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Semantic Prior Analysis for Salient Object Detection

机译:显着目标检测的语义先验分析

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摘要

Salient object detection aims to detect the main objects in the given image. In this paper, we propose an approach that integrates semantic priors into the salient object detection process. The method first obtains an explicit saliency map that is refined by the explicit semantic priors learned from data. Then an implicit saliency map is constructed using a trained model that maps the implicit semantic priors embedded into superpixel features with the saliency values. Next, the fusion saliency map is computed by adaptively fusing both the explicit and implicit semantic maps. The final saliency map is eventually computed via the post-processing refinement step. Experimental results have demonstrated the effectiveness of the proposed method; particularly, it achieves competitive performance with the state-ofthe-art baselines on three challenging datasets, namely, ECSSD, HKUIS, and iCoSeg.
机译:显着物体检测旨在检测给定图像中的主要物体。在本文中,我们提出了一种将语义先验集成到显着对象检测过程中的方法。该方法首先获得一个显着的显着性图,该显着性图通过从数据中学习到的显式语义先验来完善。然后,使用经过训练的模型构建隐式显着性图,该模型将具有显着性值的嵌入到超像素特征中的隐式语义先验映射。接下来,通过显式和隐式语义图的自适应融合来计算融合显着性图。最终显着性图最终是通过后处理细化步骤来计算的。实验结果证明了该方法的有效性。特别是,它在三个具有挑战性的数据集(即ECSSD,HKUIS和iCoSeg)上以最新的基准实现了竞争性能。

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