M. Ali, T. Elbatt, and M. Youssef, SenseIO: Realistic Ubiquitous Indoor Outdoor Detection System Using Smartphones, IEEE Sensors, vol.18, p.9, 2018.

K. Chen and G. Tan, SatProbe: Low-energy and fast indoor/outdoor detection based on raw GPS processing, IEEE INFOCOM, 2017.

B. Guo, Z. Wang, Z. Yu, Y. Wang, N. Y. Yen et al., Mobile Crowd Sensing and Computing: The Review of an Emerging Human-Powered Sensing Paradigm, Comput. Surveys, vol.48, p.1, 2015.

S. Hyuga, M. Ito, M. Iwai, and K. Sezaki, Estimate a user's location using smartphone's barometer on a subway, Proc. ACM MELT, 2015.

V. Issarny, V. Mallet, K. Nguyen, P. G. Raverdy, F. Rebhi et al., Dos and don'ts in mobile phone sensing middleware: Learning from a large-scale experiment, Proc. ACM Middleware, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01366610

M. Li, P. Zhou, Y. Zheng, Z. Li, and G. Shen, IODetector: A Generic Service for Indoor/Outdoor Detection, ACM Transactions on Sensor Networks, vol.11, issue.2, 2014.

S. Li, Z. Qin, H. Song, C. Si, B. Sun et al., A lightweight and aggregated system for indoor/outdoor detection using smart devices, Future Generation Computer Systems, 2017.

J. Liu, H. Shen, and X. Zhang, A Survey of Mobile Crowdsensing Techniques: A Critical Component for the Internet of Things, IEEE ICCCN, 2016.

S. Liu, Z. Zheng, F. Wu, S. Tang, and G. Chen, Context-aware data quality estimation in mobile crowdsensing, IEEE INFOCOM, 2017.

Z. Liu, H. Park, Z. Chen, and H. Cho, An Energy-Efficient and Robust IndoorOutdoor Detection Method Based on Cell Identity Map, Procedia Computer Science, vol.56, 2015.

D. Luo, H. Luo, and C. Zili, An Indoor Scene Recognition Algorithm Based on Pressure Change Pattern, IEEE ICICTA, 2015.

. Mk, V. Marina, K. Radu, and . Balampekos, Impact of Indoor-Outdoor Context on Crowdsourcing based Mobile Coverage Analysis, Proc. ACM AllThingsCellular, 2015.

V. Radu, P. Katsikouli, R. Sarkar, and M. K. Marina, A semi-supervised learning approach for robust indoor-outdoor detection with smartphones, Proc. ACM SenSys, 2014.

R. Rana, C. T. Chou, N. Bulusu, S. Kanhere, and W. Hu, Ear-Phone: A contextaware noise mapping using smart phones, Pervasive and Mobile Computing, vol.17, 2015.

R. Ventura, V. Mallet, V. Issarny, P. G. Raverdy, and F. Rebhi, Evaluation and calibration of mobile phones for noise monitoring application, The Journal of the Acoustical Society of America, vol.142, p.5, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01676004

W. Wang, Q. Chang, Q. Li, Z. Shi, and W. Chen, Indoor-Outdoor Detection Using a Smart Phone Sensor, Sensors, vol.16, p.10, 2016.

D. Weir, S. Rogers, R. Murray-smith, and M. Lã?chtefeld, A user-specific machine learning approach for improving touch accuracy on mobile devices, Proc. ACM UIST, 2012.

E. Ih.-witten, M. A. Frank, C. J. Hall, and . Pal, Data mining practical machine learning tools and techniques, 2017.

J. Yang, E. Munguia-tapia, and S. Gibbs, Efficient in-pocket detection with mobile phones, Proc. ACM UbiComp, 2013.

O. Yurur, C. H. Liu, Z. Sheng, V. Leung, W. Moreno et al., Context-Awareness for Mobile Sensing: A Survey and Future Directions, IEEE Communications Surveys & Tutorials, vol.18, p.1, 2016.