Abstract

Falling is one of the causes of accidental death of elderly people over 65 years old in Taiwan. If the fall incidents are not detected in a timely manner, it could lead to serious injury or even death of those who fell. General fall detection approaches require the users to wear sensors, which could be cumbersome for the users to put on, and misalignment of sensors could lead to erroneous readings. In this paper, we propose using computer vision and applied machine-learning algorithms to detect fall without any sensors. We applied OpenPose real-time multi-person 2D pose estimation to detect movement of a subject using two datasets of 570 × 30 frames recorded in five different rooms from eight different viewing angles. The system retrieves the locations of 25 joint points of the human body and detects human movement through detecting the joint point location changes. The system is able to effectively identify the joints of the human body as well as filtering ambient environmental noise for an improved accuracy. The use of joint points instead of images improves the training time effectively as well as eliminating the effects of traditional image-based approaches such as blurriness, light, and shadows. This paper uses single-view images to reduce equipment costs. We experimented with time series recurrent neural network, long- and short-term memory, and gated recurrent unit models to learn the changes in human joint points in continuous time. The experimental results show that the fall detection accuracy of the proposed model is 98.2%, which outperforms the baseline 88.9% with 9.3% improvement.

Highlights

  • The world is facing the challenge of caring for an aging population

  • This paper proposes a fall detection framework based on OpenPose0 s long short-term memory (LSTM) and gated recurrent unit (GRU) model

  • We evaluated the performance under different Learning Rate (LR), which is the step size to find the best value

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Summary

Introduction

The world is facing the challenge of caring for an aging population. It is reported that 1 in 6 people in the world will be 65 years old (16%) or older by 2050, and this ratio increases to 1 in 4 for Europe and North America The problem is more prominent in Taiwan as the declining birth rate makes caring for a growing aging population even more challenging [1,2]. Fall has been identified as the number two cause of death from accidental or unintentional injuries with cognitive deficits [3,4,5]. Adults over of the age of 65 account for the largest proportion, and the cause of death of an estimate of 646,000 people worldwide each year is due to falls.

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