基于小波能量和纹理分析的无参考图像质量评价算法

Yao Lyu, Yingyun Yang
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引用次数: 0

摘要

提出了一种基于小波能量与纹理分析(WETA)的无参考图像质量评价算法。常见失真指标的检测,如块效应、模糊和噪声是WETA算法的基础。利用小波能量差作为宏观统计特征,弥补了自然无损图像能量模型得到的基本畸变检测的局限性。为了掩盖局部背景和亮度对人眼失真性能的掩蔽作用,本文利用灰度共生矩阵(GLCM)的导数特征来表示纹理特征和图像复杂度。最后,将失真性能、小波能量差和纹理信息融合到BP神经网络中进行研究,给出了客观的质量评价方法。实验表明,在不参考原始图像的情况下,WETA与主观QA分数的一致性较高,且耗时较短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
No-reference Image Quality Assessment Algorithm Based on Wavelet Energy and Texture Analysis
A new no-reference image quality assessment(QA) algorithm based on wavelet energy and texture analysis (WETA) is proposed in this paper. The detection of common distortion metrics, like block effects, blurring and noise is the basis of WETA algorithm. The wavelet energy difference is used as macroscopic statistical feature to compensate for the limitation of basic distortion detection, which is obtained by natural lossless images energy model. To cover the masking effect of local background and brightness to distortion performance in human eye, this paper utilizes the derivative features of gray level co-occurrence matrix(GLCM) to represent texture feature and image complexity. Finally, the objective quality assessment method is given by fusing distortion performance, wavelet energy difference and texture information into BP neural network for studying. Experiments show that WETA is high consistent to subjective QA scores without referring to original image, and less time-consuming.
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