HorGait: A Hybrid Model for Accurate Gait Recognition in LiDAR Point Cloud Planar Projections
Gait recognition is a remote biometric technology that utilizes the dynamic characteristics of human movement to identify individuals even under various extreme lighting conditions. Due to the limitation in spatial perception capability inherent in 2D gait representations, LiDAR can directly capture...
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Zusammenfassung: | Gait recognition is a remote biometric technology that utilizes the dynamic
characteristics of human movement to identify individuals even under various
extreme lighting conditions. Due to the limitation in spatial perception
capability inherent in 2D gait representations, LiDAR can directly capture 3D
gait features and represent them as point clouds, reducing environmental and
lighting interference in recognition while significantly advancing privacy
protection. For complex 3D representations, shallow networks fail to achieve
accurate recognition, making vision Transformers the foremost prevalent method.
However, the prevalence of dumb patches has limited the widespread use of
Transformer architecture in gait recognition. This paper proposes a method
named HorGait, which utilizes a hybrid model with a Transformer architecture
for gait recognition on the planar projection of 3D point clouds from LiDAR.
Specifically, it employs a hybrid model structure called LHM Block to achieve
input adaptation, long-range, and high-order spatial interaction of the
Transformer architecture. Additionally, it uses large convolutional kernel CNNs
to segment the input representation, replacing attention windows to reduce dumb
patches. We conducted extensive experiments, and the results show that HorGait
achieves state-of-the-art performance among Transformer architecture methods on
the SUSTech1K dataset, verifying that the hybrid model can complete the full
Transformer process and perform better in point cloud planar projection. The
outstanding performance of HorGait offers new insights for the future
application of the Transformer architecture in gait recognition. |
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DOI: | 10.48550/arxiv.2410.08454 |