@inproceedings{43bbab2bfb6b47cbb1fa8383391a7f16,
title = "Activity recognition from minimal distinguishing subsequence mining",
abstract = "Human activity recognition is one of the most important research topics in the era of Internet of Things. To separate different activities given sensory data, we utilize a Minimal Distinguishing Subsequence (MDS) mining approach to efficiently find distinguishing patterns among different activities. We first transform the sensory data into a series of sensor triggering events and operate the MDS mining procedure afterwards. The gap constraints are also considered in the MDS mining. Given the multi-class nature of most activity recognition tasks, we modify the MDS mining approach from a binary case to a multi-class one to fit the need for multiple activity recognition. We also study how to select the best parameter set including the minimal and the maximal support thresholds in finding the MDSs for effective activity recognition. Overall, the prediction accuracy is 86.59% on the van Kasteren dataset which consists of four different activities for recognition.",
keywords = "Activity recognition, Minimal distinguishing subsequence, Sequence pattern",
author = "Mohammad Iqbal and Pao, {Hsing Kuo}",
note = "Publisher Copyright: {\textcopyright} 2017 Author(s).; 2nd International Conference on Mathematics - Pure, Applied and Computation: Empowering Engineering using Mathematics, ICoMPAC 2016 ; Conference date: 23-11-2016",
year = "2017",
month = aug,
day = "1",
doi = "10.1063/1.4994449",
language = "English",
series = "AIP Conference Proceedings",
publisher = "American Institute of Physics Inc.",
editor = "Dieky Adzkiya",
booktitle = "International Conference on Mathematics - Pure, Applied and Computation",
}