Chi Harold Liu, Jun Fan, et al.
IEEE TETC
Proposed is a light-weight unsupervised decision tree based classification method to detect the user's postural actions, such as sitting, standing, walking and running as user states by analysing the data from a smartphone accelerometer sensor. The proposed method differs from other approaches by applying a sufficient number of signal processing features to exploit the sensory data without knowing any a priori information. Experiments show that the proposed method still makes a solid differentiation in user states (e.g. an above 90% overall accuracy) even when the sensor is operated under slower sampling frequencies. © The Institution of Engineering and Technology 2013.
Chi Harold Liu, Jun Fan, et al.
IEEE TETC
Di Wu, Shih-Hsien Yang, et al.
Wireless Networks
Saumay Pushp, Chulhong Min, et al.
SenSys 2012
Chi Harold Liu, Alexander Kroener, et al.
UbiComp 2011