CVAIMay 23, 2023

Human Body Pose Estimation for Gait Identification: A Comprehensive Survey of Datasets and Models

arXiv:2305.13765v156 citations
Originality Synthesis-oriented
AI Analysis

It addresses the lack of comprehensive reviews on skeleton-based gait identification for security and research communities, but is incremental as it synthesizes existing work.

This paper provides a comprehensive survey of skeleton-based approaches for gait identification, covering datasets, models, and evaluation metrics, and highlights the positive impact of deep learning techniques in this domain.

Person identification is a problem that has received substantial attention, particularly in security domains. Gait recognition is one of the most convenient approaches enabling person identification at a distance without the need of high-quality images. There are several review studies addressing person identification such as the utilization of facial images, silhouette images, and wearable sensor. Despite skeleton-based person identification gaining popularity while overcoming the challenges of traditional approaches, existing survey studies lack the comprehensive review of skeleton-based approaches to gait identification. We present a detailed review of the human pose estimation and gait analysis that make the skeleton-based approaches possible. The study covers various types of related datasets, tools, methodologies, and evaluation metrics with associated challenges, limitations, and application domains. Detailed comparisons are presented for each of these aspects with recommendations for potential research and alternatives. A common trend throughout this paper is the positive impact that deep learning techniques are beginning to have on topics such as human pose estimation and gait identification. The survey outcomes might be useful for the related research community and other stakeholders in terms of performance analysis of existing methodologies, potential research gaps, application domains, and possible contributions in the future.

Foundations

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