Center-surround divergence of feature statistics for salient object detection

D. A. Klein, S. Frintrop
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引用次数: 362

Abstract

In this paper, we introduce a new method to detect salient objects in images. The approach is based on the standard structure of cognitive visual attention models, but realizes the computation of saliency in each feature dimension in an information-theoretic way. The method allows a consistent computation of all feature channels and a well-founded fusion of these channels to a saliency map. Our framework enables the computation of arbitrarily scaled features and local center-surround pairs in an efficient manner. We show that our approach outperforms eight state-of-the-art saliency detectors in terms of precision and recall.
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显著目标检测的中心-环绕发散特征统计
本文介绍了一种检测图像中显著目标的新方法。该方法以认知视觉注意模型的标准结构为基础,以信息论的方式实现了各特征维度的显著性计算。该方法允许对所有特征通道进行一致的计算,并将这些通道充分融合到显著性图中。我们的框架能够以有效的方式计算任意缩放的特征和局部中心-环绕对。我们表明,我们的方法优于八个最先进的显著性检测器在精度和召回。
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