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Hierarchical Co-salient Object Detection via Color Names

机译:通过颜色名称进行分层共凸对象检测

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In this paper, a bottom-up and data-driven model is introduced to detect co-salient objects from an image pair. Inspired by the biologically-plausible across-scale architecture, we propose a multi-layer fusion algorithm to extract conspicuous parts from an input image. At each layer, two existing saliency models are first combined to obtain an initial saliency map, which simultaneously codes for the color names based surrounded cue and the background measure based boundary connectivity. Then a global color cue with respect to color names is invoked to refine and fuse single-layer saliency results. Finally, we exploit the color names based distance metric to measure the color consistency between a pair of saliency maps and remove those non-co-salient regions. The proposed model can generate both saliency and co-saliency maps. Experimental results show that our model performs favorably against 14 saliency models and 6 co-saliency models on the Image Pair data set.
机译:在本文中,引入了一种自下而上且由数据驱动的模型,用于从图像对中检测共凸出的对象。受生物学上可行的跨尺度体系结构的启发,我们提出了一种多层融合算法来从输入图像中提取明显的部分。在每一层,首先将两个现有的显着性模型进行组合以获得初始显着性图,该图同时对基于包围信号的颜色名称和基于背景度量的边界连通性进行编码。然后,调用有关颜色名称的全局颜色提示,以完善和融合单层显着性结果。最后,我们利用基于颜色名称的距离度量来测量一对显着图之间的颜色一致性,并删除那些非共凸区域。提出的模型可以生成显着性地图和共同显着性地图。实验结果表明,我们的模型在Image Pair数据集上相对于14个显着模型和6个共同显着模型表现良好。

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