We present a unique, comprehensive dataset that provides the pattern of five activities walking, cycling, taking a train, a bus, or a taxi. The measurements are carried out by embedded sensor accelerometers in smartphones. The dataset offers dynamic responses of subjects carrying smartphones in varied styles as they perform the five activities through vibrations acquired by accelerometers. The dataset contains corresponding time stamps and vibrations in three directions longitudinal, horizontal, and vertically stored in an Excel Macro-enabled Workbook (xlsm) format that can be used to train an AI model in a smartphone which has the potential to collect people’s vibration data and decide what movement is being conducted. Moreover, with more ...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
We explain how to obtain a highly versatile and precisely annotated dataset for the multimodal locom...
Development of various statistical learning methods and their implementation in mobile device softwa...
Crowdsourcing vibration data stemming from different activities and transportation usages (by trains...
Human-centered computing is an emerging research field that aims to understand human behavior and in...
The study of human mobility and activities has opened up to an incredible number of studies in the p...
Human-centered computing is an emerging research field that aims to understand human behavior and in...
This dataset is from a study in which we collected smartphone accelerometer and gyroscope data of fo...
Human physical motion activity identification has many potential applications in various fields, suc...
Human vibration data stemming from different activities and transportation usages (by trains, by bus...
A variety of cutting edge applications for mobile phones exploit the availability of phone sensors t...
At an ever increasing rate, the smartphones and other devices people carry with them in their everyd...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
In this paper, the authors describe a method of accurately detecting human activity using a smartpho...
Physical activities play a very important role in our physical and mental well-being. The lack of ph...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
We explain how to obtain a highly versatile and precisely annotated dataset for the multimodal locom...
Development of various statistical learning methods and their implementation in mobile device softwa...
Crowdsourcing vibration data stemming from different activities and transportation usages (by trains...
Human-centered computing is an emerging research field that aims to understand human behavior and in...
The study of human mobility and activities has opened up to an incredible number of studies in the p...
Human-centered computing is an emerging research field that aims to understand human behavior and in...
This dataset is from a study in which we collected smartphone accelerometer and gyroscope data of fo...
Human physical motion activity identification has many potential applications in various fields, suc...
Human vibration data stemming from different activities and transportation usages (by trains, by bus...
A variety of cutting edge applications for mobile phones exploit the availability of phone sensors t...
At an ever increasing rate, the smartphones and other devices people carry with them in their everyd...
Thanks to the development in recent years, the placement of miniaturized sensors such as acceleromet...
In this paper, the authors describe a method of accurately detecting human activity using a smartpho...
Physical activities play a very important role in our physical and mental well-being. The lack of ph...
Real-time human activity recognition on a mobile phone is presented in this article. Unlike in most ...
We explain how to obtain a highly versatile and precisely annotated dataset for the multimodal locom...
Development of various statistical learning methods and their implementation in mobile device softwa...