论文标题
相机内监督人员重新识别
Intra-Camera Supervised Person Re-Identification
论文作者
论文摘要
现有人员重新识别(RE-ID)方法主要利用一组标记为训练数据的跨相机身份。这需要一个乏味的数据收集和注释过程,导致实际重新ID应用程序的可扩展性差。另一方面,无监督的重新ID方法不需要身份标签信息,但它们通常遭受较低和不足的模型性能。为了克服这些基本的局限性,我们提出了一个基于独立人均身份注释的想法的新人重新识别范式。这消除了最耗时和乏味的相机间身份标记过程,从而大大减少了人类注释工作的数量。因此,它产生了一个更可扩展和更可行的环境,我们称之为摄像机内部监督(ICS)人re-id,为此我们为此制定了多任务多任务多标签(Mate)深度学习方法。具体而言,Mate设计用于在人均多任务推理框架中自我发现的跨相机身份对应关系。广泛的实验证明了我们方法的成本效益优于三个大人物重新ID数据集的替代方法。例如,在拟议的ICS人士重新设置中,伴侣在Market-1501中产生88.7%的排名1得分,极大地表现不受监督的学习模型,并紧密接近常规的完全监督的学习竞争对手。
Existing person re-identification (re-id) methods mostly exploit a large set of cross-camera identity labelled training data. This requires a tedious data collection and annotation process, leading to poor scalability in practical re-id applications. On the other hand unsupervised re-id methods do not need identity label information, but they usually suffer from much inferior and insufficient model performance. To overcome these fundamental limitations, we propose a novel person re-identification paradigm based on an idea of independent per-camera identity annotation. This eliminates the most time-consuming and tedious inter-camera identity labelling process, significantly reducing the amount of human annotation efforts. Consequently, it gives rise to a more scalable and more feasible setting, which we call Intra-Camera Supervised (ICS) person re-id, for which we formulate a Multi-tAsk mulTi-labEl (MATE) deep learning method. Specifically, MATE is designed for self-discovering the cross-camera identity correspondence in a per-camera multi-task inference framework. Extensive experiments demonstrate the cost-effectiveness superiority of our method over the alternative approaches on three large person re-id datasets. For example, MATE yields 88.7% rank-1 score on Market-1501 in the proposed ICS person re-id setting, significantly outperforming unsupervised learning models and closely approaching conventional fully supervised learning competitors.