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A no-reference infrared image sharpness assessment based on singular value decomposition

机译:基于奇异值分解的无参考红外图像清晰度评估

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Recent image sharpness metrics are usually proposed for visible light image and infrared image sharpness assessment is seldom discussed. As for infrared images, we usually concern more about the salient regions. Therefore, in this paper, a novel no-reference algorithm based on saliency detection (SD) and singular value decomposition (SVD) is proposed to assess infrared image sharpness. Gaussian blur is first used to build a reference image. Then salient regions are detected by combining the local mean and variation. Next, singular value decomposition-based metric is proposed to evaluate the variation between original image and reference image. The image quality score is finally obtained by using the five-parameter logistic regression. Experimental results show that the proposed method correlates well with the subjective quality evaluations of infrared images and is highly competitive with state-of-the-art visible light image sharpness metrics.
机译:通常提出用于可见光图像的最新图像清晰度度量,并且很少讨论红外图像清晰度的评估。对于红外图像,我们通常更关注显着区域。因此,本文提出了一种基于显着性检测(SD)和奇异值分解(SVD)的新型无参考算法来评估红外图像的清晰度。高斯模糊首先用于构建参考图像。然后,通过结合局部均值和方差来检测显着区域。接下来,提出了基于奇异值分解的度量,以评估原始图像和参考图像之间的变化。最终,通过使用五参数逻辑回归获得图像质量得分。实验结果表明,该方法与红外图像的主观质量评估具有很好的相关性,并且与最新的可见光图像清晰度指标具有很高的竞争力。

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