WiFi-based human activity recognition has drawn a lot of attention in recent years due to the low cost and high popularity of WiFi devices. The wireless monitoring system is able to efficiently detect abnormal activities like falling and body shaking, without privacy invasion. In this paper, we propose a framework using Doppler Frequency Shift-based methodology to extract the features and classify different activities with channel state information collected from WiFi devices. The experimental results demonstrate the reliability of our method for the application of activity recognition
In the WiFi protocol, channel state information (CSI) is the modulated as the fine-grained data to a...
In the era of the Internet-of-Things (IoT), billions of smart devices are deployed in indoor environ...
With the emergence of Internet of Things (IoT) applications in smart homes, Human Activity Recogniti...
With the advancement of wireless technologies and sensing methodologies, many studies have shown tha...
Detection of human presence and activity event classification are of importance to a variety of cont...
Detection and interpretation of human activities have emerged as a challenging healthcare problem in...
Human activity tracking plays a vital role in human–computer interaction. Traditional human activity...
Human activity detection is a research field that has been growing rapidly for the last few decades....
Human Activity Recognition (HAR) serves a diverse range of human-centric applications in healthcare,...
Device free activity recognition and monitoring has become a promising research area with increasing...
Wireless signals–based activity detection and recognition technology may be complementary to the exi...
Human activity recognition is drawing escalating attention in recent years in both academia and indu...
In this article we present SHARP, an original approach for obtaining human activity recognition (HAR...
peer reviewedRecent research has devoted significant efforts on the utilization of WiFi signals to r...
Some pioneer WiFi signal based human activity recognition sys-tems have been proposed. Their key lim...
In the WiFi protocol, channel state information (CSI) is the modulated as the fine-grained data to a...
In the era of the Internet-of-Things (IoT), billions of smart devices are deployed in indoor environ...
With the emergence of Internet of Things (IoT) applications in smart homes, Human Activity Recogniti...
With the advancement of wireless technologies and sensing methodologies, many studies have shown tha...
Detection of human presence and activity event classification are of importance to a variety of cont...
Detection and interpretation of human activities have emerged as a challenging healthcare problem in...
Human activity tracking plays a vital role in human–computer interaction. Traditional human activity...
Human activity detection is a research field that has been growing rapidly for the last few decades....
Human Activity Recognition (HAR) serves a diverse range of human-centric applications in healthcare,...
Device free activity recognition and monitoring has become a promising research area with increasing...
Wireless signals–based activity detection and recognition technology may be complementary to the exi...
Human activity recognition is drawing escalating attention in recent years in both academia and indu...
In this article we present SHARP, an original approach for obtaining human activity recognition (HAR...
peer reviewedRecent research has devoted significant efforts on the utilization of WiFi signals to r...
Some pioneer WiFi signal based human activity recognition sys-tems have been proposed. Their key lim...
In the WiFi protocol, channel state information (CSI) is the modulated as the fine-grained data to a...
In the era of the Internet-of-Things (IoT), billions of smart devices are deployed in indoor environ...
With the emergence of Internet of Things (IoT) applications in smart homes, Human Activity Recogniti...