Gait Recognition with Mask-based Regularization
Chuanfu Shen, Beibei Lin, Shunli Zhang, George Q. Huang, Shiqi Yu, Xin, Yu

TL;DR
This paper introduces ReverseMask, a novel mask-based regularization technique for gait recognition that improves model generalization and outperforms state-of-the-art methods on popular datasets.
Contribution
The paper proposes a new regularization method, ReverseMask, with an Inception-like block to enhance gait recognition models' discriminative ability and generalization.
Findings
ReverseMask improves baseline accuracy.
The Inception-like block outperforms existing methods.
State-of-the-art results on CASIA-B and OUMVLP datasets.
Abstract
Most gait recognition methods exploit spatial-temporal representations from static appearances and dynamic walking patterns. However, we observe that many part-based methods neglect representations at boundaries. In addition, the phenomenon of overfitting on training data is relatively common in gait recognition, which is perhaps due to insufficient data and low-informative gait silhouettes. Motivated by these observations, we propose a novel mask-based regularization method named ReverseMask. By injecting perturbation on the feature map, the proposed regularization method helps convolutional architecture learn the discriminative representations and enhances generalization. Also, we design an Inception-like ReverseMask Block, which has three branches composed of a global branch, a feature dropping branch, and a feature scaling branch. Precisely, the dropping branch can extract…
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Taxonomy
TopicsGait Recognition and Analysis · Diabetic Foot Ulcer Assessment and Management · Human Pose and Action Recognition
