4.6 Article

WildGait: Learning Gait Representations from Raw Surveillance Streams

Journal

SENSORS
Volume 21, Issue 24, Pages -

Publisher

MDPI
DOI: 10.3390/s21248387

Keywords

gait recognition; pose estimation; graph neural networks; self-supervised learning

Funding

  1. CRC Research Grant [2021]
  2. UEFISCDI in project CORNET [PN-III 1/2018]

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The study explores self-supervised pretraining for gait recognition, achieving excellent results by offering the largest dataset annotated in real-world scenarios and utilizing a self-supervised learning framework with a large number of automatically annotated skeleton sequences. By addressing the challenges of real-world scenarios without identifiable appearance-based information, the proposed method surpasses the current state-of-the-art pose-based gait recognition solutions.
Simple Summary In this work, we explore self-supervised pretraining for gait recognition. We gather the largest dataset to date of real-world gait sequences automatically annotated through pose tracking (UWG), which offers realistic confounding factors as opposed to current datasets. Results highlight the great performance in scenarios with low amounts of training data, and state-of-the-art accuracy on skeleton-based gait recognition when utilizing all available training data. The use of gait for person identification has important advantages such as being non-invasive, unobtrusive, not requiring cooperation and being less likely to be obscured compared to other biometrics. Existing methods for gait recognition require cooperative gait scenarios, in which a single person is walking multiple times in a straight line in front of a camera. We address the challenges of real-world scenarios in which camera feeds capture multiple people, who in most cases pass in front of the camera only once. We address privacy concerns by using only motion information of walking individuals, with no identifiable appearance-based information. As such, we propose a self-supervised learning framework, WildGait, which consists of pre-training a Spatio-Temporal Graph Convolutional Network on a large number of automatically annotated skeleton sequences obtained from raw, real-world surveillance streams to learn useful gait signatures. We collected and compiled the largest pretraining dataset to date of anonymized walking skeletons called Uncooperative Wild Gait, containing over 38k tracklets of anonymized walking 2D skeletons. We make the dataset available to the research community. Our results surpass the current state-of-the-art pose-based gait recognition solutions. Our proposed method is reliable in training gait recognition methods in unconstrained environments, especially in settings with scarce amounts of annotated data.

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