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Visual saliency detection using iterative outlier cluster elimination

机译:使用迭代异常集群消除的视觉显着性检测

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摘要

In saliency region detection, a contrast feature has been widely employed as a standard feature; however, many technical challenges remain when there is high variance between the pixel-inside properties of objects. Recently, an effective hard segmentation (HS)-wise saliency model has been proposed to overcome the drawbacks of using a contrast feature. Although the HS model is quite solid, its heuristic optimization and computationally intensive processes still present limitations. Based on the observations, we propose an iterative outlier cluster elimination for the HS wise saliency computation. The proposed model can be decomposed into the following four phases: regional feature extraction, region clustering, saliency computation, and iterative processing. The motivation of the proposed model is that only good-quality saliency maps generated from the reliable clusters are utilized to optimize the final saliency map by eliminating the outlier clusters. Experimental results demonstrate that the proposed model outperforms state-of-the-art models on various benchmark datasets that comprise images, including with single-, multiple-, and complex-objects. The proposed model is also less computationally complex than existing HS models with minimum performance loss.
机译:在显着区域检测中,对比度特征已被广泛采用标准特征;然而,当物体的像素内部属性之间存在高方差时,仍然存在许多技术挑战。最近,已经提出了一种有效的硬分段(HS)化脓模型来克服使用对比度特征的缺点。虽然HS模型非常坚固,但其启发式优化和计算密集型过程仍然存在限制。根据观察结果,我们提出了对HS WISE显着性计算的迭代异常集群消除。所提出的模型可以分解为以下四个阶段:区域特征提取,区域聚类,显着性计算和迭代处理。所提出的模型的动机是,仅利用从可靠集群产生的高质量显着性图来通过消除异常簇来优化最终显着性图。实验结果表明,所提出的模型在包括图像的各种基准数据集上优于最先进的模型,包括单个,多个和复杂对象。所提出的模型也比具有最小性能损耗的HS模型更少计算地复杂。

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