4.8 Article

2-D LIDAR-Based Approach for Activity Identification and Fall Detection

期刊

IEEE INTERNET OF THINGS JOURNAL
卷 9, 期 13, 页码 10872-10890

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2021.3127186

关键词

Sensors; Sensor arrays; Laser radar; Task analysis; Senior citizens; Monitoring; Feature extraction; Activity detection; deep learning (DL); fall detection; light detection and ranging (LIDAR); machine learning

资金

  1. KGRI/IoT Healthcare Research Consortium

向作者/读者索取更多资源

In this article, a novel approach using 2-D LIDAR and deep learning is proposed for activity detection in the monitoring of elderly people living alone. The approach processes the collected data using 2-D LIDAR and transforms them into time-series and image representations. LSTM networks are used for person identification and activity recognition, while a CNN network is fine-tuned for fall detection. The experimental results show high accuracy in multiclass activity detection, fall detection, person identification, and unsteady walk detection.
Activity detection is a key task in the monitoring of elderly people living alone. This is because it helps locate them and identify any accident that might occur to them. In this article, we propose a novel approach that uses 2-D light detection and ranging (LIDAR) and deep learning to perform activity detection. In a first step, our approach processes and interpolates the data collected using the 2-D LIDAR following an algorithm we propose to locate the person and identify the useful data points. In the next steps, the data are transformed into two types of representations: 1) a time-series type and 2) an image type. The time-series data are used to train different long short-term memory (LSTM) networks to identify the person and to recognize his/her activity, while the image type is used to fine-tune a convolutional neural network (CNN) for fall detection. Throughout our experiments, we show that our approach allows for the identification of people from their gait, and the detection of unsteady gait or unstable walk (i.e., when the person is about to fall or feeling dizzy) as well as the detection of up to four activities: 1) walking; 2) standing; 3) sitting; and 4) falling. The results obtained from our experiment show that the proposed method reaches an accuracy equal to 94.1% for multiclass activity detection, 98.6% for fall detection, 93.2% for person identification (for three different people), and 92.5% for unsteady walk detection.

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