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Mystery behind similarity measures mse and SSIM

机译:Mystery背后测量MSE和SSIM

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Similarity or distance measures play an important role in various pattern recognition applications such as classification, clustering, change detection, information retrieval, energy minimization and optimization problems. We shall analyze theoretically the two most popular quality measures MSE and SSIM used in image processing by showing their origin, similarities/differences and advantages/drawbacks. Both measures depend on the same parameters: sample means, standard deviations and correlation coefficient. It is shown that SSIM originates from two Dice measures and thus inherit their main drawback - dependence on the absolute mean and standard deviation values. Similarly, MSE depends on the absolute standard deviation values. A new similarity measure Composite quality index based on Means, Standard deviations and Correlation coefficient (CMSC) is proposed inheriting advantages of the both measures but at the same time avoiding their drawbacks.
机译:相似性或距离测量在各种模式识别应用中起重要作用,例如分类,聚类,改变检测,信息检索,能量最小化和优化问题。 理论上,我们将通过展示其起源,相似性/差异和缺点来分析两个最受欢迎的质量措施MSE和SSSIM。 这两项措施都取决于相同的参数:样本装置,标准偏差和相关系数。 结果表明,SSIM源自两个骰子措施,从而继承了它们的主要缺点 - 依赖于绝对均值和标准偏差值。 类似地,MSE取决于绝对标准偏差值。 基于手段,标准偏差和相关系数(CMSC)的新的相似性测量复合质量指数是提出了两种测量的优点,但同时避免了它们的缺点。

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