An Intelligent Robust One Dimensional HAR-CNN Model for Human Activity Recognition using Wearable Sensor Data
Author
Abstract

Wearables Security 2022 - One of the biggest new trends in artificial intelligence is the ability to recognise people s movements and take their actions into account. It can be used in a variety of ways, including for surveillance, security, human-computer interaction, and content-based video retrieval. There have been a number of researchers that have presented vision-based techniques to human activity recognition. Several challenges need to be addressed in the creation of a vision-based human activity recognition system, including illumination variations in human activity recognition, interclass similarity between scenes, the environment and recording setting, and temporal variation. To overcome the above mentioned problem, by capturing or sensing human actions with help of wearable sensors, wearable devices, or IoT devices. Sensor data, particularly one-dimensional time series data, are used in the work of human activity recognition. Using 1D-Convolutional Neural Network (CNN) models, this works aims to propose a new approach for identifying human activities. The Wireless Sensor Data Mining (WISDM) dataset is utilised to train and test the 1D-CNN model in this dissertation. The proposed HAR-CNN model has a 95.2\%of accuracy, which is far higher than that of conventional methods.

Year of Publication
2022
Date Published
dec
Publisher
IEEE
Conference Location
Greater Noida, India
ISBN Number
978-1-66547-436-8
URL
https://ieeexplore.ieee.org/document/10073991/
DOI
10.1109/ICAC3N56670.2022.10073991
Google Scholar | BibTeX | DOI