Abstract

Advances in deep learning (DL) model design have pushed the boundaries of the areas in which it can be applied. The fields with an immense availability of complex big data have been big beneficiaries of these advances. One such field is human activity recognition (HAR). HAR is a popular area of research in a connected world because internet-of-things (IoT) devices and smartphones are becoming more prevalent. A major research goal of recent research work has been to improve predictive accuracy for devices with limited computational resources. In this paper, we propose iSPLInception, a DL model motivated by the Inception-ResNet architecture from Google, that not only achieves high predictive accuracy but also uses fewer device resources. We evaluate the proposed model's performance on four public HAR datasets from the University of California, Irvine (UCI) machine learning repository. The proposed model's performance is compared to that of existing DL architectures that have been proposed in the recent past to solve the HAR problem. The proposed model outperforms these approaches on several metrics of accuracy, cross-entropy loss, and F <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">1</sub> score on all the four datasets. The performance of the proposed iSPLInception model is validated on the UCI HAR using smartphones dataset, Opportunity activity recognition dataset, Daphnet freezing of gait dataset, and PAMAP2 physical activity monitoring dataset. The experiments and result analysis indicate that the proposed iSPLInception model achieves remarkable performance for HAR applications.

Highlights

  • H UMAN activity recognition (HAR) as an area of research has been advancing for decades due to its societal benefits when applied in real-life human-centric applications

  • We propose a deep learning (DL) model, iSPLInception, that builds upon the work from [10] to perform the human activity recognition task

  • We propose the intelligent signal processing lab Inception that builds on the successes realized by the Inception-ResNet model in other fields of deep learning to address the activity recognition task

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Summary

INTRODUCTION

H UMAN activity recognition (HAR) as an area of research has been advancing for decades due to its societal benefits when applied in real-life human-centric applications. Wi-Fi-based approaches leverage advances in Wi-Fi signals and improved public wireless infrastructure to detect the change in patterns of WiFi signals reflected by a human body to recognize what activity a user is performing Their limitations include the computational complexity and resource drain on these systems, signal fluctuations, interference of Wi-Fi signals, and obstacles in the environment. In the intelligent signal processing lab (iSPL), our key research goal in activity recognition is to achieve the best predictive accuracy and least cross-entropy loss when differentiating between activities performed by a user This is in addition to performing HAR on devices with very low computational resources, by users that are not domain experts with very small datasets to work with. The proposed DL model is based on the Inception-ResNet model and we have built it to work on a human activity recognition task achieving significant results when compared to existing approaches.

RELATED WORK
HUMAN ACTIVITY RECOGNITION
EXPERIMENTS AND RESULTS
EXPERIMENTAL SETUP
MODEL CONFIGURATIONS
UCI HAR DATASET
Score 92 94 91 92 94 95
Score 80 81 77 81 80 88
Score 93 93 93 88 92 94
Score 86 88 86 87 87 89
CONCLUSION
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