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Saliency Density Maximization for Object Detection and Localization

机译:用于对象检测和定位的显着性密度最大化

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Accurate localization of the salient object from an image is a difficult problem when the saliency map is noisy and incomplete. A fast approach to detect salient objects from images is proposed in this paper. To well balance the size of the object and the saliency it contains, the salient object detection is first formulated with the maximum saliency density on the saliency map. To obtain the global optimal solution, a branch-and-bound search algorithm is developed to speed up the detection process. Without any prior knowledge provided, the proposed method can effectively and efficiently detect salient objects from images. Extensive results on different types of saliency maps with a public dataset of five thousand images show the advantages of our approach as compared to some state-of-the-art methods.
机译:当显着图嘈杂且不完整时,从图像中准确定位显着对象是一个难题。提出了一种从图像中检测出显着物体的快速方法。为了很好地平衡对象的大小及其包含的显着性,首先在显着图上以最大显着密度制定显着对象检测。为了获得全局最优解,开发了一种分支定界搜索算法以加快检测过程。在没有提供任何先验知识的情况下,所提出的方法可以有效且有效地从图像中检测出显着物体。与五千张图像的公共数据集有关的不同类型的显着性图的大量结果表明,与某些最新方法相比,我们的方法具有优势。

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