. Service, It leverages Wi-Fi Direct, p.2

A. A. Abbasi and M. Younis, A survey on clustering algorithms for wireless sensor networks, Computer communications, vol.30, pp.14-15, 2007.

Z. S. Abdallah, M. M. Gaber, and B. Srinivasan, Streamar: incremental and active learning with evolving sensory data for activity recognition, IEEE International Conference on Tools with Artificial Intelligence, vol.1, 2012.

A. B. Abkenar, S. W. Loke, and W. Rahayu, Energy considerations for continuous group activity recognition using mobile devices: The case of groupsense, IEEE International Conference on Advanced Information Networking and Applications, 2016.

A. B. Abkenar, S. W. Loke, and A. Zaslavsky, Garsaaas: Group activity recognition and situation analysis as a service, Journal of Internet Services and Applications, vol.10, issue.1, 2019.

E. Acar, D. M. Dunlavy, and T. G. Kolda, Scalable tensor factorizations for incomplete data, Chemometrics and Intelligent Laboratory Systems, vol.106, issue.1, 2011.

M. Ali, T. Elbatt, and M. Youssef, Senseio: Realistic ubiquitous indoor outdoor detection system using smartphones, Sensors Journal, vol.18, issue.9, 2018.

W. Alliance, Wi-fi peer-to-peer services (p2ps) technical specification, 2015.

D. Amaxilatis, E. Lagoudianakis, and G. Mylonas, Managing smartphone crowdsensing campaigns through the organicity smart city platform, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2016.

R. I. Ansari, C. Chrysostomou, and S. A. Hassan, 5g d2d networks: Techniques, challenges, and future prospects, vol.12, 2017.

A. Antoni?, M. Marjanovi?, and K. Pripu?i?, A mobile crowd sensing ecosystem enabled by cupus: Cloud-based publish/subscribe middleware for the internet of things, Future Generation Computer Systems, vol.56, 2016.

A. Antonic, K. Roankovic, and M. Marjanovic, A mobile crowdsensing ecosystem enabled by a cloud-based publish/subscribe middleware, IEEE International Conference on Future Internet of Things and Cloud, 2014.

A. Asadi and V. Mancuso, Wifi direct and lte d2d in action, IEEE/IFIP Wireless Days Conference, 2013.

A. Asadi, Q. Wang, and V. Mancuso, A survey on device-to-device communication in cellular networks, IEEE Communications Surveys & Tutorials, vol.16, issue.4, 2014.

R. Azzam, R. Mizouni, H. Otrok, and A. Ouali, Grs: A group-based recruitment system for mobile crowd sensing, Journal of Network and Computer Applications, vol.72, 2016.

J. Ballesteros, B. Carbunar, and M. Rahman, Towards safe cities: A mobile and social networking approach, IEEE Transactions on Parallel and Distributed Systems, vol.25, issue.9, 2013.

X. Bao and R. R. Choudhury, Movi: mobile phone based video highlights via collaborative sensing, ACM International Conference on Mobile Systems, Applications, and Services, 2010.

A. Baruch, A. May, and D. Yu, The motivations, enablers and barriers for voluntary participation in an online crowdsourcing platform, Computers in Human Behavior, vol.64, 2016.

D. Belli, S. Chessa, and L. Foschini, Enhancing mobile edge computing architecture with human-driven edge computing model, IEEE International Conference on Intelligent Environments, 2018.

D. Bonino, M. Alizo, and C. Pastrone, Wasteapp: Smarter waste recycling for smart citizens, IEEE International Multidisciplinary Conference on Computer and Energy Science, 2016.

A. Bose and C. H. Foh, A practical path loss model for indoor wifi positioning enhancement, IEEE International Conference on Information, Communications & Signal Processing, 2007.

U. Menegato, L. Souza, S. E. Cimino, and . Silva, Dynamic clustering in wifi direct technology, ACM International Symposium on Mobility Management and Wireless Access, 2014.

