Abstract

Falls are a major health concern and result in high morbidity and mortality rates in older adults with high costs to health services. Automatic fall classification and detection systems can provide early detection of falls and timely medical aid. This paper proposes a novel Random Vector Functional Link (RVFL) stacking ensemble classifier with fractal features for classification of falls. The fractal Hurst exponent is used as a representative of fractal dimensionality for capturing irregularity of accelerometer signals for falls and other activities of daily life. The generalised Hurst exponents along with wavelet transform coefficients are leveraged as input feature space for a novel stacking ensemble of RVFLs composed with an RVFL neural network meta-learner. Novel fast selection criteria are presented for base classifiers founded on the proposed diversity indicator, obtained from the overall performance values during the training phase. The proposed features and the stacking ensemble provide the highest classification accuracy of 95.71% compared with other machine learning techniques, such as Random Forest (RF), Artificial Neural Network (ANN) and Support Vector Machine. The proposed ensemble classifier is 2.3× faster than a single Decision Tree and achieves the highest speedup in training time of 317.7× and 198.56× compared with a highly optimised ANN and RF ensemble, respectively. The significant improvements in training times of the order of 100× and high accuracy demonstrate that the proposed RVFL ensemble is a prime candidate for real-time, embedded wearable device–based fall detection systems.

Highlights

  • Falls are a major health hazard for older adults and result in high morality and injury rates [55]

  • The Random Vector Functional Link (RVFL) neural networks are first trained with a different number of neurons and activation functions to determine the best parameters for the fall classification problem

  • We proposed a novel algorithm for classification of falls though the use of fractal features and an ensemble of RVFLs combined with an RVFL neural network

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Summary

Introduction

Falls are a major health hazard for older adults and result in high morality and injury rates [55]. Sensor-based systems can be wearable [26, 41] and smartphone-based [21, 46] accelerometers or gyroscopes, while environmental sensors frequently use infrared [7, 14], pressure sensors [59] and WiFi-based sensing devices [17, 54], which utilise fluctuations in channel state information amplitude at the WiFi receiver to sense activities. The readings from these sensors are used to detect and classify falls from Activities of Daily Life (ADL)

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