使用基于纹理和查找表的学习方法的新的逆半色调

Yong-Huai Huang, K. Chung
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引用次数: 0

摘要

逆半色调(IH)是一种从输入半色调图像重建灰度图像的方法。为了提高重建图像的质量,提出了一种基于纹理和查找表(TLUT-based)的IH (TLIH)算法。在基于tlt的方法中,使用基于dct的学习方案将训练集分类为几种纹理。这些分类纹理有助于建立基于纹理的查找表,用于重建高质量的灰度图像。在30张真实训练图像下,实验结果表明,与目前发表的两种方法(分别由Mese和Vaidyanathan以及Chung和Wu提出)相比,所提出的TLIH算法的图像质量分别提高了1.13 dB和0.75 dB。
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New inverse halftoning using texture-and lookup table-based learning approach
Inverse halftoning (IH) is used to reconstruct the gray image from an input halftone image. This paper presents a new texture-and lookup table-based (TLUT-based) IH (TLIH) algorithm to improve the quality of the reconstructed image. In the proposed TLUT-based approach, a DCT-based learning scheme is utilized to classify the training set into several kinds of textures. These classified textures are useful to build up the texture-based lookup table which is used to reconstruct high quality gray images. Under thirty real training images, experimental results demonstrated that the proposed TLIH algorithm has 1.13 dB and 0.75 dB image quality improvement when compared to the currently published two methods, one by Mese and Vaidyanathan and the other by Chung and Wu, respectively.
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