M. Budde, P. Barbera, and R. E. Masri, Retrofitting smartphones to be used as particulate matter dosimeters, ACM International Symposium on Wearable Computers, 2013.

N. Bulusu, C. T. Chou, and S. Kanhere, Participatory sensing in commerce: Using mobile camera phones to track market price dispersion, International Workshop on Urban, Community, and Social Applications of Networked Sensing Systems, 2008.

Y. Cao and D. J. Fleet, Generalized product of experts for automatic and principled fusion of gaussian process predictions, Modern Nonparametrics 3: Automating the Learning Pipeline workshop at NIPS, 2014.

A. Capponi, C. Fiandrino, and B. Kantarci, A survey on mobile crowdsensing systems: Challenges, solutions, and opportunities, IEEE Communications Surveys & Tutorials, vol.21, issue.3, 2019.

A. Capponi, C. Fiandrino, and D. Kliazovich, A cost-effective distributed framework for data collection in cloud-based mobile crowd sensing architectures, IEEE Transactions on Sustainable Computing, vol.2, issue.1, 2017.

N. Capurso, B. Mei, and T. Song, A survey on key fields of context awareness for mobile devices, Journal of Network and Computer Applications, vol.118, 2018.

I. Carreras, D. Miorandi, and A. Tamilin, Matador: Mobile task detector for context-aware crowd-sensing campaigns, IEEE International Conference on Pervasive Computing and Communications Workshops, 2013.

A. Carroll and G. Heiser, An analysis of power consumption in a smartphone, USENIX Annual Technical Conference, 2010.

C. Caruso and F. Quarta, Interpolation methods comparison, Computers & Mathematics with Applications, vol.35, issue.12, 1998.

D. Chatzopoulos, M. Ahmadi, and S. Kosta, Openrp: A reputation middleware for opportunistic crowd computing, IEEE Communications Magazine, vol.54, issue.7, 2016.

K. Chen and G. Tan, Satprobe: Low-energy and fast indoor/outdoor detection based on raw gps processing, IEEE International Conference on Computer Communications, 2017.

L. Chen, L. Wang, and D. Zhang, Enup: Energy-efficient data uploading for mobile crowd sensing applications, IEEE International Conferences on Ubiquitous Intelligence & Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Cloud and Big Data Computing, Internet of People, and Smart World Congress, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01466438

X. Chen, L. Pu, and L. Gao, Exploiting massive d2d collaboration for energy-efficient mobile edge computing, Wireless Communications, vol.24, issue.4, 2017.

Y. Chen, E. Rosensweig, and J. Kurose, Group detection in mobility traces, ACM International Wireless Communications and Mobile Computing Conference, 2010.

Y. Cheng, X. He, and Z. Zhou, Maptransfer: Urban air quality map generation for downscaled sensor deployments, ACM/IEEE International Conference on Internet of Things Design and Implementation, 2020.

Y. Chon, N. D. Lane, and Y. Kim, Understanding the coverage and scalability of place-centric crowdsensing, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2013.

Y. Chon, N. D. Lane, and F. Li, Automatically characterizing places with opportunistic crowdsensing using smartphones, ACM International Conference on Ubiquitous Computing, 2012.

S. Das, S. Chatterjee, and S. Chakraborty, Groupsense: A lightweight framework for group identification, IEEE Transactions on Mobile Computing, vol.18, issue.12, 2018.

M. De-domenico, A. Lima, and M. Musolesi, Interdependence and predictability of human mobility and social interactions, Pervasive and Mobile Computing, vol.9, issue.6, 2013.

P. O. De-melo, A. C. Viana, and M. Fiore, Recast: Telling apart social and random relationships in dynamic networks, Performance Evaluation, vol.87, 2015.
URL : https://hal.archives-ouvertes.fr/hal-00881804

M. P. Deisenroth and J. W. Ng, Distributed gaussian processes, International Conference on Machine Learning, 2015.

J. Dem?ar, T. Curk, and A. Erjavec, Orange: data mining toolbox in python, Journal of Machine Learning Research, vol.14, issue.1, 2013.

