Nowadays, sensor-equipped mobile devices allow us to detect basic daily activities accurately. However, the accuracy of the existing activity recognition methods decreases rapidly if the set of activities is extended and includes training routines, such as squats, jumps, or arm swings. Thus, this paper proposes a model of a personal area network with a smartphone (as a main node) and supporting sensor nodes that deliver additional data to increase activity-recognition accuracy. The introduced personal area sensor network takes advantage of the information from multiple sensor nodes attached to different parts of the human body. In this scheme, nodes process their sensor readings locally with the use of recurrent neural networks (RNNs) to ca...
It is a significant technical and computational task to provide precise information regarding the ac...
In this paper we present a Long-Short Term Memory (LSTM) deep recurrent neural network (RNN) model f...
Abstract Purpose: Mobile phone-based human activity recognition (HAR) consists of inferring user’s ...
The vast array of small wireless sensors is a boon to body sensor network applications, especially i...
Smartphones are widely used today, and it becomes possible to detect the user\u27s environmental cha...
Physical activity recognition of everyday activities such as sitting, standing, laying, walking, and...
The ubiquity of smartphones has motivated efforts to use the embedded sensors to detect various aspe...
Human Activity Recognition (HAR) has become an active field of research in the computer vision commu...
Human activity recognition based on the smartphone sensors has the potential to impact a wide range ...
Human activity recognition (HAR) is an important technology for a wide range of applications includi...
Embedded sensors in smartphones provide real-time information of users' movements and activities. Th...
Wireless sensor networks (WSNs) are becoming more and more attractive because of their flexibility. ...
Human activity recognition is increasingly used for medical, surveillance and entertainment applicat...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
It is a significant technical and computational task to provide precise information regarding the ac...
In this paper we present a Long-Short Term Memory (LSTM) deep recurrent neural network (RNN) model f...
Abstract Purpose: Mobile phone-based human activity recognition (HAR) consists of inferring user’s ...
The vast array of small wireless sensors is a boon to body sensor network applications, especially i...
Smartphones are widely used today, and it becomes possible to detect the user\u27s environmental cha...
Physical activity recognition of everyday activities such as sitting, standing, laying, walking, and...
The ubiquity of smartphones has motivated efforts to use the embedded sensors to detect various aspe...
Human Activity Recognition (HAR) has become an active field of research in the computer vision commu...
Human activity recognition based on the smartphone sensors has the potential to impact a wide range ...
Human activity recognition (HAR) is an important technology for a wide range of applications includi...
Embedded sensors in smartphones provide real-time information of users' movements and activities. Th...
Wireless sensor networks (WSNs) are becoming more and more attractive because of their flexibility. ...
Human activity recognition is increasingly used for medical, surveillance and entertainment applicat...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
It is a significant technical and computational task to provide precise information regarding the ac...
In this paper we present a Long-Short Term Memory (LSTM) deep recurrent neural network (RNN) model f...
Abstract Purpose: Mobile phone-based human activity recognition (HAR) consists of inferring user’s ...