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Remore Sensing Image Quality Assessment based on the Ratio of Spatial Feature Weighted Mutual Information

机译:基于空间特征加权互信息比的遥感影像质量评估

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摘要

Based on the characteristic that the information of remote sensing images varies with the level of image degradation, a new method of remote sensing image quality assessment based on the ratio of spatial feature weighted mutual information is proposed. Firstly, thereference remote sensing image and the distorted image are decomposed using the spatial steerable pyramid. Then the mutual information between the reference remote sensing image and the perceived image through the visual distortion channel is calculated on each scale. Meanwhile the mutualinformation between the degraded remote sensing image and the perceived image through the visual distortion channel is calculated on each scale. Then the weighting factors of the phase congruency and the location saliency are added to the two calculated mutual information. At last, the spatialfeature weighted mutual information of the reference remote sensing image and that of the degraded remote sensing image on each scale is summed up. The ratio of the two is calculated to obtain the global quality index, Remote Sensing Image Quality Assessment Index (RSIQA). Experimental resultsshow that the proposed method has high degree of subjective and objective consistency, and high evaluating effectiveness for the remote sensing images. In addition, it works better than most state-of-the-art IQA indices on the natural images databases.
机译:基于遥感图像信息随图像退化程度的变化而变化的特点,提出了一种基于空间特征加权互信息比的遥感图像质量评估方法。首先,利用空间可控金字塔对参考遥感图像和畸变图像进行分解。然后,在每个比例尺上计算参考遥感图像和通过视觉失真通道的感知图像之间的相互信息。同时,在每个尺度上计算退化的遥感图像和通过视觉失真通道的感知图像之间的互信息。然后,将相位一致性和位置显着性的加权因子添加到两个计算出的互信息中。最后,对参考遥感影像与退化遥感影像在各个尺度上的空间特征加权互信息进行了总结。计算两者之比以获得整体质量指数,即遥感影像质量评估指数(RSIQA)。实验结果表明,该方法具有较高的主观和客观一致性,对遥感图像具有较高的评价效果。此外,它比自然图像数据库上大多数最新的IQA索引更有效。

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