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Cited 14 time in webofscience Cited 16 time in scopus
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Training Classifiers with Shadow Features for Sensor-Based Human Activity Recognitionopen access

Authors
Fong, SimonSong, WeiCho, KyungeunWong, RaymondWong, Kelvin K. L.
Issue Date
Mar-2017
Publisher
MDPI
Keywords
feature selection; supervised learning; classification; human activity recognition
Citation
SENSORS, v.17, no.3
Indexed
SCIE
SCOPUS
Journal Title
SENSORS
Volume
17
Number
3
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/14899
DOI
10.3390/s17030476
ISSN
1424-8220
1424-3210
Abstract
In this paper, a novel training/testing process for building/using a classification model based on human activity recognition (HAR) is proposed. Traditionally, HAR has been accomplished by a classifier that learns the activities of a person by training with skeletal data obtained from a motion sensor, such as Microsoft Kinect. These skeletal data are the spatial coordinates (x, y, z) of different parts of the human body. The numeric information forms time series, temporal records of movement sequences that can be used for training a classifier. In addition to the spatial features that describe current positions in the skeletal data, new features called shadow features' are used to improve the supervised learning efficacy of the classifier. Shadow features are inferred from the dynamics of body movements, and thereby modelling the underlying momentum of the performed activities. They provide extra dimensions of information for characterising activities in the classification process, and thereby significantly improve the classification accuracy. Two cases of HAR are tested using a classification model trained with shadow features: one is by using wearable sensor and the other is by a Kinect-based remote sensor. Our experiments can demonstrate the advantages of the new method, which will have an impact on human activity detection research.
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