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Hierarchical Saliency: A New Salient Target Detection Framework

机译:分层显着性:新的显着目标检测框架

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摘要

Simulating the shift character of visual attention, we propose a novel concept of hierarchical saliency and develop a detection framework. First, a given image is over-segmented into coarse and fine layers which respond to two scale superpixels. Then, we estimate the saliency maps from coarse to fine. In the coarse layer, we present a new self-adaptive algorithm to construct the superpixels graph, employing the manifold ranking approach to optimize it. In the fine layer, sparse reconstruction is used to obtain the saliency regions. At last, we propose a Restricted Voting Strategy (RVS) to fuse two layer saliency maps into one hierarchical saliency map. Different from the prior methods, the targets of the final map are labeled layer-wise. The final result can be directly applied to more high-level computer vision tasks in various situations. For the requirement of hierarchical saliency evaluation, we construct the CAS-HAS dataset. We exhaustively evaluate the framework on the proposed data set and three benchmark data sets. The experiment performance is comparable with the sate-of-the-art approaches.
机译:为了模拟视觉注意力的转移特征,我们提出了层次显着性的新概念并开发了检测框架。首先,给定的图像被过度分割成粗糙和精细的层,它们响应两个比例的超像素。然后,我们估计显着性地图从粗糙到精细。在粗糙层中,我们提出了一种新的自适应算法来构造超像素图,并采用流形排序方法对其进行优化。在精细层中,稀疏重建用于获得显着区域。最后,我们提出了一种限制性投票策略(RVS),将两层显着性图融合为一个层次显着性图。与现有方法不同,最终贴图的目标是逐层标记的。最终结果可以直接应用于各种情况下的更高级的计算机视觉任务。对于分层显着性评估的要求,我们构建了CAS-HAS数据集。我们对提议的数据集和三个基准数据集进行了详尽的评估。实验性能可与最新技术相媲美。

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