风景双层图像的客观相似度度量

Yuanhao Zhai, D. Neuhoff
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引用次数: 4

摘要

本文提出了一种新的风景双层图像的客观相似度度量方法,这些图像包含风景和肖像等自然场景。虽然百分比误差是两层图像最常用的相似性度量,但它并不总是与人类感知一致。基于人类对双层图像感知的假设,本文提出了新的指标,在相对于主观评分获得显着更高的Pearson和Spearman-rank相关系数的意义上优于百分比误差。新的指标包括调整百分比误差,双层梯度直方图和连接组件比较。主观评分来自一篇配套论文中描述的相似性评估。还提出了这些指标的组合,利用它们的互补性来获得更好的性能。
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Objective similarity metrics for scenic bilevel images
This paper proposes new objective similarity metrics for scenic bilevel images, which are images containing natural scenes such as landscapes and portraits. Though percentage error is the most commonly used similarity metric for bilevel images, it is not always consistent with human perception. Based on hypotheses about human perception of bilevel images, this paper proposes new metrics that outperform percentage error in the sense of attaining significantly higher Pearson and Spearman-rank correlation coefficients with respect to subjective ratings. The new metrics include Adjusted Percentage Error, Bilevel Gradient Histogram and Connected Components Comparison. The subjective ratings come from similarity evaluations described in a companion paper. Combinations of these metrics are also proposed, which exploit their complementarity to attain even better performance.
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