Lightweight Modeling of User Context Combining Physical and Virtual Sensor Data
Mattia Giovanni Campana, Dimitris Chatzopoulos, Franca Delmastro, Pan, Hui

TL;DR
This paper introduces a lightweight, efficient framework for modeling user context by combining physical and virtual sensor data on mobile devices, achieving high accuracy with reduced computational load.
Contribution
The work presents a novel dataset collection framework and a lightweight context modeling approach that significantly reduces features and computation while maintaining accuracy.
Findings
Achieved 10x speed-up in context classification.
Reduced features by over 90% with less than 3% accuracy loss.
Collected a large dataset with 36K samples and 1331 features.
Abstract
The multitude of data generated by sensors available on users' mobile devices, combined with advances in machine learning techniques, support context-aware services in recognizing the current situation of a user (i.e., physical context) and optimizing the system's personalization features. However, context-awareness performances mainly depend on the accuracy of the context inference process, which is strictly tied to the availability of large-scale and labeled datasets. In this work, we present a framework developed to collect datasets containing heterogeneous sensing data derived from personal mobile devices. The framework has been used by 3 voluntary users for two weeks, generating a dataset with more than 36K samples and 1331 features. We also propose a lightweight approach to model the user context able to efficiently perform the entire reasoning process on the user mobile device.…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
