Abstract

Age is an important human attribute that needs to be determined for various purposes, including security, health, human identification, and law enforcement. Hence, there is an increasing research interest in automatic age estimation using biometric traits such as face and gait. In recent years, gait analysis has received growing attention due to the pervasive nature of video surveillance. Gait signals that measure the manner of walking can be obtained using vision and sensor-based techniques. Individual gait patterns obtainable from videos, images, or sensors are shown unconsciously and are not easily obscured. Additionally, gait signals can be obtained unobtrusively with cameras placed at a long distance because gait does not require high-resolution images. However, the extraction of age-associated gait features is a challenging task due to various gait covariates. These covariates include clothing and view changes for vision-based gait; walking slope and footwear for sensor-based gait. This paper provides a survey of scientific literature on age estimation using gait features. We focus on the approaches to extracting age-associated gait features, namely, vision-based and sensor-based approaches, how they may be affected by the different covariates, and domain-specific applications. To make this work useful for as wide of an audience as possible, we also include discussions on key topics such as existing datasets, evaluation strategies, and open challenges that should be addressed in the future.

Highlights

  • Age is an important human attribute that needs to be determined for various purposes, including security, health, human identification, and law enforcement

  • We focus on the approaches to gait feature extraction, namely, visionbased, and sensor-based approaches, how they may be affected by the different covariates, and domain-specific applications

  • This paper focuses on healthy gait because the existing datasets used for research on gait age prediction only include gait features acquired from healthy individuals

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Summary

Introduction

Age is an important human attribute that needs to be determined for various purposes, including security, health, human identification, and law enforcement. Automatic age estimation involves automatically labeling a human with a precise age or age group based on physical attributes. There has been a lot of research on automatic age estimation using face images [3]–[5]. Face-based age estimation has found practical application in many domains, such as preventing cybercrime and age verification in the gaming industry. Innovative Technology (ITL) offers age verification as a service for the online gaming market, using face images obtained from selfies of online gamers [6]. Face-based age estimation systems may be unsuitable for live surveillance. Individual gait is unique and is considered a behavioural biometric trait. It comprises posture and observable periodic patterns shown during bipedal locomotive activities such as walking, running, and jogging. Individual gait patterns obtainable from videos, images or

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