Litcius/Paper detail

ESPRESSO

Shohreh Deldari, Daniel Smith, Amin Sadri, Flora D. Salim

2020Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies41 citationsDOIOpen Access PDF

Abstract

Extracting informative and meaningful temporal segments from high-dimensional wearable sensor data, smart devices, or IoT data is a vital preprocessing step in applications such as Human Activity Recognition (HAR), trajectory prediction, gesture recognition, and lifelogging. In this paper, we propose ESPRESSO (Entropy and ShaPe awaRe timE-Series SegmentatiOn), a hybrid segmentation model for multi-dimensional time-series that is formulated to exploit the entropy and temporal shape properties of time-series. ESPRESSO differs from existing methods that focus upon particular statistical or temporal properties of time-series exclusively. As part of model development, a novel temporal representation of time-series WCAC was introduced along with a greedy search approach that estimate segments based upon the entropy metric. ESPRESSO was shown to offer superior performance to four state-of-the-art methods across seven public datasets of wearable and wear-free sensing. In addition, we undertake a deeper investigation of these datasets to understand how ESPRESSO and its constituent methods perform with respect to different dataset characteristics. Finally, we provide two interesting case-studies to show how applying ESPRESSO can assist in inferring daily activity routines and the emotional state of humans.

Topics & Concepts

Computer scienceSegmentationEntropy (arrow of time)Activity recognitionArtificial intelligenceExploitTime seriesPreprocessorPattern recognition (psychology)Machine learningData miningComputer securityQuantum mechanicsPhysicsContext-Aware Activity Recognition SystemsTime Series Analysis and ForecastingAnomaly Detection Techniques and Applications