학술논문

Hierarchical Classification on Multimodal Sensing for Human Activity Recogintion and Fall Detection
Document Type
Conference
Source
2018 IEEE SENSORS SENSORS, 2018 IEEE. :1-4 Oct, 2018
Subject
Engineering Profession
General Topics for Engineers
Support vector machines
Feature extraction
Multimodal sensors
Radar imaging
Activity recognition
multi-modal sensing
hierarchical classification
human activity recognition
fall detection
machine learning
Language
ISSN
2168-9229
Abstract
This paper presents initial results on the usage of hierarchical classification for human activities discrimination and fall detection in the context of assisted living. Multimodal sensing is proposed by combining data from a wearable device and a radar system. The effect of different approaches in selecting the activities in each sub-group of the hierarchy are explored and reported as preliminary results in this work, while a more detailed investigation is undergoing. 1.2-2.2% improvement in accuracy with SVM and DL classifiers compared with the conventional case of activity classification is reported; subsequent improvement (1.6%) occurs when using SVM-SFS in the second stage of hierarchical classification.