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首页> 外文期刊>Journal of visual communication & image representation >A content-adaptive sharpness enhancement algorithm using 2D FIR filters trained by pre-emphasis
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A content-adaptive sharpness enhancement algorithm using 2D FIR filters trained by pre-emphasis

机译:一种使用预加重训练的2D FIR滤波器的内容自适应清晰度增强算法

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摘要

This paper proposes a content-adaptive sharpening algorithm using two-dimensional (2D) FIR filters trained by pre-emphasis for various image pairs. In the learning stage, all low-quality (LQ) and high-quality (HQ) image pairs are first pre-emphasized, i.e., properly sharpened. Then selective 2D FIR filter coefficients for high-frequency synthesis are trained using the pre-emphasized LQ-HQ image pairs, and then are stored in a dictionary that resembles an LUT (look-up table). In the inference stage, each input image is pre-emphasized in the same manner as in the learning stage. The best-matched 2D filter for each LQ patch is then found in the dictionary, and an HQ patch corresponding to the input LQ patch is synthesized using the resultant 2D FIR filter. The experiment results show that the proposed algorithm visually outperforms existing ones and that the mean of absolute errors (MAEs) and MSSSIM (multi-scale structure similarity) of the proposed algorithm are about 10% to 60% lower and about 0.002-0.053 higher, respectively than those of the existing algorithms.
机译:本文提出了一种通过预加重训练的二维(2D)FIR滤波器对各种图像对进行内容自适应的锐化算法。在学习阶段,首先对所有低质量(LQ)和高质量(HQ)图像对进行预强调,即对其进行适当的锐化。然后,使用预强调的LQ-HQ图像对训练用于高频合成的选择性2D FIR滤波器系数,然后将其存储在类似于LUT(查找表)的字典中。在推断阶段,以与学习阶段相同的方式预强调每个输入图像。然后在字典中找到每个LQ补丁的最佳匹配2D滤波器,并使用所得2D FIR滤波器合成与输入LQ补丁相对应的HQ补丁。实验结果表明,该算法在视觉上胜过现有算法,并且绝对误差(MAE)和MSSSIM(多尺度结构相似性)的均值分别降低了约10%至60%和约0.002-0.053,分别比现有的算法。

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