Entropy (Mar 2019)

Detecting Toe-Off Events Utilizing a Vision-Based Method

  • Yunqi Tang,
  • Zhuorong Li,
  • Huawei Tian,
  • Jianwei Ding,
  • Bingxian Lin

DOI
https://doi.org/10.3390/e21040329
Journal volume & issue
Vol. 21, no. 4
p. 329

Abstract

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Detecting gait events from video data accurately would be a challenging problem. However, most detection methods for gait events are currently based on wearable sensors, which need high cooperation from users and power consumption restriction. This study presents a novel algorithm for achieving accurate detection of toe-off events using a single 2D vision camera without the cooperation of participants. First, a set of novel feature, namely consecutive silhouettes difference maps (CSD-maps), is proposed to represent gait pattern. A CSD-map can encode several consecutive pedestrian silhouettes extracted from video frames into a map. And different number of consecutive pedestrian silhouettes will result in different types of CSD-maps, which can provide significant features for toe-off events detection. Convolutional neural network is then employed to reduce feature dimensions and classify toe-off events. Experiments on a public database demonstrate that the proposed method achieves good detection accuracy.

Keywords