Gait Recognition with Temporal Kolmogorov-Arnold Networks
Mohammed Asad, Dinesh Kumar Vishwakarma

TL;DR
This paper introduces a novel Temporal Kolmogorov-Arnold Network (TKAN) for gait recognition, enhancing robustness and efficiency in modeling both local gait cycles and long-term motion trends.
Contribution
The paper proposes a new TKAN model that replaces fixed weights with learnable functions and uses a two-level memory mechanism for improved gait recognition.
Findings
Achieves strong recognition performance on CASIA-B dataset.
Effectively models both cycle-level dynamics and long-term motion.
Maintains a compact backbone with efficient temporal modeling.
Abstract
Gait recognition is a biometric modality that identifies individuals from their characteristic walking patterns. Unlike conventional biometric traits, gait can be acquired at a distance and without active subject cooperation, making it suitable for surveillance and public safety applications. Nevertheless, silhouette-based temporal models remain sensitive to long sequences, observation noise, and appearance-related covariates. Recurrent architectures often struggle to preserve information from earlier frames and are inherently sequential to optimize, whereas transformer-based models typically require greater computational resources and larger training sets and may be sensitive to irregular sequence lengths and noisy inputs. These limitations reduce robustness under clothing variation, carrying conditions, and view changes, while also hindering the joint modeling of local gait cycles and…
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