N. Do, Y. Zhao, and C. Hsu, Crowdsourced mobile data transfer with delay bound, ACM Transactions on Internet Technology, vol.16, issue.4, 2016.

T. M. Do and D. Gatica-perez, Human interaction discovery in smartphone proximity networks, Personal and Ubiquitous Computing, vol.17, issue.3, 2013.

Y. Du, In-network collaborative mobile crowdsensing, IEEE International Conference on Pervasive Computing and Communications PhD Forum, 2020.
URL : https://hal.archives-ouvertes.fr/hal-02463611

Y. Du, V. Issarny, and F. Sailhan, User-centric context inference for mobile crowdsensing, ACM International Conference on Internet of Things Design and Implementation, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02082034

, When the power of the crowd meets the intelligence of the middleware: The mobile phone sensing case, ACM SIGOPS Operating Systems Review, vol.53, issue.1, 2019.

Y. Du, F. Sailhan, and V. Issarny, Let opportunistic crowdsensors work together for resource-efficient, quality-aware observations, IEEE International Conference on Pervasive Computing and Communications, 2020.
URL : https://hal.archives-ouvertes.fr/hal-02463610

J. Dutta, P. Pramanick, and S. Roy, Noisesense: Crowdsourced context aware sensing for real time noise pollution monitoring of the city, IEEE International Conference on Advanced Networks and Telecommunications Systems, 2017.

P. Dutta, P. M. Aoki, and N. Kumar, Common sense: participatory urban sensing using a network of handheld air quality monitors, ACM Conference on Embedded Networked Sensor Systems, 2009.

K. Eldrandaly and A. Abdelmouty, Spatio-temporal interpolation: Current practices and future prospects, International Journal of Digital Content Technology and its Applications, vol.11, p.2017

M. Elhoushi, J. Georgy, and A. Noureldin, A survey on approaches of motion mode recognition using sensors, IEEE Transactions on intelligent transportation systems, vol.18, issue.7, 2016.

M. Ester, H. Kriegel, and J. Sander, A density-based algorithm for discovering clusters in large spatial databases with noise, ACM Conference on Knowledge Discovery and Data Mining, 1996.

K. Farrahi and D. Gatica-perez, Probabilistic mining of socio-geographic routines from mobile phone data, Journal of Selected Topics in Signal Processing, vol.4, issue.4, 2010.

, Discovering routines from large-scale human locations using probabilistic topic models, ACM Transactions on Intelligent Systems and Technology, vol.2, issue.1, 2011.

A. Farshad, M. K. Marina, and F. Garcia, Urban wifi characterization via mobile crowdsensing, IEEE Network Operations and Management Symposium, 2014.

M. Faulkner, R. Clayton, and T. Heaton, Community sense and response systems: Your phone as quake detector, Communications of the ACM, vol.57, issue.7, 2014.

R. K. Ganti, F. Ye, and H. Lei, Mobile crowdsensing: current state and future challenges, IEEE Communications Magazine, vol.49, issue.11, 2011.

H. Gao, C. H. Liu, and J. Tang, Online quality-aware incentive mechanism for mobile crowd sensing with extra bonus, IEEE Transactions on Mobile Computing, vol.18, issue.11, 2018.

M. Girolami, S. Chessa, and G. Adami, Sensing interpolation strategies for a mobile crowdsensing platform, IEEE International Conference on Mobile Cloud Computing, Services, and Engineering, 2017.

M. Girolami, S. Chessa, and M. Dragone, Using spatial interpolation in the design of a coverage metric for mobile crowdsensing systems, IEEE International Symposium on Computers and Communication, 2016.

L. Grasedyck, D. Kressner, and C. Tobler, A literature survey of low-rank tensor approximation techniques, GAMM-Mitteilungen, vol.36, issue.1, 2013.

S. Grube?a, A. Peto?i?, and M. Suhanek, Mobile crowdsensing accuracy for noise mapping in smart cities, Automatika, vol.59, issue.3-4, 2018.

