Image dehazing aims to restore spatial details from hazy images. There have emerged a number of image dehazing algorithms, designed to increase the visibility of those hazy images. However, much less work has been focused on evaluating the visual quality of dehazed images. In this paper, we propose a Reduced-Reference dehazed image quality evaluation approach based on Partial Discrepancy (RRPD) and then extend it to a No-Reference quality assessment metric with Blind Perception (NRBP). Specifically, inspired by the hierarchical characteristics of the human perceiving dehazed images, we introduce three groups of features: luminance discrimination, color appearance, and overall naturalness. In the proposed RRPD, the combined distance between a set of sender and receiver features is adopted to quantify the perceptually dehazed image quality. By integrating global and local channels from dehazed images, the RRPD is converted to NRBP which does not rely on any information from the references. Extensive experiment results on several dehazed image quality databases demonstrate that our proposed methods outperform state-of-the-art full-reference, reduced-reference, and no-reference quality assessment models. Furthermore, we show that the proposed dehazed image quality evaluation methods can be effectively applied to tune parameters for potential image dehazing algorithms.
翻译:图像去除屏蔽的目的是从模糊图像中恢复空间细节。 出现了一些图像去除屏蔽算法,目的是提高这些模糊图像的可见度。 但是,在评估破损图像的视觉质量方面,工作重点要少得多。 在本文中,我们提议采用一个基于部分偏差的降低参考去除图像质量评估方法(RRPD),然后将其推广到盲人感化的无参考质量评估标准(NRBP ) 。 具体地说,在人类感知破损图像的等级特征的启发下,我们引入了三类特征:发光区分、色观和总体自然性。 在拟议的RRPD中,采用一套发件人和接收人之间的综合距离,以量化感知破损图像质量质量评估。 通过整合全球和地方频道,RRPDD被转换为NRBP, 不依赖任何参考信息。 几个破损图像质量数据库的广泛实验结果显示,我们拟议采用的方法超越了质量分析,我们拟议的质量调整方法,我们没有降低质量评估。