Abstract

Falls are seriously threatening the health of elderly. In order to reduce the potential danger caused by falls, this paper proposes a two-stage fall recognition algorithm based on human posture features. For preprocessing, we construct the new key features: deflection angles and spine ratio to describe the changes of human posture based on the human skeleton extracted by OpenPose. In the first stage, based on the variables: tendency symbol and steady symbol integrated by the scattered key features, we divide the human body state into three states: stable state, fluctuating state, and disordered state. By analyzing whether the body is in a stable state, the ADL (activities of daily living) actions with high stability can be preliminarily excluded. In the second stage: to further identify the confusing ADL actions and the fall actions, we innovatively design a time-continuous recognition algorithm. When human body is constantly in an unstable state, the human posture features: compare value , energy value , state score are proposed to form a feature vector, and support vector machine (SVM), K nearest neighbors (KNN), decision tree (DT), random forest (RF) are utilized for classification. Experiment results demonstrate that SVM with linear kernel function can distinguish falling actions best and our approach achieved a detection accuracy of 97.34%, precision of 98.50%, and the recall, F1 score are 97.33%, 97.91% respectively. Compared with previous state-of-art algorithms, our algorithm can achieve the highest recognition accuracy. It proves that our fall detection method is effective.

Highlights

  • Falls are the primary threat to the health and safety of the elderly [1]

  • As the fall features has a consistent andthe significant we proposed angles andup spine ratio as key to describe change oftendency, human posture during the the deflection fall behavior and set ratio as key features describe the change of human posture during the fall behavior and set up experiments to test to their performance

  • We have developed a two-stage fall recognition algorithm based on human posture

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Summary

Introduction

Global Report on Falls Prevention in Older Age [2], about 30% of the elderly over 60 years old experience at least one fall accident each year. Working Group (USPSTF) [3] indicated that in 2014, 28.7% of community-dwelling adults 65 years or older had been reported falling, resulting in 29 million falls and an estimated 33,000 deaths in 2015. According to the 2019 revised World Population Prospects: by 2050, the number of persons aged 80 years or over is expected to triple, from 143 million in 2019 to 426 million; the proportion of world’s population over 65 will increase from 9% in 2019 to 16%; one in four persons living in Europe or North America could be aged 65 or over

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