Fall detection among elderly persons using FallCNN and transfer learning models
K. Jishnuraj, M. Vergin Raja Sarobin, Jani Anbarasi, Graceline Jasmine, Rukmani Panjanathan

TL;DR
This paper introduces a new deep learning model, FallCNN, for detecting falls in elderly people using sensor data transformed into images, achieving high accuracy.
Contribution
The novel FallCNN architecture and the creation of the SimgFall dataset for fall detection in elderly persons.
Findings
FallCNN_4 achieved 98% accuracy in detecting fall-related activities.
The SimgFall dataset was effective in training CNN models for fall detection.
Architectural enhancements in FallCNN progressively improved classification accuracy.
Abstract
According to data provided by the World Health Organization (WHO), falls are one of the major reasons for unintentional deaths or injuries in older adults. Although many fall detection methods and algorithms exist, there is no efficient artificial intelligence strategy for fall detection. Various studies have stated that Fall Detection among Elderly Persons (FDEP) provides the possibility of developing an efficient and cost-effective way to tackle this problem. This study generated a signal-based image dataset, SimgFall, from the existing accelerometer or gyroscope-based sensor data of the SiSFall dataset for the early detection of falls to accelerate the medical assistance process. The SimgFall dataset was used to train and evaluate the FallCNN model, a novel deep Convolutional Neural Network (CNN) architecture comprising multiple CNN folds to effectively learn discriminative features…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Balance, Gait, and Falls Prevention · Human Pose and Action Recognition
