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Local binary pattern statistics feature for reduced reference image quality assessment

机译:局部二进制模式统计功能减少参考图像质量评估

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Measurement of visual quality is of fundamental importance for numerous image and video processing applications. This paper presented a novel and concise reduced reference (RR) image quality assessment method. Statistics of local binary pattern (LBP) is introduced as a similarity measure to form a novel RR image quality assessment (IQA) method for the first time. With this method, first, the test image is decomposed with a multi-scale transform. Second, LBP encoding maps are extracted for each of subband images. Third, the histograms are extracted from the LBP encoding map to form the RR features. In this way, image structure primitive information for RR features extraction can be reduced greatly. Hence, new RR IQA method is formed with only at most 56 RR features. The experimental results on two large scale IQA databases show that the statistic of LBPs is fairly robust and reliable to RR IQA task. The proposed methods show strong correlations with subjective quality evaluations.
机译:视觉质量的测量对于众多图像和视频处理应用具有基本重要性。本文介绍了一种新颖简洁的参考(RR)图像质量评估方法。将局部二进制模式(LBP)的统计数据作为相似度措施,首次形成新的RR图像质量评估(IQA)方法。利用这种方法,首先,测试图像用多尺度变换分解。其次,为每个子带图像提取LBP编码映射。第三,从LBP编码图中提取直方图以形成RR特征。以这种方式,可以大大减少RR特征提取的图像结构原始信息。因此,新的RR IQA方法仅具有最多56 RR特征。两个大型IQA数据库的实验结果表明,LBP的统计数据相当强大,对RR IQA任务可靠。所提出的方法与主观质量评估表现出强烈的相关性。

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