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A semantic no-reference image sharpness metric based on top-down and bottom-up saliency map modeling

机译:基于自上而下和自下而上的显着性图建模的语义无参考图像清晰度度量

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This work presents a semantic level no-reference image sharpness/blurriness metric under the guidance of top-down & bottom-up saliency map, which is learned based on eye-tracking data by SVM. Unlike existing metrics focused on measuring the blurriness in vision level, our metric more concerns about the image content and human's intention. We integrate visual features, center priority, and semantic meaning from tag information to learn a top-down & bottom-up saliency model based on the eye-tracking data. Empirical validations on standard dataset demonstrate the effectiveness of the proposed model and metric.
机译:这项工作在自上而下和自下而上的显着图的指导下,提出了一种语义级别的无参考图像清晰度/模糊度指标,该指标是通过SVM基于眼睛跟踪数据而学习的。与现有的衡量视觉水平模糊的指标不同,我们的指标更多地关​​注图像内容和人的意图。我们将从标签信息中整合视觉功能,中心优先级和语义含义,以基于眼动数据学习自上而下和自下而上的显着性模型。对标准数据集的经验验证证明了所提出的模型和度量的有效性。

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