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Hessian Regularized Distance Metric Learning for People Re-Identification

机译:Hessian正规化距离度量学习人员重新识别

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摘要

Distance metric learning is a vital issue in people re-identification. Although numerous algorithms have been proposed, it is still challenging especially when the labeled information is few. Manifold regularization can take advantage of labeled and unlabeled information and achieve promising performance in a unified metric learning framework. In this paper, we propose Hessian regularized distance metric learning for people re-identification. Particularly, the second-order Hessian energy prefers functions whose values vary linearly with respect to geodesic distance. Hence Hessian regularization allows us to preserve the geometry of the intrinsic data probability distribution better and then promotes the performance when there is few labeled information. We conduct extensive experiments on the popular VIPeR dataset, CUHK Campus dataset and CUHK03 dataset. The encouraging results suggest that manifold regularization can boost distance metric learning and the proposed Hessian regularized distance metric learning algorithm outperforms the traditional manifold regularized distance metric learning algorithms including graph Laplacian regularization algorithm.
机译:距离度量学习是人们重新识别的重要问题。虽然已经提出了许多算法,但是当标记信息很少时,尤其是当标记信息很少有挑战性。歧管正规化可以利用标记和未标记的信息,并在统一的公制学习框架中实现有希望的性能。在本文中,我们向人们重新识别提出了Hessian正规化距离度量学习。特别是,二阶Hessian能量喜欢相对于测地距线性变化的函数。因此,Hessian的正规允许我们更好地保留内在数据概率分布的几何形状,然后在很少有标记信息时促进性能。我们对流行的Viper数据集,CUHK园区数据集和CUHK03数据集进行了广泛的实验。令人鼓舞的结果表明,歧管正则化可以提高距离度量学习和提出的Hessian正规化距离度量学习算法优于传统的歧管正则测量度量学习算法,包括图拉普拉斯正则化算法。

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