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Smart city article details

Title Cross-Camera Tracking Model And Method Based On Multi-Feature Fusion
ID_Doc 16612
Authors Zhang P.; Wang S.; Zhang W.; Lei W.; Zhao X.; Jing Q.; Liu M.
Year 2023
Published Symmetry, 15, 12
DOI http://dx.doi.org/10.3390/sym15122145
Abstract Multi-camera video surveillance has been widely applied in crowd statistics and analysis in smart city scenarios. Most existing studies rely on appearance or motion features for cross-camera trajectory tracking, due to the changing asymmetric perspectives of multiple cameras and occlusions in crowded scenes, resulting in low accuracy and poor tracking performance. This paper proposes a tracking method that fuses appearance and motion features. An implicit social model is used to obtain motion features containing spatio-temporal information and social relations for trajectory prediction. The TransReID model is used to obtain appearance features for re-identification. Fused features are derived by integrating appearance features, spatio-temporal information and social relations. Based on the fused features, multi-round clustering is adopted to associate cross-camera objects. Exclusively employing robust pedestrian reidentification and trajectory prediction models, coupled with the real-time detector YOLOX, without any reliance on supplementary information, an IDF1 score of 70.64% is attained on typical datasets derived from AiCity2023. © 2023 by the authors.
Author Keywords appearance features; multi-camera tracking; spectral clustering; trajectory prediction


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