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Kernelized Subspace Ranking for Saliency Detection

机译:显着性检测的核子空间排序

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In this paper, we propose a novel saliency method that takes advantage of object-level proposals and region-based convolu-tional neural network (R-CNN) features. We follow the learning-to-rank methodology, and solve a ranking problem satisfying the constraint that positive samples have higher scores than negative ones. As the dimensionality of the deep features is high and the amount of training data is low, ranking in the primal space is suboptimal. A new kernelized subspace ranking model is proposed by jointly learning a Rank-SVM classifier and a subspace projection. The projection aims to measure the pairwise distances in a low-dimensional space. For an image, the ranking score of each proposal is assigned by the learnt ranker. The final saliency map is generated by a weighted fusion of the top-ranked candidates. Experimental results show that the proposed algorithm performs favorably against the state-of-the-art methods on four benchmark datasets.
机译:在本文中,我们提出了一种新颖的显着性方法,该方法利用了对象级提议和基于区域的卷积神经网络(R-CNN)功能。我们遵循从学习到排名的方法,并解决了满足正样本的得分高于负样本的约束的排名问题。由于深层特征的维数高且训练数据量低,因此在原始空间中的排名次优。通过联合学习Rank-SVM分类器和子空间投影,提出了一种新的核化子空间排序模型。该投影旨在测量低维空间中的成对距离。对于图像,由学习的排名者分配每个建议的排名分数。最终显着性图是通过对排名靠前的候选者进行加权融合而生成的。实验结果表明,该算法在四个基准数据集上的性能优于现有方法。

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