Authors
Samuli Hemminki, Petteri Nurmi, Sasu Tarkoma
Publication date
2013/11/11
Book
Proceedings of the 11th ACM conference on embedded networked sensor systems
Pages
1-14
Description
We present novel accelerometer-based techniques for accurate and fine-grained detection of transportation modes on smartphones. The primary contributions of our work are an improved algorithm for estimating the gravity component of accelerometer measurements, a novel set of accelerometer features that are able to capture key characteristics of vehicular movement patterns, and a hierarchical decomposition of the detection task. We evaluate our approach using over 150 hours of transportation data, which has been collected from 4 different countries and 16 individuals. Results of the evaluation demonstrate that our approach is able to improve transportation mode detection by over 20% compared to current accelerometer-based systems, while at the same time improving generalization and robustness of the detection. The main performance improvements are obtained for motorised transportation modalities …
Total citations
201420152016201720182019202020212022202320243371798971665740363213
Scholar articles
S Hemminki, P Nurmi, S Tarkoma - Proceedings of the 11th ACM conference on …, 2013