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Human Identification at a Distance: Challenges, Methods and Results on the Competition HID 2025

Jingzhe Ma
Meng Zhang
Jianlong Yu
Kun Liu
Zunxiao Xu
Xue Cheng
Junjie Zhou
Yanfei Wang
Jiahang Li
Zepeng Wang
Kazuki Osamura
Rujie Liu
Narishige Abe
Jingjie Wang
Shunli Zhang
Haojun Xie
Jiajun Wu
Weiming Wu
Wenxiong Kang
Qingshuo Gao
Jiaming Xiong
Xianye Ben
Lei Chen
Lichen Song
Junjian Cui
Haijun Xiong
Junhao Lu
Bin Feng
Mengyuan Liu
Ji Zhou
Baoquan Zhao
Ke Xu
Yongzhen Huang
Liang Wang
Manuel J Marin-Jimenez
Md Atiqur Rahman Ahad
Shiqi Yu
Main:8 Pages
8 Figures
Bibliography:1 Pages
2 Tables
Abstract

Human identification at a distance (HID) is challenging because traditional biometric modalities such as face and fingerprints are often difficult to acquire in real-world scenarios. Gait recognition provides a practical alternative, as it can be captured reliably at a distance. To promote progress in gait recognition and provide a fair evaluation platform, the International Competition on Human Identification at a Distance (HID) has been organized annually since 2020. Since 2023, the competition has adopted the challenging SUSTech-Competition dataset, which features substantial variations in clothing, carried objects, and view angles. No dedicated training data are provided, requiring participants to train their models using external datasets. Each year, the competition applies a different random seed to generate distinct evaluation splits, which reduces the risk of overfitting and supports a fair assessment of cross-domain generalization. While HID 2023 and HID 2024 already used this dataset, HID 2025 explicitly examined whether algorithmic advances could surpass the accuracy limits observed previously. Despite the heightened difficulty, participants achieved further improvements, and the best-performing method reached 94.2% accuracy, setting a new benchmark on this dataset. We also analyze key technical trends and outline potential directions for future research in gait recognition.

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