SVD-based quality metric for image and video using machine learning.

Manish Narwaria, Weisi Lin
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引用次数: 147

Abstract

We study the use of machine learning for visual quality evaluation with comprehensive singular value decomposition (SVD)-based visual features. In this paper, the two-stage process and the relevant work in the existing visual quality metrics are first introduced followed by an in-depth analysis of SVD for visual quality assessment. Singular values and vectors form the selected features for visual quality assessment. Machine learning is then used for the feature pooling process and demonstrated to be effective. This is to address the limitations of the existing pooling techniques, like simple summation, averaging, Minkowski summation, etc., which tend to be ad hoc. We advocate machine learning for feature pooling because it is more systematic and data driven. The experiments show that the proposed method outperforms the eight existing relevant schemes. Extensive analysis and cross validation are performed with ten publicly available databases (eight for images with a total of 4042 test images and two for video with a total of 228 videos). We use all publicly accessible software and databases in this study, as well as making our own software public, to facilitate comparison in future research.

使用机器学习的基于svd的图像和视频质量度量。
我们研究了机器学习在基于综合奇异值分解(SVD)视觉特征的视觉质量评价中的应用。本文首先介绍了视觉质量评价的两阶段过程和现有视觉质量评价指标中的相关工作,然后深入分析了视觉质量评价的奇异值分解方法。奇异值和向量构成了用于视觉质量评估的选定特征。然后将机器学习用于特征池化过程,并证明其有效性。这是为了解决现有池化技术的局限性,如简单求和、平均、Minkowski求和等,这些技术往往是临时的。我们提倡机器学习用于特征池,因为它更系统化和数据驱动。实验表明,该方法优于现有的8种相关方案。对10个公开可用的数据库进行了广泛的分析和交叉验证(8个用于图像,总共有4042个测试图像,2个用于视频,总共有228个视频)。在这项研究中,我们使用了所有可公开访问的软件和数据库,并公开了我们自己的软件,以便在未来的研究中进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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