Characterization of printer banding in regions of complex image content

N.A. Rawashdeh, O. Martinez, M. Quiroga, K. D. Donohue
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引用次数: 1

Abstract

This paper presents algorithms for estimating parameters that characterize weak levels of printer banding in complex images. Flat field test images are typically used as test patterns for banding evaluation; however, the images of this study contain complex image content to demonstrate the algorithm's robustness and extend the utility of these defect characterization methods. The test images are from color printers in the development phase and include multiple visible defects such as banding, grain, and streaking. The banding characterization includes an estimation of the fundamental frequency and average power extracted from local regions dominated by low frequency content where banding is likely to be most visible and offensive. Grain and mottle defects combined with other image content form a difficult noise environment from which the quasi-periodic banding characteristics must be extracted. The algorithm is based on the autocorrelation function and uses special averaging and a pre-whitening filter designed to minimize the influence of the interfering factors. Experimental results show that this method provides accurate banding frequency and power characterization even for multiple banding sequences that are present in the image test area. This new algorithm proves computationally efficient and more accurate than parameter estimates based on frequency domain analysis using the power spectrum. Experimental results show accurate banding characterizations for periods ranging between 0.93 and 10.5 mm over a range of banding-to-noise ratios from 5.5 to -6.5 dB.
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复杂图像内容区域的打印机带特征
本文提出了一种算法,用于估计表征复杂图像中打印机带弱水平的参数。平场测试图像通常用作条带评估的测试模式;然而,本研究的图像包含复杂的图像内容,以证明算法的鲁棒性,并扩展了这些缺陷表征方法的实用性。测试图像来自开发阶段的彩色打印机,包括多个可见的缺陷,如条带、颗粒和条纹。带特性包括基频的估计和从由低频内容主导的局部区域提取的平均功率,其中带可能是最明显和最令人反感的。颗粒和斑点缺陷与其他图像内容结合形成了一个困难的噪声环境,必须从中提取准周期带特征。该算法以自相关函数为基础,采用特殊的平均和预白化滤波器来减小干扰因素的影响。实验结果表明,该方法即使在图像测试区域内存在多个带序列,也能提供准确的带频率和功率特性。与基于功率谱的频域分析参数估计相比,该算法计算效率高,精度高。实验结果表明,在带噪比为5.5至-6.5 dB的范围内,在0.93至10.5 mm的周期范围内具有精确的带化特性。
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