The system for re-identifying persons is used to find and verify the persons crossing through different spots using various cameras. Much research has been done to re-identify the person by utilising features with deep-learned or hand-crafted information. Deep learning techniques segregate and analyse the features of their layers in various forms, and the output is complex feature vectors. This paper proposes a distinctive framework called Integrated Level Feature Pattern (ILFP) framework, which integrates local and global features. A new deep learning architecture named modified XceptionNet (m-XceptionNet) is also proposed in this work, which extracts the global features effectively with lesser complexity. The proposed framework gives better performance in Rank1 metric for Market1501 (96.15%), CUHK03 (82.29%) and the newly created NEC01 (96.66%) datasets than the existing works. The mean Average Precision (mAP) calculated using the proposed framework gives 92%, 85% and 98%, respectively, for the same datasets.
CITATION STYLE
Manimaran, V., Srinivasagan, K. G., Gokul, S., Jeena Jacob, I., & Baburenagarajan, S. (2021). A new framework for Person Re-identification: Integrated level feature pattern (ILEP). KSII Transactions on Internet and Information Systems, 15(12), 4456–4475. https://doi.org/10.3837/TIIS.2021.12.011
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