A Lean and Performant Hierarchical Model for Human Activity Recognition Using Body-Mounted Sensors

Sensors (Basel). 2020 May 29;20(11):3090. doi: 10.3390/s20113090.

Abstract

Here we propose a new machine learning algorithm for classification of human activities by means of accelerometer and gyroscope signals. Based on a novel hierarchical system of logistic regression classifiers and a relatively small set of features extracted from the filtered signals, the proposed algorithm outperformed previous work on the DaLiAc (Daily Life Activity) and mHealth datasets. The algorithm also represents a significant improvement in terms of computational costs and requires no feature selection and hyper-parameter tuning. The algorithm still showed a robust performance with only two (ankle and wrist) out of the four devices (chest, wrist, hip and ankle) placed on the body (96.8% vs. 97.3% mean accuracy for the DaLiAc dataset). The present work shows that low-complexity models can compete with heavy, inefficient models in classification of advanced activities when designed with a careful upstream inspection of the data.

Keywords: accelerometers; human activity recognition; machine learning; sensors.

MeSH terms

  • Accelerometry*
  • Activities of Daily Living*
  • Algorithms
  • Humans
  • Machine Learning*
  • Wearable Electronic Devices*
  • Wrist