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A Fourier Domain Feature Approach for Human Activity Recognition & Fall Detection | IEEE Conference Publication | IEEE Xplore

A Fourier Domain Feature Approach for Human Activity Recognition & Fall Detection


Abstract:

Commonly, the senses of vision and hearing decrease as the age increase of a human. The most affected organs are hearing and vision due to aging. Elder people consequence...Show More

Abstract:

Commonly, the senses of vision and hearing decrease as the age increase of a human. The most affected organs are hearing and vision due to aging. Elder people consequence a variety of problems while living Activities of Daily Living (ADL) for the reason of age, sense, loneliness and cognitive changes. These cause the risk to ADL which leads to several falls. Getting real life fall data is a difficult process and are not available whereas simulated falls become ubiquitous to evaluate the proposed methodologies. From the literature review, it is investigated that most of the researchers used raw and energy features (time domain features) of the signal data as those are most discriminating. However, in real life situations fall signal may be noisy than the current simulated data. Hence the result using raw feature may dramatically changes when using in a real life scenario. This research is using frequency domain Fourier coefficient features to differentiate various human activities of daily life. The feature vector constructed in this article using that the Fast Fourier Transform are robust to noise, level of detail representation and rotation invariant. In this research, two different supervised classifiers kNN and SVM are used for evaluating the method. Two standard publicly available datasets are used for benchmark analysis. This research shows more discriminating results are obtained applying kNN classifier than the SVM classifier. Various standard measure including Standard Accuracy (SA), Macro Average Accuracy (MAA), Sensitivity (SE) and Specificity (SP) has been accounted. In all cases, the proposed method outperforms energy features whereas competitive results are shown with raw features. It is also noticed that the proposed method performs better than the recently risen deep learning approach in which data augmentation method were not used.
Date of Conference: 23-24 March 2023
Date Added to IEEE Xplore: 09 May 2023
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Conference Location: Noida, India

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