Litcius/Paper detail

Lightweight accurate trigger to reduce power consumption in sensor-based continuous human activity recognition

Emanuele Lattanzi, Lorenzo Calisti, Paolo Capellacci

2023Pervasive and Mobile Computing10 citationsDOIOpen Access PDF

Abstract

Wearable devices have become increasingly popular in recent years, and they offer a great opportunity for sensor-based continuous human activity recognition in real-world scenarios. However, one of the major challenges is their limited battery life. In this study, we propose an energy-aware human activity recognition framework for wearable devices based on a lightweight accurate trigger. The trigger acts as a binary classifier capable of recognizing, with maximum accuracy, the presence or absence of one of the interesting activities in the real-time input signal and it is responsible for starting the energy-intensive classification procedure only when needed. The measurement results conducted on a real wearable device show that the proposed approach can reduce energy consumption by up to 95% in realistic case studies, with a cost of performance deterioration of at most 1% or 2% compared to the traditional energy-intensive classification strategy.

Topics & Concepts

Computer scienceWearable computerActivity recognitionEnergy consumptionWearable technologyPower consumptionClassifier (UML)Continuous monitoringEnergy (signal processing)Real-time computingArtificial intelligenceEmbedded systemPower (physics)Electrical engineeringMathematicsEconomicsOperations managementStatisticsPhysicsQuantum mechanicsEngineeringContext-Aware Activity Recognition SystemsIoT and Edge/Fog ComputingAdvanced Sensor and Energy Harvesting Materials