A. U. Ahmed, N. W. Bergmann, R. Arablouei, B. Kusy, F. De-hoog et al., Poster Abstract: Fast Indoor Localization Using WiFi Channel State Information, 17th Int. Conf. on Information Processing in Sensor Networks (IPSN'19), pp.120-121, 2018.

C. Beder and M. Klepal, Fingerprinting based localisation revisited: A rigorous approach for comparing rssi measurements coping with missed access points and differing antenna attenuations, Int. Conf. on indoor positioning and indoor navigation (IPIN), pp.1-7, 2012.

D. Birant and A. Kut, ST-DBSCAN: An algorithm for clustering spatial-temporal data, Data & Knowledge Engineering, vol.60, issue.1, 2007.

N. Capurso, T. Song, W. Cheng, J. Yu, and X. Cheng, An Android-Based Mechanism for Energy Efficient Localization Depending on Indoor/Outdoor Context, IEEE Internet of Things Journal, vol.4, issue.2, pp.299-307, 2017.

G. Caso, L. De-nardis, F. Lemic, V. Handziski, A. Wolisz et al., Vifi: Virtual fingerprinting wifi-based indoor positioning via multi-wall multi-floor propagation model, IEEE Transactions on Mobile Computing, 2019.

M. S. Charikar, Similarity estimation techniques from rounding algorithms, 34th ACM Symp. on Theory of computing, pp.380-388, 2002.

T. Choi, Y. Chon, and H. Cha, Energy-efficient WiFi scanning for localization. Pervasive and Mobile Computing, vol.37, pp.124-138, 2017.

Y. A. De-montjoye, C. A. Hidalgo, M. Verleysen, and V. D. Blondel, Unique in the crowd: The privacy bounds of human mobility, Scientific reports, vol.3, p.1376, 2013.

D. Corte-valiente, A. Gómez-pulido, J. M. Gutiérrez-blanco, and O. , Efficient techniques and algorithms for improving indoor localization precision on wlan networks applications, Int. Journal of Communications, vol.2, issue.07, p.645, 2009.

N. Haderer, R. Rouvoy, and L. Seinturier, Dynamic Deployment of Sensing Experiments in the Wild Using Smartphones, 13th Int. Conf. on Distributed Applications and Interoperable Systems (DAIS'13), vol.7891, pp.43-56, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00804114

B. Hanoune, R. Kassi, B. Verbeke, E. Assy, L. Clavier et al., Conception and deployment of the Apolline sensor network for IAQ monitoring, 10th Int. Conf. on Indoor Air Quality, Ventilation and Energy Conservation in Buildings (IAQVEC'19), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02375414

S. He and S. H. Chan, Wi-fi fingerprint-based indoor positioning: Recent advances and comparisons, IEEE Communications Surveys & Tutorials, vol.18, issue.1, pp.466-490, 2015.

M. Jin, B. Koo, S. Lee, C. Park, M. J. Lee et al., IMU-assisted nearest neighbor selection for real-time WiFi fingerprinting positioning, Int. Conf. on Indoor Positioning and Indoor Navigation (IPIN'14), pp.745-748, 2014.

J. Krumm and E. Horvitz, Locadio: Inferring motion and location from wi-fi signal strengths, mobiquitous, pp.4-13, 2004.

H. Li, L. Sun, H. Zhu, X. Lu, and X. Cheng, Achieving privacy preservation in WiFi fingerprint-based localization, IEEE INFOCOM, pp.2337-2345, 2014.

Z. Li, X. Zhao, F. Hu, Z. Zhao, J. L. Carrera et al., Soicp: A seamless outdoor-indoor crowdsensing positioning system, IEEE internet of things journal, 2019.

H. Liu, Y. Gan, J. Yang, S. Sidhom, Y. Wang et al., Push the limit of WiFi based localization for smartphones, 18th Int. Conf. on Mobile computing and networking (Mobicom'12, p.305, 2012.

C. Luo, H. Hong, and M. C. Chan, Piloc: A self-calibrating participatory indoor localization system, 13th Int. Symp. on Information Processing in Sensor Networks (IPSN'14), pp.143-153, 2014.

A. Luxey, Y. D. Bromberg, F. M. Costa, V. Lima, R. C. Da-rocha et al., Sprinkler: A probabilistic dissemination protocol to provide fluid user interaction in multi-device ecosystems, Int. Conf. on Pervasive Computing and Communications (PerCom), pp.1-10, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01704172

D. Lymberopoulos and J. Liu, The microsoft indoor localization competition: Experiences and lessons learned, IEEE Signal Processing Magazine, vol.34, issue.5, pp.125-140, 2017.

