e., target patches, including missing intensities by monitoring errors converged by phase retrieval as the novel phaseless quality metric. This is the main contribution of our study. In this approach, the phase retrieval algorithm used in our method has the following two important roles: (1) derivation of the new quality metric that can be derived even for images including missing intensities and (2) conversion of phaseless features, i.e., power spectra, to pixel values, i.e., intensities. Therefore, the above novel approach solves the existing problem of not being able to use better features or better quality metrics for inpainting. Results of experiments showed that the proposed method using sparse representation based on the new phaseless quality metric outperforms previously reported methods that directly use pixel values for inpainting.
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