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A comprehensive review of pedestrian re-identification based on deep learning

Zhaojie Sun, Xuan Wang, Youlei Zhang, Yongchao Song, Jindong Zhao, Jindong Xu, Weiqing Yan, Cuicui Lv

2023Complex & Intelligent Systems15 citationsDOIOpen Access PDF

Abstract

Abstract Pedestrian re-identification (re-ID) has gained considerable attention as a challenging research area in smart cities. Its applications span diverse domains, including intelligent transportation, public security, new retail, and the integration of face re-ID technology. The rapid progress in deep learning techniques, coupled with the availability of large-scale pedestrian datasets, has led to remarkable advancements in pedestrian re-ID. In this paper, we begin the study by summarising the key datasets and standard evaluation methodologies for pedestrian re-ID. Second, we look into pedestrian re-ID methods that are based on object re-ID, loss functions, research directions, weakly supervised classification, and various application scenarios. Moreover, we assess and display different re-ID approaches from deep learning perspectives. Finally, several challenges and future directions for pedestrian re-ID development are discussed. By providing a holistic perspective on this topic, this research serves as a valuable resource for researchers and practitioners, enabling further advancements in pedestrian re-ID within smart city environments.

Topics & Concepts

PedestrianIdentification (biology)Computer scienceData scienceResource (disambiguation)Pedestrian detectionArtificial intelligenceKey (lock)Deep learningComputer securityTransport engineeringEngineeringComputer networkBotanyBiologyVideo Surveillance and Tracking MethodsFire Detection and Safety SystemsTraffic Prediction and Management Techniques