IEEE Access (Jan 2023)

Spatio-Visual Fusion-Based Person Re-Identification for Overhead Fisheye Images

  • Mertcan Cokbas,
  • Prakash Ishwar,
  • Janusz Konrad

DOI
https://doi.org/10.1109/ACCESS.2023.3274600
Journal volume & issue
Vol. 11
pp. 46095 – 46106

Abstract

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Person re-identification (PRID) has been thoroughly researched in typical surveillance scenarios where various scenes are monitored by side-mounted, rectilinear-lens cameras. To date, few methods have been proposed for fisheye cameras mounted overhead and their performance is lacking. In order to close this performance gap, we propose a multi-feature framework for fisheye PRID where we combine deep-learning, color-based and location-based features by means of novel feature fusion. We evaluate the performance of our framework for various feature combinations on FRIDA, a public fisheye PRID dataset. The results demonstrate that our multi-feature approach outperforms recent appearance-based deep-learning methods by almost 18% points and location-based methods by almost 3% points in matching accuracy. We also demonstrate the potential application of the proposed PRID framework to people counting in large, crowded indoor spaces.

Keywords