Domain-Camera Adaptation for Unsupervised Person Re-Identification

Jiajie Tian, Zhu Teng, Yan Li, Rui Li, Yi Wu, Jianping Fan
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Abstract

Although supervised person re-identification (Re-ID) performance has been significantly improved in recent years, it is still a challenge for unsupervised person Re-Iddue to its absence of labels across disjoint camera views. On the other hand, Re-Idmodels trained on source domain usually offer poor performance when they are tested on target domain due to inter-domain bias e.g. different classes and intra-domain difference e.g camera variance. To overcome this problem, given a labeled source training domain and an unlabeled target training domain, we propose an unsupervised transfer method, Domain-Camera Adaptation model, to generate a pseudo target domain by bridging inter-domain bias and intra-domain difference. The idea is to fill the absence of labels in target domain by transferring labeled images of source domain to target domain across cameras. Then we propose a cross-domain classification loss to extract discriminative representation across domains. The intuition is to think of unsupervised learning as semi-supervised learning in target domain. We evaluate our deep model on Market-1501 and DukeMTMC-reID and the results show our model outperforms the state-of-art unsupervised Re-ID methods by large margins.
无监督人再识别的域相机自适应
尽管近年来有监督的人再识别(Re-ID)性能有了显著的提高,但由于无监督的人再识别在不相交的摄像机视图中缺乏标签,它仍然是一个挑战。另一方面,在源域上训练的re - idmodel在目标域上测试时,由于域间偏差(例如不同的类)和域内差异(例如相机方差),通常会提供较差的性能。为了克服这一问题,在给定标记的源训练域和未标记的目标训练域的情况下,我们提出了一种无监督转移方法——域相机自适应模型,通过桥接域间偏差和域内差异来生成伪目标域。其思想是通过跨摄像机将源域的标记图像传输到目标域,以填补目标域中标签的缺失。然后,我们提出了一个跨域分类损失来提取跨域的判别表示。直观地认为,无监督学习是目标域的半监督学习。我们在Market-1501和DukeMTMC-reID上评估了我们的深度模型,结果表明我们的模型在很大程度上优于最先进的无监督Re-ID方法。
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