Abstract

Several pathologies can alter the way people walk, i.e., their gait. Gait analysis can be used to detect such alterations and, therefore, help diagnose certain pathologies or assess people’s health and recovery. Simple vision-based systems have a considerable potential in this area, as they allow the capture of gait in unconstrained environments, such as at home or in a clinic, while the required computations can be done remotely. State-of-the-art vision-based systems for gait analysis use deep learning strategies, thus requiring a large amount of data for training. However, to the best of our knowledge, the largest publicly available pathological gait dataset contains only 10 subjects, simulating five types of gait. This paper presents a new dataset, GAIT-IT, captured from 21 subjects simulating five types of gait, at two severity levels. The dataset is recorded in a professional studio, making the sequences free of background camouflage, variations in illumination and other visual artifacts. The dataset is used to train a novel automatic gait analysis system. Compared to the state-of-the-art, the proposed system achieves a drastic reduction in the number of trainable parameters, memory requirements and execution times, while the classification accuracy is on par with the state-of-the-art. Recognizing the importance of remote healthcare, the proposed automatic gait analysis system is integrated with a prototype web application. This prototype is presently hosted in a private network, and after further tests and development it will allow people to upload a video of them walking and execute a web service that classifies their gait. The web application has a user-friendly interface usable by healthcare professionals or by laypersons. The application also makes an association between the identified type of gait and potential gait pathologies that exhibit the identified characteristics.

Highlights

  • Gait can be defined as the act of locomotion, involving periodic body movements, such as sequences of loading and unloading of the limbs [1]

  • The proposed gait type classification system executes significantly faster, which is of great importance for considering the deployment of a diagnostics web service to operate over the Internet

  • This paper presents the prototype of a web application for remote gait diagnostic system

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Summary

Introduction

Gait can be defined as the act of locomotion, involving periodic body movements, such as sequences of loading and unloading of the limbs [1]. The study and analysis of gait in a medical context can contribute to the diagnosis and monitoring of pathologies that affect people’s gait [2] For this reason, the automatic classification of the type of gait is gathering interest, with many approaches already available in the literature [3,4]. The automatic classification of the type of gait is gathering interest, with many approaches already available in the literature [3,4] Of these approaches, vision-based solutions appear to be especially interesting since image sequences can be captured with relatively simple setups, e.g., with a single 2D camera [5]. A prototype based on this idea is proposed in this paper to enable the remote classification of people’s gait

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