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Computing contrast ratio in images using local content information

机译:使用本地内容信息计算图像中的对比度

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It is well know that a measure of contrast in images is not yet fully defined. The conventional measures of contrast consist of global computations and therefore they have a poor performance. At the same time image quality assessment is often based on quantifying the visibility between a structure of interest or foreground and its surrounding background, i.e., the contrast ratio. Then, a high quality image is the one in which structures of interest are well distinguishable from the background. Therefore, the computation of contrast ratio is important in automatic image quality assessment and it should be computed locally taking into account the local distribution of pixel values. We estimate the contrast ratio by using Weber contrast in local image patches. The main contribution of this work lies in the characterization of local distribution of pixel values which is used for computing the contrast ratio. Here, local image patches are characterized by bimodal histograms representing a set of pixels which are likely to be inside the foreground and another set likely to be in the background. The local contrast ratio is estimated using the ratio between mean intensity values of each mode of the histogram. Our experimental results over two public image databases show that the proposed method is able to accurately predict changes of quality due to contrast decrements (Pearson correlations higher than 90%).
机译:很好地知道图像中的对比度尚未完全定义。常规对比度的措施包括全局计算,因此它们具有较差的性能。同时,图像质量评估通常基于量化感兴趣的结构与前景结构与周围背景的可见性,即对比度。然后,高质量的图像是感兴趣的结构从背景中区分的结构。因此,对比度的计算在自动图像质量评估中是重要的,并且应该在本地考虑本地分布像素值的本地分布。我们通过在本地图像补丁中使用韦伯对比度来估计对比度。这项工作的主要贡献在于将用于计算对比度的像素值的局部分布的表征。这里,本地图像补丁的特征在于表示可能位于前景的一组像素的双峰直方图,并且另一集合可能在背景中。使用直方图的每个模式的平均强度值之间的比率估计局部对比度。我们对两个公共图像数据库的实验结果表明,由于对比度递减(高于90%的Pearson相关性,所提出的方法能够准确地预测质量的变化。

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