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On measuring low-level self and relative saliency in photographic images

机译:测量摄影图像中的低水平自我和相对显着性

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Measuring perceptual saliency of different regions in a scene is important for determining regions of interest (ROI). Color, texture and shape cues are good low-level features for detecting saliency. While self saliency refers to intrinsic attributes of a particular region, relative saliency is used to measure how salient a region is relative to its surrounding and thus needs to be defined within a spatial context. A few spatial context models are investigated in this study. In particular, we propose an auto-scaled, extended neighborhood-based context model to obtain reliable measurements of relative saliency features. Comparison of three context models has shown that the proposed model is capable of generating predicates more consistent with perceived saliency.
机译:测量场景中不同区域的感知显着性对于确定感兴趣区域(ROI)至关重要。颜色,纹理和形状提示是检测显着性的良好低级功能。自显性是指特定区域的固有属性,而相对显着性则用于衡量区域相对于其周围区域的显着性,因此需要在空间上下文中进行定义。在这项研究中研究了一些空间上下文模型。特别是,我们提出了一种自动缩放的,基于扩展邻域的上下文模型,以获得相对显着性特征的可靠度量。三种上下文模型的比较表明,所提出的模型能够生成与感知显着性更加一致的谓词。

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