Saliency Detection Using Region-Based Incremental Center-Surround Distance

Minwoo Park, Mrityunjay Kumar, A. Loui
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引用次数: 5

Abstract

A new method to detect salient region(s) in images is proposed in this paper. The proposed approach, which is inspired by object-based visual attention theory, segments the input image into coherent regions and measures region-based center-surround distance (RBCSD), which is a distance between region attributes such as color histograms found in each region and its surrounding region. Furthermore, segmented regions are merged such that the RBCSD of the merged region is greater than the individual RBCSD of the component regions through region-based incremental center surround distance (RBCSD+I) process. Due to this RBCSD+I process, merged regions may contain incoherent color regions, which improves the robustness of the proposed approach. The key advantages of the proposed algorithm are: (1) it provides a salient region with plausible object boundaries, (2) it is robust to color incoherency present in the salient region, and (3) it is computationally efficient. Extensive qualitative and quantitative evaluation of the proposed algorithm on widely used data sets and comparison with the existing saliency detection approaches clearly indicates the feasibility and efficiency of the proposed approach.
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基于区域增量中心-环绕距离的显著性检测
提出了一种检测图像显著区域的新方法。该方法受基于对象的视觉注意理论的启发,将输入图像分割成连贯的区域,并测量基于区域的中心-周围距离(RBCSD),即每个区域的颜色直方图等区域属性与其周围区域之间的距离。进一步,通过基于区域的增量中心环绕距离(RBCSD+I)过程,对分割后的区域进行合并,使合并后区域的RBCSD大于组成区域的单个RBCSD。由于这种RBCSD+I过程,合并的区域可能包含不一致的颜色区域,从而提高了该方法的鲁棒性。该算法的主要优点是:(1)提供具有合理目标边界的显著区域;(2)对显著区域中存在的颜色不相干具有鲁棒性;(3)计算效率高。在广泛使用的数据集上对所提出算法进行了广泛的定性和定量评估,并与现有的显著性检测方法进行了比较,清楚地表明所提出方法的可行性和有效性。
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