J. Gubbi, R. Buyya, and S. Marusic, Internet of things (iot): A vision, architectural elements, and future directions, Future Generation Computer Systems, vol.29, issue.7, 2013.

R. E. Guinness, Beyond where to how: A machine learning approach for sensing mobility contexts using smartphone sensors, Sensors, vol.15, issue.5, 2015.

B. Guo, Z. Wang, and Z. Yu, Mobile crowd sensing and computing: The review of an emerging human-powered sensing paradigm, ACM Computing Surveys, vol.48, issue.1, 2015.

B. Guo, Z. Yu, and X. Zhou, From participatory sensing to mobile crowd sensing, IEEE International Conference on Pervasive Computing and Communication Workshops, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01262359

S. Hachem, V. Mallet, and R. Ventura, Monitoring noise pollution using the urban civics middleware, IEEE International Conference on Big Data Computing Service and Applications, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01109321

S. Hachem, A. Pathak, and V. Issarny, Probabilistic registration for largescale mobile participatory sensing, IEEE International Conference on Pervasive Computing and Communications, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00769087

, Service-oriented middleware for large-scale mobile participatory sensing, Pervasive and Mobile Computing, vol.10, 2014.

K. Hänsel, H. Haddadi, and A. Alomainy, Awsense: A framework for collecting sensing data from the apple watch, ACM International Conference on Mobile Systems, Applications, and Services, 2017.

P. Harris, A. Fotheringham, and R. Crespo, The use of geographically weighted regression for spatial prediction: an evaluation of models using simulated data sets, Mathematical Geosciences, vol.42, issue.6, 2010.

D. Hasenfratz, O. Saukh, and S. Sturzenegger, Participatory air pollution monitoring using smartphones, ACM International Workshop on Mobile Sensing, 2012.

A. Hassani, P. D. Haghighi, and P. P. Jayaraman, Context-aware recruitment scheme for opportunistic mobile crowdsensing, IEEE International Conference on Parallel and Distributed Systems, 2015.

J. Hicks, N. Ramanathan, and D. Kim, Andwellness: an open mobile system for activity and experience sampling, 2010.

T. Higuchi, H. Yamaguchi, and T. Higashino, Context-supported local crowd mapping via collaborative sensing with mobile phones, Pervasive and Mobile Computing, vol.13, 2014.

T. Higuchi, H. Yamaguchi, and T. Higashino, A neighbor collaboration mechanism for mobile crowd sensing in opportunistic networks, IEEE International Conference on Communications, 2014.

R. V. Hogg, E. A. Tanis, and D. L. Zimmerman, Probability and statistical inference, 2010.

S. Hyuga, M. Ito, and M. Iwai, Estimate a user's location using smartphone's barometer on a subway, ACM International Workshop on Mobile Entity Localization and Tracking in GPS-less Environments, 2015.

A. Ignatov, R. Timofte, and W. Chou, Ai benchmark: Running deep neural networks on android smartphones, European Conference on Computer Vision, 2018.

V. Issarny, V. Mallet, and K. Nguyen, Dos and don'ts in mobile phone sensing middleware: Learning from a large-scale experiment, ACM International Middleware Conference, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01366610

P. P. Jayaraman, J. B. Gomes, and H. Nguyen, Scalable energy-efficient distributed data analytics for crowdsensing applications in mobile environments, IEEE Transactions on Computational Social Systems, vol.2, issue.3, 2015.

P. P. Jayaraman, C. Perera, and D. Georgakopoulos, Efficient opportunistic sensing using mobile collaborative platform mosden, IEEE International Conference on Collaborative Computing: Networking, Applications and Worksharing, 2013.

P. Jesus, C. Baquero, and P. S. Almeida, A survey of distributed data aggregation algorithms, IEEE Communications Surveys & Tutorials, vol.17, issue.1, 2014.

C. Jiang, L. Gao, and L. Duan, Scalable mobile crowdsensing via peer-topeer data sharing, IEEE Transactions on Mobile Computing, vol.17, issue.4, 2017.

