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Image content adaptive color breakup index for field sequential color displays using a dominant visual saliency method

机译:使用显性视觉显着性方法的场序彩色显示器的图像内容自适应分色指数

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摘要

An index that can predict the perceptual visibility of color breakup for varying image content is valuable in field sequential color displays, whereas the current indices are usually for fixed patterns. To solve this problem, an image database containing 25 diverse reference images and 125 test cases with various color breakup visibility was first established. Next, visual experiments using a 240-Hz liquid crystal display were performed to acquire the subjective color breakup scores of the test cases. A theorem based on visual saliency theory was proposed that the color breakup perception is mainly determined by the image regions with visual saliency values higher than a certain threshold, called the dominant visual saliency regions. A computational model based on this theorem was developed to obtain objective color breakup scores of the test cases from retinal images with and without color breakup. An analysis of the objective and subjective results revealed a Pearson linear correlation coefficient as high as 0.82, which matches the top-level image quality assessment algorithms. Finally, the proposed color breakup index was used to benchmark against several mainstream field sequential color algorithms to determine their performances in color breakup suppression.
机译:可以预测不同图像内容的颜色分解的感知可见性的索引在现场顺序彩色显示中很有价值,而当前索引通常用于固定模式。为了解决这个问题,首先建立了一个包含25个不同参考图像和125个具有不同颜色分解可见性的测试案例的图像数据库。接下来,进行了使用240 Hz液晶显示器的视觉实验,以获取测试案例的主观色彩分解得分。提出了一种基于视觉显着性理论的定理,即颜色分解感知主要由视觉显着性值高于特定阈值的图像区域(即显性视觉显着性区域)决定。建立了基于该定理的计算模型,以从具有和不具有颜色分解的视网膜图像中获得测试案例的客观颜色分解分数。对客观和主观结果的分析显示,皮尔森线性相关系数高达0.82,与顶级图像质量评估算法相匹配。最后,所提出的颜色分解指数被用于对几种主流现场顺序颜色算法进行基准测试,以确定它们在颜色分解抑制方面的性能。

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