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Sparsity-based inverse halftoning via semi-coupled multi-dictionary learning and structural clustering

机译:通过半耦合多字典学习和结构聚类的基于稀疏性的逆半色调

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摘要

Inverse halftoning is the restoration of a continuous-tone image from its halftone version, which is a critical process for halftone transform, digital archive management and high precision identification of halftone. In this paper, a novel inverse halftoning method based on semi-coupled multi-dictionary learning is proposed to address the cross-style image restoration from halftone images to continuous-tone images. By using semi-coupled multi-dictionary learning, multiple dictionary pairs and their corresponding mapping functions between continuous-tone image and its halftone version could be simultaneously learned. The learned multiple dictionary pairs can well represent the structure characteristics of halftone images and continuous-tone images, respectively. In addition, the mapping functions learned by semi-coupled manner can bridge the gap between the two different style images of halftone image and continuous-tone image. Unlike the existed methods, the proposed method could effectively relax the assumption of the same sparse coding coefficients in coupled dictionary learning. To obtain more accurate mapping functions, a structural clustering method for cross-style image patches is proposed by using SUSAN (smallest univalue segment assimilating nucleus) filtering and HOG (histogram of oriented gradient) features, which can capture the similar structure features from halftone images and continuous-tone images, and thus improve the classification accurate rate of halftone image patches. The experimental results demonstrate that the proposed method can restore higher quality continuous-tone images than that produced by the state-of-the-art methods, which not only reduce the screen noise in smooth regions, but also provide well fine details and clear edges.
机译:反向半色调是从其半色调版本恢复连续色调图像,这是进行半色调转换,数字档案管理和高精度识别半色调的关键过程。针对半色调图像到连续色调图像的交叉风格图像复原问题,提出了一种基于半耦合多字典学习的逆半色调新方法。通过使用半耦合多字典学习,可以同时学习多个字典对及其在连续色调图像及其半色调版本之间的对应映射功能。所学习的多个字典对分别可以很好地表示半色调图像和连续色调图像的结构特征。另外,通过半耦合方式学习的映射功能可以弥合半色调图像和连续色调图像这两种不同风格的图像之间的差距。与现有方法不同,该方法可以有效地放松耦合字典学习中相同稀疏编码系数的假设。为了获得更准确的映射函数,提出了一种通过使用SUSAN(最小化同心核的最小值分割)滤波和HOG(定向梯度直方图)特征对十字样式图像斑进行结构聚类的方法,该方法可以从半色调图像中捕获相似的结构特征。和连续色调图像,从而提高了半色调图像补丁的分类准确率。实验结果表明,与现有技术相比,该方法可以还原出更高质量的连续色调图像,不仅可以减少平滑区域的屏幕噪声,还可以提供精细的细节和清晰的边缘。

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    Faculty of Mechanical and Precision Instrumental Engineering, Xi’an University of Technology,Department of Border-control and Immigration, The Armed Police Academy;

    Faculty of Mechanical and Precision Instrumental Engineering, Xi’an University of Technology,Faculty of Printing, Packing Engineering and Digital Media Technology, Xi’an University of Technology;

    Faculty of Mechanical and Precision Instrumental Engineering, Xi’an University of Technology,Faculty of Printing, Packing Engineering and Digital Media Technology, Xi’an University of Technology;

    Faculty of Printing, Packing Engineering and Digital Media Technology, Xi’an University of Technology;

    Faculty of Computer Science and Engineering, Xi’an University of Technology;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    Inverse halftoning; Semi-coupled dictionary; Multi-dictionary learning; Sparse representation; Structure clustering;

    机译:逆半色调;半耦合字典;多字典学习;稀疏表示;结构聚类;

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