基于多尺度边缘表示的图像质量评价方法

Guangtao Zhai, Wenjun Zhang, Xiaokang Yang, Yi Xu
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引用次数: 48

摘要

提出了两种图像质量评价指标:多尺度模相似度(M/sup 2/S)和多尺度模最大相似度(M/sup 3/S)。1)多尺度分析是图像处理中有效的分解技术,2)轮廓和边缘分析是理解自然场景的关键。基于这两个事实,我们尝试使用多尺度边缘表示来开发质量评估指标。采用非十进制二进小波变换对图像进行分解,然后通过比较小波变换的跨尺度模量,建立M/sup 2/S度量来评价图像质量。多尺度边缘被定义为局部模极大值,它通常包含图像最重要的信息。作为M/sup 2/S度量的进一步改进,M/sup 3/S仅使用多尺度边缘信息。因此,M/sup 3/S本质上是一个简化的参考图像质量度量。大量实验表明,在大多数情况下,这两种指标的预测能力相似,都优于广泛使用的PSNR和简单的结构相似度指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image quality assessment metrics based on multi-scale edge presentation
We propose two image quality assessment metrics named multi-scale modular similarity (M/sup 2/S) and multi-scale modular maxima similarity (M/sup 3/S). It has been well known 1) multi-scale analysis is an effective decomposition technique in image processing, and 2) contours and edges analyses are crucial in the understanding of natural scenes. Motivated by these two facts, we attempt to develop quality assessment metrics using multi-scale edges presentation. We decompose an image with un-decimated dyadic wavelet transform, and then develop M/sup 2/S metric to evaluate the quality of images by comparing the modulus across scales of wavelet transform. Multi-scale edges are defined as local maxima of modulus, which often contain the most important information of the image. As a further step of M/sup 2/S metric, M/sup 3/S only uses the multi-scale edge information. M/sup 3/S is therefore essentially a reduced-reference image quality metric. Extensive experiments indicate that in most cases, the prediction abilities of these two proposed metrics are similarly excellent and both outperform the widely used PSNR and the simple structural similarity metrics.
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