Activity Detection in Indoor Environments Using Multiple 2D Lidars
Author:
Bouazizi Mondher1ORCID, Mora Alejandro Lorite2ORCID, Feghoul Kevin3, Ohtsuki Tomoaki1ORCID
Affiliation:
1. Faculty of Science and Technology, Keio University, Yokohama 223-8522, Japan 2. Graduate School of Science and Technology, Keio University, Yokohama 223-8522, Japan 3. UMR-S1172—Lille Neuroscience and Cognition, Centre Hospitalier Universitaire Lille, Inserm, University of Lille, F-59000 Lille, France
Abstract
In health monitoring systems for the elderly, a crucial aspect is unobtrusively and continuously monitoring their activities to detect potentially hazardous incidents such as sudden falls as soon as they occur. However, the effectiveness of current non-contact sensor-based activity detection systems is limited by obstacles present in the environment. To overcome this limitation, a straightforward yet highly efficient approach involves utilizing multiple sensors that collaborate seamlessly. This paper proposes a method that leverages 2D Light Detection and Ranging (Lidar) technology for activity detection. Multiple 2D Lidars are positioned in an indoor environment with varying obstacles such as furniture, working cohesively to create a comprehensive representation of ongoing activities. The data from these Lidars is concatenated and transformed into a more interpretable format, resembling images. A convolutional Long Short-Term Memory (LSTM) Neural Network is then used to process these generated images to classify the activities. The proposed approach achieves high accuracy in three tasks: activity detection, fall detection, and unsteady gait detection. Specifically, it attains accuracies of 96.10%, 99.13%, and 93.13% for these tasks, respectively. This demonstrates the efficacy and promise of the method in effectively monitoring and identifying potentially hazardous events for the elderly through 2D Lidars, which are non-intrusive sensing technology.
Funder
Grants-in-Aid for Scientific Research
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1. Fall Detection for Elderly People using LiDAR Sensor;2024 3rd International Conference on Artificial Intelligence For Internet of Things (AIIoT);2024-05-03 2. Low-Cost LIDAR-Based Monitoring System for Fall Detection;IEEE Access;2024
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