CVVNet: A Cross-Vertical-View Network for Gait Recognition
Xiangru Li, Wei Song, Yingda Huang, Wei Meng, Le Chang, Hongyang Li

TL;DR
CVVNet is a novel neural network architecture designed to improve gait recognition accuracy across different vertical surveillance angles by effectively integrating multi-frequency features and adaptively fusing them.
Contribution
The paper introduces CVVNet, featuring a frequency aggregation architecture with HLFE, DGA, and MSAGA modules, specifically addressing cross-vertical-view gait recognition challenges.
Findings
Achieves 8.6% accuracy improvement on DroneGait
Achieves 2% accuracy improvement on Gait3D
Outperforms existing methods in cross-vertical-view scenarios
Abstract
Gait recognition enables contact-free, long-range person identification that is robust to clothing variations and non-cooperative scenarios. While existing methods perform well in controlled indoor environments, they struggle with cross-vertical view scenarios, where surveillance angles vary significantly in elevation. Our experiments show up to 60\% accuracy degradation in low-to-high vertical view settings due to severe deformations and self-occlusions of key anatomical features. Current CNN and self-attention-based methods fail to effectively handle these challenges, due to their reliance on single-scale convolutions or simplistic attention mechanisms that lack effective multi-frequency feature integration. To tackle this challenge, we propose CVVNet (Cross-Vertical-View Network), a frequency aggregation architecture specifically designed for robust cross-vertical-view gait…
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Taxonomy
TopicsGait Recognition and Analysis · Hand Gesture Recognition Systems · Video Surveillance and Tracking Methods
MethodsSoftmax · Attention Is All You Need
