eprintid: 9504 rev_number: 2 eprint_status: archive userid: 1 dir: disk0/00/00/95/04 datestamp: 2023-11-09 16:36:09 lastmod: 2023-11-09 16:36:09 status_changed: 2023-11-09 16:29:09 type: conference_item metadata_visibility: show creators_name: Nurhanim, K. creators_name: Elamvazuthi, I. creators_name: Izhar, L.I. title: Ensemble Methods for Classifying of Human Activity Recognition ispublished: pub keywords: Accelerometers; Adaptive boosting; Animation; Computer games; Decision trees; Extraction; Feature extraction; Frequency domain analysis; Manufacture; mHealth; Random forests; Robotics; Signal processing; Smartphones; Time domain analysis; Walking aids; Wearable sensors, 10-fold cross-validation; Feature extraction and classification; Frequency domains; Human activity recognition; Nested dichotomies; Overall accuracies; Random subspaces; Rotation forests, Classification (of information) note: cited By 2; Conference of 4th IEEE International Symposium in Robotics and Manufacturing Automation, ROMA 2018 ; Conference Date: 10 December 2018 Through 12 December 2018; Conference Code:157694 abstract: Wearable sensors of a smartphone are often used in Human activity recognition (HAR) application. Recently, utilization of wearable sensors has raised more importance in several applications such as computer games, medical care animation and film making. In this paper, classification of HAR using different type of Ensemble methods has acquired database from 30 subjects using smartphone to perform six different daily activities. The signal processing stages involved filtering and segmentation, time domain and frequency domain of feature extraction and classification for walking, walking upstairs, walking downstairs, sitting, standing and laying. The classification involved ensemble methods of Bagging, Adaboost, Rotation forest, Ensembles of nested dichotomies (END) and Random subspace with Random Forest(RF) as base classifier. Holdout method and 10 fold cross validation method are executed to evaluate the classification of each activity. Each activity assessment was based on precision, recall, F-measure and overall accuracy. From the results of classification of all activities, it was found that Adaboost-RF classifier given overall accuracy rate 98.07 for holdout method and 98.82 10 fold cross validation method. © 2018 IEEE. date: 2018 publisher: Institute of Electrical and Electronics Engineers Inc. official_url: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85080028278&doi=10.1109%2fROMA46407.2018.8986719&partnerID=40&md5=cb58f860a89991404dfc7f268ad4bcb7 id_number: 10.1109/ROMA46407.2018.8986719 full_text_status: none publication: 2018 IEEE 4th International Symposium in Robotics and Manufacturing Automation, ROMA 2018 refereed: TRUE isbn: 9781728103747 citation: Nurhanim, K. and Elamvazuthi, I. and Izhar, L.I. (2018) Ensemble Methods for Classifying of Human Activity Recognition. In: UNSPECIFIED.