Wavelet-based temporal models of human activity for anomaly detection in smart robot-assisted environments1

Author:

Fernandez-Carmona Manuel1,Mghames Sariah2,Bellotto Nicola23

Affiliation:

1. Ingeniería de Sistemas Integrados Group, University of Málaga-UMA, Spain

2. Department of Computer Science, University of Lincoln, United Kingdom

3. Department of Information Engineering, University of Padua, Italy

Abstract

Detecting anomalies in patterns of sensor data is important in many practical applications, including domestic activity monitoring for Active Assisted Living (AAL). How to represent and analyse these patterns, however, remains a challenging task, especially when data is relatively scarce and an explicit model is required to be fine-tuned for specific scenarios. This paper, therefore, presents a new approach for temporal modelling of long-term human activities with smart-home sensors, which is used to detect anomalous situations in a robot-assisted environment. The model is based on wavelet transforms and used to forecast smart sensor data, providing a temporal prior to detect unexpected events in human environments. To this end, a new extension of Hybrid Markov Logic Networks has been developed that merges different anomaly indicators, including activities detected by binary sensors, expert logic rules, and wavelet-based temporal models. The latter in particular allows the inference system to discover deviations from long-term activity patterns, which cannot be detected by simpler frequency-based models. Two new publicly available datasets were collected using several smart-sensors to evaluate the approach in office and domestic scenarios. The experimental results demonstrate the effectiveness of the proposed solutions and their successful deployment in complex human environments, showing their potential for future smart-home and robot integrated services.

Publisher

IOS Press

Subject

Software

Reference58 articles.

1. J. Audibert, P. Michiardi, F. Guyard, S. Marti and M.A. Zuluaga, Usad: Unsupervised anomaly detection on multivariate time series, in: Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, 2020, pp. 3395–3404.

2. Leg motion classification with artificial neural networks using wavelet-based features of gyroscope signals;Ayrulu-Erdem;Sensors,2011

3. N. Bellotto, M. Fernandez-Carmona and S. Cosar, ENRICHME integration of ambient intelligence and robotics for AAL, in: Wellbeing AI: From Machine Learning to Subjectivity Oriented Computing (AAAI 2017 Spring Symposium), AAAI, 2017.

4. A.E. Budson and P.R. Solomon, Memory Loss, Alzheimer’s Disease, and Dementia-E-Book: A Practical Guide for Clinicians, Elsevier Health Sciences, 2021.

5. On-line human activity recognition from audio and home automation sensors: Comparison of sequential and non-sequential models in realistic smart homes;Chahuara;Journal of ambient intelligence and smart environments,2016

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