With the advancement of wireless technologies and sensing methodologies, many studies have shown that wireless signals can sense human behaviors. Human activity recognition using channel state information (CSI) in commercial WiFi devices plays an important role in many applications. In this paper, a framework for human activity recognition was constructed based on WiFi CSI signal enhancement. Firstly, the sensitivity of different antennas to human activity was studied. An antenna selection algorithm was proposed, which can make a choice of the antenna automatically based on their sensitivity in accordance with different activities. Secondly, two signal enhancement approaches, which can strengthen the active signals and weaken the inactive s...
Over the past years, device-free sensing has received considerable attention due to its unobtrusiven...
Recognizing human activities in their daily living enables the development and widely usage of human...
The dataset of Wi-Fi signals was captured in three indoor environments. 30 subjects participated in ...
Wireless signals–based activity detection and recognition technology may be complementary to the exi...
Human activity tracking plays a vital role in human–computer interaction. Traditional human activity...
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...
Recent research has devoted significant efforts on the utilization of WiFi signals to recognize vari...
Human activity recognition is drawing escalating attention in recent years in both academia and indu...
Human activity detection is a research field that has been growing rapidly for the last few decades....
The joint of WiFi-based and vision-based human activity recognition has attracted increasing attenti...
With the emergence of Internet of Things (IoT) applications in smart homes, Human Activity Recogniti...
WiFi-based human activity recognition has drawn a lot of attention in recent years due to the low co...
Nowadays, we are in an era of information explosion. 5G technology and artificial intelligence are i...
Human Activity Recognition (HAR) serves a diverse range of human-centric applications in healthcare,...
Over the past years, device-free sensing has received considerable attention due to its unobtrusiven...
Recognizing human activities in their daily living enables the development and widely usage of human...
The dataset of Wi-Fi signals was captured in three indoor environments. 30 subjects participated in ...
Wireless signals–based activity detection and recognition technology may be complementary to the exi...
Human activity tracking plays a vital role in human–computer interaction. Traditional human activity...
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...
Recent research has devoted significant efforts on the utilization of WiFi signals to recognize vari...
Human activity recognition is drawing escalating attention in recent years in both academia and indu...
Human activity detection is a research field that has been growing rapidly for the last few decades....
The joint of WiFi-based and vision-based human activity recognition has attracted increasing attenti...
With the emergence of Internet of Things (IoT) applications in smart homes, Human Activity Recogniti...
WiFi-based human activity recognition has drawn a lot of attention in recent years due to the low co...
Nowadays, we are in an era of information explosion. 5G technology and artificial intelligence are i...
Human Activity Recognition (HAR) serves a diverse range of human-centric applications in healthcare,...
Over the past years, device-free sensing has received considerable attention due to its unobtrusiven...
Recognizing human activities in their daily living enables the development and widely usage of human...
The dataset of Wi-Fi signals was captured in three indoor environments. 30 subjects participated in ...