Analysis of Probability Density Functions in Existing No-Reference Image Quality Assessment Algorithm for Contrast-Distorted Images

I. T. Ahmed, C. S. Der, N. Jamil, B. T. Hammad
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引用次数: 4

Abstract

Amongst all distortion types, contrast change is very crucial for visual perception of image quality. Contrast distortion may be caused by poor lighting condition and poor quality image acquisition device. Contrast-distorted image (CDI) is defined as image with low dynamic range of brightness. Most of existing image quality assessment algorithms (IQAs) have been developed during the past decade. However, most of them are designed for images distorted by compression, noise and blurring. There are very few IQAs designed specifically for CDI, e.g. Reduced-reference Image Quality Metric for Contrast-changed images (RIQMC) and No Reference-Image Quality Assessment (NR-IQA) for Contrast-Distorted Images (NR-IQA-CDI). The five features used in NR-IQA-CDI are the global spatial statistics of an image including the mean, standard deviation, entropy, kurtosis and skewness. The statistical model or the Probability Density Function (PDF) for each of the given moment features were estimated using a public image database with large number of natural scene images. Because of poor performance in two out of three image databases, where the Pearson Correlation Coefficient (PLCC) were only 0.5739 and 0.7623 in TID2013 and CSIQ database, thus motivate us to further investigated to detect the gabs in existing NR-IQA-CDI. The paper can address the problem of existing NR-IQA-CDI which the bell-curve like probability density function (pdf) of the contrast related features like standard deviation and entropy does not correlate well with the monotonic relation between the contrast features and the perceived contrast level.
现有对比度失真无参考图像质量评估算法的概率密度函数分析
在所有失真类型中,对比度变化对图像质量的视觉感知至关重要。光照条件差和图像采集设备质量差可能导致对比度失真。对比度失真图像(CDI)是指亮度动态范围较低的图像。大多数现有的图像质量评估算法(IQAs)都是在过去十年中发展起来的。然而,它们中的大多数是为被压缩、噪声和模糊所扭曲的图像而设计的。很少有专门为CDI设计的IQAs,例如用于对比度变化图像的减少参考图像质量度量(RIQMC)和用于对比度扭曲图像的无参考图像质量评估(NR-IQA) (NR-IQA-CDI)。在nr - ika - cdi中使用的五个特征是图像的全局空间统计量,包括均值、标准差、熵、峰度和偏度。利用一个包含大量自然场景图像的公共图像数据库,对每个给定时刻特征的统计模型或概率密度函数(PDF)进行估计。由于三个图像数据库中有两个表现不佳,其中TID2013和CSIQ数据库的Pearson相关系数(PLCC)仅为0.5739和0.7623,因此激励我们进一步研究现有NR-IQA-CDI中gabs的检测。本文解决了现有nr - iaca - cdi中标准偏差、熵等对比度相关特征的类钟形概率密度函数(pdf)与对比度特征与感知对比度水平单调关系不相关的问题。
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