学习整合局部和全局特征的盲图像质量测量

Min Liu, Guangtao Zhai, Ke Gu, Xiaokang Yang
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引用次数: 2

摘要

本文提出了一种新的盲/无参考图像质量评估算法(BIQA/NR-IQA)。大多数现有的测量方法都是“意见感知”的,要求人类对图像进行意见评分,并将图像特征映射到图像上。然而,获得人类图像分数的任务通常被认为是不经济的,因此我们在本研究中关注“无意见”(of)质量指标。本文通过整合局部特征和全局特征,将局部特征和全局特征结合起来,提出了一种基于学习的BIQA方法。在提取局部特征的第一步中,我们使用K-means训练的每个质量水平质心的质量感知聚类,而在第二步中,我们基于自然场景统计计算全局特征。最后,第三步使用SVR从上述局部和全局特征训练回归模块,得出整体图像质量分数。在LIVE、TID2008、CSIQ和TID2013数据库上的实验结果验证了与流行的无参考、减少参考和全参考IQA方法相比,我们提出的度量(一般框架)的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to integrate local and global features for a blind image quality measure
In this paper, we present a new algorithm for blind/no-reference image quality assessment (BIQA/NR-IQA). Most existing measures are “opinion-aware”, demanding human opinion scored images to map image features to them. The task of obtaining human scores of images is, however, commonly thought to be uneconomical, and thus we focus on “opinion free” (OF) quality metrics in this research. By integrating local and global features, this paper develops a learning-based BIQA approach with three steps by combining local and global features together. In the first step of extracting local features, we use the quality aware clustering with the centroid of each quality level trained by K-means, while we in the second step compute the global features based on the natural scene statistics. Finally, the third step uses the SVR to train a regression module from the above-mentioned local and global features to derive the overall image quality score. Experimental results on LIVE, TID2008, CSIQ, and TID2013 databases validate the effectiveness of our proposed metric (a general framework) as compared to popular no-, reduced- and full-reference IQA approaches.
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