JPEG2000压缩图像的盲质量评价

H. Sheikh, Z. Wang, L. Cormack, A. Bovik
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引用次数: 60

摘要

图像质量的测量是许多图像处理算法的关键,如采集、压缩、恢复、增强和再现。传统上,图像质量评估算法专注于测量图像保真度,其中质量被测量为相对于“参考”或“完美”图像的保真度。盲目的质量评估领域在很大程度上尚未被探索。本文提出了一种盲目判断JPEG2000压缩图像质量的算法。我们的算法分配的质量分数与人类的评估非常一致。我们的算法利用小波系数的统计模型,并利用量化产生比自然图像预期更多的零系数这一事实计算特征。该算法在从人类观察者获得的数据上进行训练和测试,并且在人类受试者之间的可变性施加的有用预测上执行接近极限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind quality assessment for JPEG2000 compressed images
Measurement of image quality is crucial for many image-processing algorithms, such as acquisition, compression, restoration, enhancement and reproduction. Traditionally, image quality assessment algorithms have focused on measuring image fidelity, where quality is measured as fidelity with respect to a 'reference' or 'perfect' image. The field of blind quality assessment has been largely unexplored. In this paper we present an algorithm for blindly determining the quality of JPEG2000 compressed images. Our algorithm assigns quality scores that are in good agreement with human evaluations. Our algorithm utilizes a statistical model for wavelet coefficients and computes features that exploit the fact that quantization produces more zero coefficients than expected for natural images. The algorithm is trained and tested on data obtained from human observers, and performs close to the limit on useful prediction imposed by the variability between human subjects.
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