L. Meftah, R. Rouvoy, and I. Chrisment, Fougere: User-centric location privacy in mobile crowdsourcing apps, Int. Conf. on Distributed Applications and Interoperable Systems (DAIS'19), pp.116-132, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02121311

L. Meftah, R. Rouvoy, and I. Chrisment, Testing nearby peer-to-peer mobile apps at large, 6th Int. Conf. on Mobile Software Engineering and Systems (MOBILE-Soft'19), pp.1-11, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02059088

Y. A. De-montjoye, J. Quoidbach, F. Robic, and A. S. Pentland, Predicting personality using novel mobile phone-based metrics, Int. Conf. on social computing, behavioral-cultural modeling, and prediction, pp.48-55, 2013.

T. B. Nguyen, T. Nguyen, W. Luo, S. Venkatesh, and D. Phung, Unsupervised inference of significant locations from wifi data for understanding human dynamics, 13th Int. Conf. on Mobile and Ubiquitous Multimedia, pp.232-235, 2014.

N. Paspallis and S. E. Alshaal, Improving qoe via context prediction: A case study of using wifi radiomaps to predict network disconnection, ICPE Companion, pp.31-34, 2017.

T. Pulkkinen, J. Verwijnen, and P. Nurmi, WiFi positioning with propagation-based calibration, 14th Int. Conf. on Information Processing in Sensor Networks (IPSN'15), pp.366-367, 2015.

J. Rekimoto, T. Miyaki, and T. Ishizawa, Lifetag: Wifi-based continuous location logging for life pattern analysis, In: LoCA, pp.35-49, 2007.

M. N. Sakib, J. B. Halim, and C. T. Huang, Determining location and movement pattern using anonymized WiFi access point BSSID, 7th Int. Conf. on Security Technology (SecTech'14), pp.11-14, 2015.

A. H. Salamah, M. Tamazin, M. A. Sharkas, and M. Khedr, An enhanced WiFi indoor localization System based on machine learning, 2016 Int. Conf. on Indoor Positioning and Indoor Navigation (IPIN'16), pp.1-8, 2016.

P. Sapiezynski, A. Stopczynski, R. Gatej, and S. Lehmann, Tracking human mobility using WiFi signals, PLoS ONE, vol.10, issue.7, 2015.

P. Sapiezynski, A. Stopczynski, D. K. Wind, J. Leskovec, and S. Lehmann, Offline behaviors of online friends, 2018.

G. Shen, Z. Chen, P. Zhang, T. Moscibroda, and Y. Zhang, Walkie-markie: Indoor pathway mapping made easy, 10th USENIX Symp. on Networked Systems Design and Implementation (NSDI'13, pp.85-98, 2013.

A. Stopczynski, V. Sekara, P. Sapiezynski, A. Cuttone, M. M. Madsen et al., Measuring large-scale social networks with high resolution, PloS one, vol.9, issue.4, p.95978, 2014.

D. K. Wind, P. Sapiezynski, M. A. Furman, and S. Lehmann, Inferring stop-locations from WiFi, PLoS ONE, vol.11, issue.2, 2016.

X. Xie, H. Xu, G. Yang, Z. H. Mao, W. Jia et al., Reuse of WiFi information for indoor monitoring of the elderly, 17th Int. Conf. on Information Reuse and Integration (IRI'16), pp.261-264, 2016.

S. Yiu, M. Dashti, H. Claussen, and F. Perez-cruz, Wireless rssi fingerprinting localization, 2017.

S. Yiu and K. Yang, Gaussian Process Assisted Fingerprinting Localization, IEEE Internet of Things Journal, vol.3, issue.5, pp.683-690, 2016.

P. A. Zandbergen, Accuracy of iphone locations: A comparison of assisted gps, wifi and cellular positioning, Transactions in GIS, vol.13, pp.5-25, 2009.

H. Zhang, Z. Yan, J. Yang, E. M. Tapia, and D. J. Crandall, Mfingerprint: Privacypreserving user modeling with multimodal mobile device footprints, Int. Conf. on Social Computing, Behavioral-Cultural Modeling, and Prediction, pp.195-203, 2014.

N. Zhang and J. Feng, Polaris: A fingerprint-based localization system over wireless networks, Int. Conf. on Web-Age Information Management, pp.58-70, 2012.