Nowadays, many mobile phones have been equipped with sensors to enable the delivery of advanced eatures/services to the users. Accelerometer is one of the sensors that embedded to several types of mobile phones. Our earlier research has shown that data from mobile-phone embedded accelerometer can be used for activity recognition purpose [1]. As a continuation of the research towards the search for a suitable and reliable algorithm for real-time activity recognition using mobile phone, an evaluation and comparison study of the performance of seven different categories of classifier algorithms in classifying user activities were conducted. Five basic human activities (jogging, jumping, sitting, standing, and walking) were tested. The training...
AbstractThis paper describes how to recognize certain types of human physical activities using accel...
Physical activity classification is an objective approach to assess levels of physical activity, and...
Physical activity recognition using embedded sensors has enabled many context-aware applications in ...
AbstractNowadays, many mobile phones have been equipped with sensors to enable the delivery of advan...
Mobile phone based activity recognition uses dataobtained from embedded sensors to infer user’sphysi...
Physical activity recognition of everyday activities such as sitting, standing, laying, walking, and...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
In this paper, the authors describe a method of accurately detecting human activity using a smartpho...
Human activity recognition is an emerging field of ubiquitous and pervasive computing. Although rece...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
The aim of this study is to introduce two algorithms for physical activity recognition and to compar...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In this paper, we perform physical motion recognition using mobile phones with built-in acceleromete...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
AbstractThis paper describes how to recognize certain types of human physical activities using accel...
Physical activity classification is an objective approach to assess levels of physical activity, and...
Physical activity recognition using embedded sensors has enabled many context-aware applications in ...
AbstractNowadays, many mobile phones have been equipped with sensors to enable the delivery of advan...
Mobile phone based activity recognition uses dataobtained from embedded sensors to infer user’sphysi...
Physical activity recognition of everyday activities such as sitting, standing, laying, walking, and...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
In this paper, the authors describe a method of accurately detecting human activity using a smartpho...
Human activity recognition is an emerging field of ubiquitous and pervasive computing. Although rece...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
The aim of this study is to introduce two algorithms for physical activity recognition and to compar...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In this paper, we perform physical motion recognition using mobile phones with built-in acceleromete...
In recent years, people nowadays easily to contact each other by using smartphone. Most of the smart...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
AbstractThis paper describes how to recognize certain types of human physical activities using accel...
Physical activity classification is an objective approach to assess levels of physical activity, and...
Physical activity recognition using embedded sensors has enabled many context-aware applications in ...