Varga Domonkos
Ronin Institute, Montclair, NJ 07043, USA.
J Imaging. 2023 Jun 8;9(6):116. doi: 10.3390/jimaging9060116.
Given the reference (distortion-free) image, full-reference image quality assessment (FR-IQA) algorithms seek to assess the perceptual quality of the test image. Over the years, many effective, hand-crafted FR-IQA metrics have been proposed in the literature. In this work, we present a novel framework for FR-IQA that combines multiple metrics and tries to leverage the strength of each by formulating FR-IQA as an optimization problem. Following the idea of other fusion-based metrics, the perceptual quality of a test image is defined as the weighted product of several already existing, hand-crafted FR-IQA metrics. Unlike other methods, the weights are determined in an optimization-based framework and the objective function is defined to maximize the correlation and minimize the root mean square error between the predicted and ground-truth quality scores. The obtained metrics are evaluated on four popular benchmark IQA databases and compared to the state of the art. This comparison has revealed that the compiled fusion-based metrics are able to outperform other competing algorithms, including deep learning-based ones.
给定参考(无失真)图像,全参考图像质量评估(FR-IQA)算法旨在评估测试图像的感知质量。多年来,文献中提出了许多有效的、手工设计的FR-IQA指标。在这项工作中,我们提出了一种用于FR-IQA的新颖框架,该框架结合了多个指标,并试图通过将FR-IQA表述为一个优化问题来利用每个指标的优势。遵循其他基于融合的指标的思路,测试图像的感知质量被定义为几个现有的、手工设计的FR-IQA指标的加权乘积。与其他方法不同,权重是在基于优化的框架中确定的,目标函数被定义为最大化预测质量得分与真实质量得分之间的相关性并最小化均方根误差。在四个流行的基准IQA数据库上对获得的指标进行了评估,并与现有技术进行了比较。这种比较表明,编译后的基于融合的指标能够优于其他竞争算法,包括基于深度学习的算法。