Literature DB >> 33334028

Deep Learning for Activity Recognition in Older People Using a Pocket-Worn Smartphone.

Yashi Nan1,2, Nigel H Lovell1, Stephen J Redmond1,3, Kejia Wang1, Kim Delbaere2,4, Kimberley S van Schooten2,4.   

Abstract

Activity recognition can provide useful information about an older individual's activity level and encourage older people to become more active to live longer in good health. This study aimed to develop an activity recognition algorithm for smartphone accelerometry data of older people. Deep learning algorithms, including convolutional neural network (CNN) and long short-term memory (LSTM), were evaluated in this study. Smartphone accelerometry data of free-living activities, performed by 53 older people (83.8 ± 3.8 years; 38 male) under standardized circumstances, were classified into lying, sitting, standing, transition, walking, walking upstairs, and walking downstairs. A 1D CNN, a multichannel CNN, a CNN-LSTM, and a multichannel CNN-LSTM model were tested. The models were compared on accuracy and computational efficiency. Results show that the multichannel CNN-LSTM model achieved the best classification results, with an 81.1% accuracy and an acceptable model and time complexity. Specifically, the accuracy was 67.0% for lying, 70.7% for sitting, 88.4% for standing, 78.2% for transitions, 88.7% for walking, 65.7% for walking downstairs, and 68.7% for walking upstairs. The findings indicated that the multichannel CNN-LSTM model was feasible for smartphone-based activity recognition in older people.

Entities:  

Keywords:  accelerometry data; activity recognition; deep learning; older people; smartphone

Mesh:

Year:  2020        PMID: 33334028      PMCID: PMC7765519          DOI: 10.3390/s20247195

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  10 in total

1.  Accelerometer's position independent physical activity recognition system for long-term activity monitoring in the elderly.

Authors:  Adil Mehmood Khan; Young-Koo Lee; Sungyoung Lee; Tae-Seong Kim
Journal:  Med Biol Eng Comput       Date:  2010-11-04       Impact factor: 2.602

2.  Assessing physical activity in older adults: required days of trunk accelerometer measurements for reliable estimation.

Authors:  Kimberley S van Schooten; Sietse M Rispens; Petra J Elders; Paul Lips; Jaap H van Dieën; Mirjam Pijnappels
Journal:  J Aging Phys Act       Date:  2013-12-04       Impact factor: 1.961

3.  A comparison of activity classification in younger and older cohorts using a smartphone.

Authors:  Michael B Del Rosario; Kejia Wang; Jingjing Wang; Ying Liu; Matthew Brodie; Kim Delbaere; Nigel H Lovell; Stephen R Lord; Stephen J Redmond
Journal:  Physiol Meas       Date:  2014-10-23       Impact factor: 2.833

4.  Wavelet-Based Sit-To-Stand Detection and Assessment of Fall Risk in Older People Using a Wearable Pendant Device.

Authors:  Andreas Ejupi; Matthew Brodie; Stephen R Lord; Janneke Annegarn; Stephen J Redmond; Kim Delbaere
Journal:  IEEE Trans Biomed Eng       Date:  2016-10-03       Impact factor: 4.538

5.  Physical Activity Classification for Elderly People in Free-Living Conditions.

Authors:  Muhammad Awais; Lorenzo Chiari; Espen Alexander F Ihlen; Jorunn L Helbostad; Luca Palmerini
Journal:  IEEE J Biomed Health Inform       Date:  2018-03-28       Impact factor: 5.772

Review 6.  Physical activity is medicine for older adults.

Authors:  Denise Taylor
Journal:  Postgrad Med J       Date:  2013-11-19       Impact factor: 2.401

7.  Recognizing Physical Activity of Older People from Wearable Sensors and Inconsistent Data.

Authors:  Aimilia Papagiannaki; Evangelia I Zacharaki; Gerasimos Kalouris; Spyridon Kalogiannis; Konstantinos Deltouzos; John Ellul; Vasileios Megalooikonomou
Journal:  Sensors (Basel)       Date:  2019-02-20       Impact factor: 3.576

8.  Human Physical Activity Recognition Using Smartphone Sensors.

Authors:  Robert-Andrei Voicu; Ciprian Dobre; Lidia Bajenaru; Radu-Ioan Ciobanu
Journal:  Sensors (Basel)       Date:  2019-01-23       Impact factor: 3.576

9.  Can smartwatches replace smartphones for posture tracking?

Authors:  Bobak Mortazavi; Ebrahim Nemati; Kristina VanderWall; Hector G Flores-Rodriguez; Jun Yu Jacinta Cai; Jessica Lucier; Arash Naeim; Majid Sarrafzadeh
Journal:  Sensors (Basel)       Date:  2015-10-22       Impact factor: 3.576

10.  Deep Convolutional and LSTM Recurrent Neural Networks for Multimodal Wearable Activity Recognition.

Authors:  Francisco Javier Ordóñez; Daniel Roggen
Journal:  Sensors (Basel)       Date:  2016-01-18       Impact factor: 3.576

  10 in total
  3 in total

1.  An Experimental Study on the Validity and Reliability of a Smartphone Application to Acquire Temporal Variables during the Single Sit-to-Stand Test with Older Adults.

Authors:  Diogo Luís Marques; Henrique Pereira Neiva; Ivan Miguel Pires; Eftim Zdravevski; Martin Mihajlov; Nuno M Garcia; Juan Diego Ruiz-Cárdenas; Daniel Almeida Marinho; Mário Cardoso Marques
Journal:  Sensors (Basel)       Date:  2021-03-15       Impact factor: 3.576

2.  Sensor-Based Human Activity Recognition with Spatio-Temporal Deep Learning.

Authors:  Ohoud Nafea; Wadood Abdul; Ghulam Muhammad; Mansour Alsulaiman
Journal:  Sensors (Basel)       Date:  2021-03-18       Impact factor: 3.576

3.  Human Activity Recognition Based on Residual Network and BiLSTM.

Authors:  Yong Li; Luping Wang
Journal:  Sensors (Basel)       Date:  2022-01-14       Impact factor: 3.576

  3 in total

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