Occluded person re-identification (Re-ID) aims at addressing the occlusion problem when retrieving the person of interest across multiple cameras. With the promotion of deep learning technology and the increasing demand for intelligent video surveillance, the frequent occlusion in real-world applications has made occluded person Re-ID draw considerable interest from researchers. A large number of occluded person Re-ID methods have been proposed while there are few surveys that focus on occlusion. To fill this gap and help boost future research, this paper provides a systematic survey of occluded person Re-ID. Through an in-depth analysis of the occlusion in person Re-ID, most existing methods are found to only consider part of the problems brought by occlusion. Therefore, we review occlusion-related person Re-ID methods from the perspective of issues and solutions. We summarize four issues caused by occlusion in person Re-ID, i.e., position misalignment, scale misalignment, noisy information, and missing information. The occlusion-related methods addressing different issues are then categorized and introduced accordingly. After that, we summarize and compare the performance of recent occluded person Re-ID methods on four popular datasets: Partial-ReID, Partial-iLIDS, Occluded-ReID, and Occluded-DukeMTMC. Finally, we provide insights on promising future research directions.
翻译:隐蔽者重新身份识别(Re-ID)的目的是在通过多个照相机重新找回有关的人时解决隐蔽问题。随着深入学习技术的推广和对智能视频监视的日益需求,经常被隐蔽者重新身份识别(Re-ID)引起了研究人员的极大兴趣。提出了大量隐蔽者重新身份识别(Re-ID)方法,同时很少进行侧重于隐蔽的调查。为填补这一空白和帮助促进未来的研究,本文件对隐蔽者重新身份识别(Re-ID)进行了系统调查。通过深入分析人重新身份的隐蔽(Re-ID),发现大多数现有方法仅考虑隐蔽引起的部分问题。因此,我们从问题和解决方案的角度审查隐蔽者重新身份识别(Recloclocel ReID)方法。我们总结了因人员重新隐蔽(即定位、定位不精确性、比例错位、噪音信息以及缺失信息。在对人进行深入隐蔽性识别(O-DI)后,对未来研究的准确性(O-ID)方法进行了分级分析,然后我们进行了分级分析。