Person re-identification (Re-ID) has been a significant research topic in the past decade due to its real-world applications and research significance. While supervised person Re-ID methods achieve superior performance over unsupervised counterparts, they can not scale to large unlabelled datasets and new domains due to the prohibitive labelling cost. Therefore, unsupervised person Re-ID has drawn increasing attention for its potential to address the scalability issue in person Re-ID. Unsupervised person Re-ID is challenging primarily due to lacking identity labels to supervise person feature learning. The corresponding solutions are diverse and complex, with various merits and limitations. Therefore, comprehensive surveys on this topic are essential to summarise challenges and solutions to foster future research. Existing person Re-ID surveys have focused on supervised methods from classifications and applications but lack detailed discussion on how the person Re-ID solutions address the underlying challenges. This survey review recent works on unsupervised person Re-ID from the perspective of challenges and solutions. Specifically, we provide an in-depth analysis of highly influential methods considering the four significant challenges in unsupervised person Re-ID: 1) lacking ground-truth identity labels to supervise person feature learning; 2) learning discriminative person features with pseudo-supervision; 3) learning cross-camera invariant person feature, and 4) the domain shift between datasets. We summarise and analyse evaluation results and provide insights on the effectiveness of the solutions. Finally, we discuss open issues and suggest some promising future research directions.
翻译:过去十年来,由于实际应用和研究的重要性,重新定位(Re-ID)一直是一个重要的研究课题;虽然受监督的人重新识别方法在实际应用和研究上具有优于不受监督的对口单位的业绩,但由于标签成本高昂,不能将这种方法推广到大型无标签数据集和新领域;因此,无人监督的人重新识别(Re-ID)已引起人们日益关注其解决个人再识别(Re-ID)的可缩缩放问题的潜力;无人监督的人重新识别(Re-ID)主要由于缺乏身份标签来监督个人特征学习,因此具有挑战性;相应的解决方案是多种多样和复杂的,有各种优点和局限性;因此,对这一专题的全面调查对于总结挑战和解决办法以促进未来研究至关重要;现有的重新识别调查侧重于分类和应用的监督方法,但缺乏详细讨论个人再识别解决方案如何应对基本挑战。本次调查从挑战和解决方案的角度审查最近关于未受监督的人再定位(Re-ID)的工作,具体来说,我们深入分析了具有高度影响力的方法,考虑到未受监督的人再识别(Re-ID)的四项重大挑战,因此,全面调查对未来研究成果至关重要。