Color image quality assessment based on sparse representation and reconstruction residual.

J. Visual Communication and Image Representation(2016)

引用 23|浏览98
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摘要
Color sparse representation is used to capture structure and color distortions in a holistic manner.Reconstruction residual is used to capture contrast changes.Sparse features are also used to conduct the pooling.The proposed method is advantageous over the state-of-the-arts on both traditional and color distortions. Image quality assessment (IQA) is a fundamental problem in image processing. While in practice almost all images are represented in the color format, most of the current IQA metrics are designed in gray-scale domain. Color influences the perception of image quality, especially in the case where images are subject to color distortions. With this consideration, this paper presents a novel color image quality index based on Sparse Representation and Reconstruction Residual (SRRR). An overcomplete color dictionary is first trained using natural color images. Then both reference and distorted images are represented using the color dictionary, based on which two feature maps are constructed to measure structure and color distortions in a holistic manner. With the consideration that the feature maps are insensitive to image contrast change, the reconstruction residuals are computed and used as a complementary feature. Additionally, luminance similarity is also incorporated to produce the overall quality score for color images. Experiments on public databases demonstrate that the proposed method achieves promising performance in evaluating traditional distortions, and it outperforms the existing metrics when used for quality evaluation of color-distorted images.
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关键词
Image quality assessment,Color distortion,Sparse representation,Reconstruction residual
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