scholarly journals A Hybrid Deep Learning Model for Human Activity Recognition Using Multimodal Body Sensing Data

IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 99152-99160 ◽  
Author(s):  
Abdu Gumaei ◽  
Mohammad Mehedi Hassan ◽  
Abdulhameed Alelaiwi ◽  
Hussain Alsalman
Author(s):  
Mohamed Abdel-Basset ◽  
Hossam Hawash ◽  
Ripon K. Chakrabortty ◽  
Michael Ryan ◽  
Mohamed Elhoseny ◽  
...  

Sensors ◽  
2021 ◽  
Vol 21 (2) ◽  
pp. 654
Author(s):  
Brian Russell ◽  
Andrew McDaid ◽  
William Toscano ◽  
Patria Hume

Goal: To develop and validate a field-based data collection and assessment method for human activity recognition in the mountains with variations in terrain and fatigue using a single accelerometer and a deep learning model. Methods: The protocol generated an unsupervised labelled dataset of various long-term field-based activities including run, walk, stand, lay and obstacle climb. Activity was voluntary so transitions could not be determined a priori. Terrain variations included slope, crossing rivers, obstacles and surfaces including road, gravel, clay, mud, long grass and rough track. Fatigue levels were modulated between rested to physical exhaustion. The dataset was used to train a deep learning convolutional neural network (CNN) capable of being deployed on battery powered devices. The human activity recognition results were compared to a lab-based dataset with 1,098,204 samples and six features, uniform smooth surfaces, non-fatigued supervised participants and activity labelling defined by the protocol. Results: The trail run dataset had 3,829,759 samples with five features. The repetitive activities and single instance activities required hyper parameter tuning to reach an overall accuracy 0.978 with a minimum class precision for the one-off activity (climbing gate) of 0.802. Conclusion: The experimental results showed that the CNN deep learning model performed well with terrain and fatigue variations compared to the lab equivalents (accuracy 97.8% vs. 97.7% for trail vs. lab). Significance: To the authors knowledge this study demonstrated the first successful human activity recognition (HAR) in a mountain environment. A robust and repeatable protocol was developed to generate a validated trail running dataset when there were no observers present and activity types changed on a voluntary basis across variations in terrain surface and both cognitive and physical fatigue levels.


Sensors ◽  
2021 ◽  
Vol 21 (24) ◽  
pp. 8227
Author(s):  
Saad Irfan ◽  
Nadeem Anjum ◽  
Nayyer Masood ◽  
Ahmad S. Khattak ◽  
Naeem Ramzan

In recent years, a plethora of algorithms have been devised for efficient human activity recognition. Most of these algorithms consider basic human activities and neglect postural transitions because of their subsidiary occurrence and short duration. However, postural transitions assume a significant part in the enforcement of an activity recognition framework and cannot be neglected. This work proposes a hybrid multi-model activity recognition approach that employs basic and transition activities by utilizing multiple deep learning models simultaneously. For final classification, a dynamic decision fusion module is introduced. The experiments are performed on the publicly available datasets. The proposed approach achieved a classification accuracy of 96.11% and 98.38% for the transition and basic activities, respectively. The outcomes show that the proposed method is superior to the state-of-the-art methods in terms of accuracy and precision.


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