Title :
Human activity recognition by smartphone
Author :
Tuan Dinh Le;Chung Van Nguyen
Author_Institution :
Computer Sciences, Long An University of Economics and Industry
Abstract :
Human activity recognition is one of the most important core building blocks behind many applications on smartphone such as medical applications, fitness tracking, context-aware mobile, human survey system, etc. This paper describes a robust system for human activity recognition by smartphone. Different from other work, we investigated the use and combination feature selection and instance selection to reduce dimensionality of dataset in order to enhance the performance. We implemented the system on Android and our experimental results showed that our system achieves better accuracy of up to 15% and the response time is 3 to 5 times faster when comparing to the original system.
Keywords :
"Accuracy","Feature extraction","Accelerometers","Correlation","Time factors","Decision trees","Frequency-domain analysis"
Conference_Titel :
Information and Computer Science (NICS), 2015 2nd National Foundation for Science and Technology Development Conference on
Print_ISBN :
978-1-4673-6639-7
DOI :
10.1109/NICS.2015.7302194