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JOURNALS // Artificial Intelligence and Decision Making // Archive

Artificial Intelligence and Decision Making, 2018 Issue 3, Pages 20–27 (Mi iipr212)

Data mining

Feature generation for physical activity classification

R. V. Isachenkoab, I. N. Zharikovab, A. M. Bochkarevab, V. V. Strijovc

a Moscow Institute of Physics and Technology, Russia
b Skolkovo Institute of Science and Technology, Russia
c FRC CSC RAS, Moscow Institute of Physics and Technology, Russia

Abstract: The paper investigates human physical activity classification problem. Time series obtained from accelerometer of a wearable device produce a dataset. Due to the high dimension of object description and low computational resources one has to state a feature generation problem. The authors propose to use the parameters of the local approximation models as informative features. The experiment is conducted on two datasets for human activity recognition using accelerometer: WISDM and USC-HAD. It compares several superpositions of various generation methods and classification models.

Keywords: wearable devices, accelerometer, time series, local approximation, classification.

Language: English

DOI: 10.14357/20718594180312



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© Steklov Math. Inst. of RAS, 2024