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基于子带峭度的盲噪声图像质量评估

Blind Noisy Image Quality Assessment Using Sub-Band Kurtosis.

出版信息

IEEE Trans Cybern. 2020 Mar;50(3):1146-1156. doi: 10.1109/TCYB.2018.2889376. Epub 2019 Jan 8.

DOI:10.1109/TCYB.2018.2889376
PMID:30629529
Abstract

Noise that afflicts natural images, regardless of the source, generally disturbs the perception of image quality by introducing a high-frequency random element that, when severe, can mask image content. Except at very low levels, where it may play a purpose, it is annoying. There exist significant statistical differences between distortion-free natural images and noisy images that become evident upon comparing the empirical probability distribution histograms of their discrete wavelet transform (DWT) coefficients. The DWT coefficients of low- or no-noise natural images have leptokurtic, peaky distributions with heavy tails; while noisy images tend to be platykurtic with less peaky distributions and shallower tails. The sample kurtosis is a natural measure of the peakedness and tail weight of the distributions of random variables. Here, we study the efficacy of the sample kurtosis of image wavelet coefficients as a feature driving, an extreme learning machine which learns to map kurtosis values into perceptual quality scores. The model is trained and tested on five types of noisy images, including additive white Gaussian noise, additive Gaussian color noise, impulse noise, masked noise, and high-frequency noise from the LIVE, CSIQ, TID2008, and TID2013 image quality databases. The experimental results show that the trained model has better quality evaluation performance on noisy images than existing blind noise assessment models, while also outperforming general-purpose blind and full-reference image quality assessment methods.

摘要

无论噪声源如何,都会给自然图像带来干扰,使图像质量下降,因为它会引入高频随机元素,如果噪声严重,甚至可能会掩盖图像内容。除了在极低水平下可能有一定作用外,它通常是令人讨厌的。无失真的自然图像和噪声图像之间存在显著的统计差异,通过比较它们的离散小波变换 (DWT) 系数的经验概率分布直方图可以明显看出这一点。低噪声或无噪声自然图像的 DWT 系数具有尖峰、峰值分布,尾部较重;而噪声图像则倾向于具有较平坦的分布和较浅的尾部。样本峰度是衡量随机变量分布尖峰度和尾部重量的自然指标。在这里,我们研究了图像小波系数样本峰度作为驱动特征的有效性,使用极限学习机将峰度值映射到感知质量评分。该模型在包括加性白高斯噪声、加性高斯色噪声、脉冲噪声、掩蔽噪声和来自 LIVE、CSIQ、TID2008 和 TID2013 图像质量数据库的高频噪声在内的五种噪声图像上进行了训练和测试。实验结果表明,与现有的盲噪声评估模型相比,训练后的模型在噪声图像上具有更好的质量评估性能,同时也优于通用的盲和全参考图像质量评估方法。

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