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首页> 外文期刊>International Journal of Advanced Robotic Systems >Sparse representation of salient regions for no-reference image quality assessment
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Sparse representation of salient regions for no-reference image quality assessment

机译:无参考图像质量评估的突出区域的稀疏表示

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摘要

This paper introduces an efficient feature learning framework via sparse coding for no-reference image quality assessment. The important part of the proposed framework is based on sparse feature extraction from a sparse representation matrix, which is computed using a sparse coding algorithm. Image patches extracted from salient regions of unlabeled images are used to learn a dictionary of sparse coding. The l1-norm of the sparse representation is taken as a sparse penalty term in the process of learning the dictionary and computing the sparse representation. A feature detector adopts the l1-norm together with the max-pooling results of the sparse representation matrix as the output sparse features to obtain the objective quality scores. Sparse features of salient regions are evaluated using the LIVE, CSIQ and TID2013 databases, and result in good generalization ability, performing better than or on par with other image quality assessment algorithms.
机译:本文通过稀疏编码介绍了一个有效的特征学习框架,用于无参考图像质量评估。 所提出的框架的重要部分基于来自稀疏表示矩阵的稀疏特征提取,其使用稀疏编码算法计算。 从未标记图像的突出区域提取的图像贴片用于学习稀疏编码的字典。 在学习字典和计算稀疏表示的过程中,稀疏表示的L1-NOM作为稀疏罚则。 特征检测器与L1-NURM一起使用稀疏表示矩阵的最大池结果作为输出稀疏特征,以获得目标质量分数。 使用Live,CSIQ和TID2013数据库评估突出区域的稀疏特征,并导致良好的概括能力,表现优于或与其他图像质量评估算法更好。

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