Litcius/Paper detail

Locally Weighted Ensemble-Detection-Based Adaptive Random Forest Classifier for Sensor-Based Online Activity Recognition for Multiple Residents

Dong Chen, Sira Yongchareon, Edmund Lai, Quan Z. Sheng, Veronica Liesaputra

2021IEEE Internet of Things Journal11 citationsDOI

Abstract

In recent years, various approaches for multiresident human activity recognition (HAR) in a smart indoor environment have been developed and improved along with the rapid development of sensors and AI technologies. Research in data stream-based online learning (OL) for multiresident HAR is relatively new and a majority of the existing works have been developed based on training batches of data that cannot recognize real-time activities. To address the challenges of OL for multiresident HAR, we propose a novel OL architecture based on a locally weighted ensemble detection-based adaptive random forest (LED-ARF) classifier. We conduct a comprehensive performance comparison of eight famous OL classification techniques and our LED-ARF method. The comparison is evaluated based on the two benchmarking CASAS and ARAS data sets. Our experimental results show that LED-ARF achieves the best performance with the highest robustness for online multiresident HAR.

Topics & Concepts

Random forestComputer scienceBenchmarkingActivity recognitionRobustness (evolution)Classifier (UML)Artificial intelligenceMachine learningEnsemble learningPattern recognition (psychology)Data miningBiochemistryChemistryGeneBusinessMarketingData Stream Mining TechniquesAnomaly Detection Techniques and ApplicationsContext-Aware Activity Recognition Systems