通过实例学习无参考质量度量

Hanghang Tong, Mingjing Li, HongJiang Zhang, Changshui Zhang, Jingrui He, Wei-Ying Ma
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引用次数: 54

摘要

本文提出了一种基于学习的无参考图像质量评估方法。我们的方法旨在通过学习直接获得质量度量,而不是检查给定类型失真的确切先验知识并寻找合适的表示方法。首先,为高质量和低质量的课程准备一些训练示例;然后在训练集上建立二值分类器;最后,未标记示例的质量度量由它属于这两类的程度来表示。提出并研究了从给定图像中获取样本、建立二值分类器和质量度量模型的不同方案。虽然大多数现有方法都是针对某些特定的失真类型量身定制的,但该方法可能为无参考图像质量评估提供通用解决方案。在JPEG和JPEG2000压缩图像上的实验结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning No-Reference Quality Metric by Examples
In this paper, a novel learning based method is proposed for No-Reference image quality assessment. Instead of examining the exact prior knowledge for the given type of distortion and finding a suitable way to represent it, our method aims to directly get the quality metric by means of learning. At first, some training examples are prepared for both high-quality and low-quality classes; then a binary classifier is built on the training set; finally the quality metric of an un-labeled example is denoted by the extent to which it belongs to these two classes. Different schemes to acquire examples from a given image, to build the binary classifier and to model the quality metric are proposed and investigated. While most existing methods are tailored for some specific distortion type, the proposed method might provide a general solution for No-Reference image quality assessment. Experimental results on JPEG and JPEG2000 compressed images validate the effectiveness of the proposed method.
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