基于模糊神经网络的无参考质量度量主观图像水印评价

M. Gaata, Sattar Sadkhn, Saad Hasson
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引用次数: 12

摘要

提出了一种新的基于模糊神经网络的无参考图像质量度量来自动估计水印图像的质量。其目的是利用模糊神经网络来学习模糊相似度量与主观质量评级(即从人类观众那里获得的平均意见得分(MOS))之间的高度非线性关系。实际上,我们的度量包括四个阶段:首先,将水印图像(清晰数据集)转换为模糊水印图像(模糊数据集)。其次,对模糊水印图像进行模糊滤波处理,生成其滤波后的图像;第三,利用模糊水印图像及其滤波后的图像计算模糊相似度作为神经网络的输入。第四;利用神经网络模型对这些度量进行混合。所建议的度量的输出是与MOS分数相对应的单个值。实验结果表明,通过神经网络融合模糊相似度量确实能够准确地预测水印图像的感知质量。
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 quality metric based on fuzzy neural network for subjective image watermarking evaluation
A new no-reference image quality metric is proposed to estimate the quality of watermarked images automatically based on fuzzy neural network. The aim is to use fuzzy neural network to learn the highly nonlinear relationship between the fuzzy similarity measures and the subjective quality rating, known as the mean opinion score (MOS) obtained from human viewers. In fact, our metric consists of four stages: first, transform watermarked image (crisp data set) into a fuzzy watermarked image (fuzzy data set). Second, fuzzy filtering process is applied to fuzzy watermarked image in order to generate its filtered image. Third, we use fuzzy watermarked image and its filtered image in the calculation of the fuzzy similarity measures as input to a neural network. Fourth; these measures are mixed using neural network model. The output of proposed metric is a single value corresponding to the MOS scores. Experimental results show that fusion of fuzzy similarity measures through the neural network indeed is able to accurately predict perceived quality of watermarked images.
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