A Novel Separable Convolution Neural Network for Human Activity Recognition
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Date
2022-01-24
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University of Eloued جامعة الوادي
Abstract
The issue with the time series classification arises in several
human applications such as healthcare, industrial monitoring and cybersecurity.
Recently, various methods have been developed in order to deal
with this matter. In this paper, a novel deep learning-based model for
human activity recognition is developed. The proposal examines deeply
the training phase in which the acceleration metric is considered by exploring
all components of the model. To this end, the architecture of
the Convolutional Neural Network (CNN) is studied: a) first, we employ
a separable CNN, where we integrate a particular filter model for
the depthwise convolution; b) second, we combine the extracted features
with the handcrafted features. The proposed classifier is evaluated using
a human activity recognition dataset and compared to a set of recent
works. The obtained results show that our model outperforms the compared
methods under various metrics.
Description
Forum Intervention of Artificial Intelligence and Its Applications. Faculty of Exat science. University of Eloued
Keywords
Time series Classification · Human activity recognition · Convolutional neural network (CNN) · Separable CNN
Citation
Boudjema1, Ali. Titouna1,Faiza. A Novel Separable Convolution Neural Network for Human Activity Recognition. Forum of Artificial Intelligence and Its Applications. 24-26 Jan 2022. Faculty of Exat science. University of Eloued. [visited in ../../….]. available from [copy the link here]