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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Unsupervised Joint Subspace and Dictionary Learning for Enhanced Cross-Domain Person Re-Identification
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Unsupervised Joint Subspace and Dictionary Learning for Enhanced Cross-Domain Person Re-Identification

机译:无监督联合子空间和字典学习,用于增强跨域人员重新识别

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Person re-identification (Re-ID) has drawn increasing attention from both academia and industry due to its great potentials in surveillance applications. Most existing research efforts have attempted to tackle cross-view variation in single-domain person Re-ID. However, there is still a lack of effective approaches to cross-domain person Re-ID problem. In this paper, an unsupervised joint subspace and dictionary learning (UJSDL) framework is proposed to address the cross-domain person Re-ID problem, where both cross-view (i.e., across different cameras in the same network of cameras) and cross-domain (i.e., across different network of cameras) variation are jointly addressed. In particular, to reduce the impact of cross-view distribution variation, the graph Laplacian approach is used to project the images from different camera views in each domain into a shared subspace. To alleviate the impact of cross-domain distribution variation, a shared dictionary is learned from all the projection subspaces such that the discriminative information from both the labeled source datasets and the unlabeled target dataset are well encoded. To efficiently solve the joint subspace and dictionary learning task, an alternating optimization algorithm is presented. We used multiple different feature sets and conducted experiments on multiple benchmark datasets as the target domain. The results demonstrate that UJSDL outperforms the state-of-the-art approaches.
机译:人员重新识别(Re-ID)由于其在监视应用中的巨大潜力,已经引起了学术界和行业的越来越多的关注。现有的大多数研究工作都试图解决单域人Re-ID中的跨视图变异问题。但是,仍然缺乏有效的方法来解决跨域人员Re-ID问题。本文提出了一种无监督的联合子空间和字典学习(UJSDL)框架,以解决跨域人员Re-ID问题,即跨视图(即,在同一摄像机网络中跨不同摄像机)和领域(即,跨越不同的摄像机网络)联合解决了变化。特别地,为了减少跨视图分布变化的影响,使用图拉普拉斯图法将来自每个域中不同相机视图的图像投影到共享子空间中。为了减轻跨域分布变化的影响,从所有投影子空间中学习共享字典,以便对来自标记源数据集和未标记目标数据集的判别信息进行良好编码。为了有效地解决联合子空间和字典学习任务,提出了一种交替优化算法。我们使用了多个不同的功能集,并以多个基准数据集为目标域进行了实验。结果表明,UJSDL优于最新方法。

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