首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Salient object detection based on distribution-edge guidance and iterative Bayesian optimization
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Salient object detection based on distribution-edge guidance and iterative Bayesian optimization

机译:基于分配边导和迭代贝叶斯优化的突出对象检测

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摘要

Salient object detection has witnessed rapid progress, despite most existing methods still struggling in complex scenes, unfortunately. In this paper, we propose an efficient framework for salient object detection based on distribution-edge guidance and iterative Bayesian optimization. By considering color, spatial, and edge information, a discriminative metric is first constructed to measure the similarity between different regions. Next, boundary prior embedded with background scatter distribution is utilized to yield the boundary contrast map, and then a contour completeness map is derived through a wholly closed shape of the object. Finally, the above both maps are jointly integrated into an iterative Bayesian optimization framework to obtain the final saliency map. Results from an extensive number of experimentations demonstrate that the promising performance of the proposed algorithm against the state-of-the-art saliency detection methods in terms of different evaluation metrics on several benchmark datasets.
机译:突变对象检测目睹了快速进步,尽管最重要的方法仍然在复杂的场景中仍在努力,但不幸的是。在本文中,我们提出了一种基于分配边导和迭代贝叶斯优化的突出对象检测框架。通过考虑颜色,空间和边缘信息,首先构造鉴别的度量来测量不同区域之间的相似性。接下来,利用背景嵌入背景散射分布的边界来产生边界对比度图,然后通过对象的全部闭合形状导出轮廓完整性图。最后,上述两个地图都共同集成到迭代贝叶斯优化框架中,以获得最终显着图。来自大量实验的结果表明,在多个基准数据集中的不同评估度量方面,提出了算法对所提出的算法的优先表现。

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