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Natural Image Quality Assessment Based on Visual Biological Cognitive Mechanism

机译:基于视觉生物学认知机制的自然图像质量评估

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摘要

With the focus of the main problems in no-reference natural image quality assessment (NR-IQA), the researchers propose a more universal, efficient and integrated resolution based on visual biological cognitive mechanism. First, the authors bring up an inspiring visual cognitive computing model (IVCCM) on the basis of visual heuristic principles. Second, the authors put forward an asymmetric generalized gaussian mixture distribution model (AGGMD), and the model can describe the probability distribution density of the images more precisely. Third, the authors extract the quality-aware multiscale local invariant features (QAMLIF) statistic and perceptive from natural images and form quality-aware uniform features descriptors (QAUFD) based on clustering and encoding the visual quality features. Fourth, the authors build topic semantic model and realize the resolution with Bayesian inference with IVCCM, AGGDM and QAUFD to implement NR-IQA. Theoretical research and experimental results show that the proposed resolution perform better with biological cognitive mechanism.
机译:针对无参考自然图像质量评估(NR-IQA)中的主要问题,研究人员提出了一种基于视觉生物认知机制的更通用,有效和集成的解决方案。首先,作者在视觉启发式原理的基础上提出了启发性的视觉认知计算模型(IVCCM)。其次,作者提出了一种非对称广义高斯混合分布模型(AGGMD),该模型可以更精确地描述图像的概率分布密度。第三,作者从自然图像中提取质量感知的多尺度局部不变特征(QAMLIF)统计量和感知力,并基于聚类和编码视觉质量特征形成质量感知的统一特征描述符(QAUFD)。第四,建立主题语义模型,并利用IVCCM,AGGDM和QAUFD进行贝叶斯推理,以实现NR-IQA。理论研究和实验结果表明,所提出的解决方案在生物认知机制上具有较好的表现。

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