H. Jin, L. Su, and D. Chen, Thanos: Incentive mechanism with quality awareness for mobile crowd sensing, IEEE Transactions on Mobile Computing, vol.18, issue.8, 2018.

H. Jin, L. Su, and H. Xiao, Incentive mechanism for privacy-aware data aggregation in mobile crowd sensing systems, IEEE Transactions on Networking, vol.26, issue.5, 2018.

J. Jin, J. Gubbi, and S. Marusic, An information framework for creating a smart city through internet of things, IEEE Internet of Things Journal, vol.1, issue.2, 2014.

O. Juhlin and M. Östergren, Time to meet face-to-face and device-to-device, ACM Conference on Human-Computer Interaction with Mobile Devices and Services, 2006.

C. Julien, Opportunistic crowds: A place for device-to-device collaboration in pervasive crowd applications, IEEE International Conference on Pervasive Computing and Communications Workshops, 2019.

C. Julien, C. Liu, and A. L. Murphy, Blend: practical continuous neighbor discovery for bluetooth low energy, ACM International Conference on Information Processing in Sensor Networks, 2017.

T. Kalbarczyk and C. Julien, Omni: An application framework for seamless device-to-device interaction in the wild, ACM International Middleware Conference, 2018.

G. Kalic, I. Bojic, and M. Kusek, Energy consumption in android phones when using wireless communication technologies, IEEE International Convention MIPRO, 2012.

T. Kandappu, A. Mehrotra, A. Misra, and M. Musolesi, Pokeme: Applying context-driven notifications to increase worker engagement in mobile crowd-sourcing, ACM Conference on Human Information Interaction and Retrieval, 2020.

X. Kang, L. Liu, and H. Ma, Data correlation based crowdsensing enhancement for environment monitoring, IEEE International Conference on Communications, 2016.

, Enhance the quality of crowdsensing for fine-grained urban environment monitoring via data correlation, Sensors, vol.17, issue.1, 2017.

S. S. Kanhere, Participatory sensing: Crowdsourcing data from mobile smartphones in urban spaces, International Conference on Distributed Computing and Internet Technology, 2013.

M. Karaliopoulos, O. Telelis, and I. Koutsopoulos, User recruitment for mobile crowdsensing over opportunistic networks, IEEE International Conference on Computer Communications, 2015.

K. Katevas, H. Haddadi, and L. Tokarchuk, Sensingkit: A multi-platform mobile sensing framework for large-scale experiments, ACM International Conference on Mobile Computing and Networking, 2014.

M. A. Khan and N. Roy, Untran: Recognizing unseen activities with unlabeled data using transfer learning, IEEE/ACM International Conference on Internet-of-Things Design and Implementation, 2018.

M. A. Khan, W. Cherif, and F. Filali, Group owner election in wi-fi direct, IEEE Annual Ubiquitous Computing, Electronics & Mobile Communication Conference, 2016.

M. A. Khan, W. Cherif, and F. Filali, Wi-fi direct research-current status and future perspectives, Journal of Network and Computer Applications, vol.93, 2017.

S. Kim, C. Robson, and T. Zimmerman, Creek watch: pairing usefulness and usability for successful citizen science, ACM Conference on Human Factors in Computing Systems, 2011.

N. Kiukkonen, J. Blom, and O. Dousse, Towards rich mobile phone datasets: Lausanne data collection campaign, ACM International Conference on Pervasive Services, 2010.

L. Kong, M. Xia, and X. Liu, Data loss and reconstruction in sensor networks, IEEE International Conference on Computer Communications, 2013.

I. Koukoutsidis, Estimating spatial averages of environmental parameters based on mobile crowdsensing, ACM Transactions on Sensor Networks, vol.14, issue.1, 2017.

J. Kwak, J. Kim, and S. Chong, Proximity-aware location based collaborative sensing for energy-efficient mobile devices, IEEE Transactions on Mobile Computing, vol.18, issue.2, 2018.

N. D. Lane, Community-aware smartphone sensing systems, Internet Computing, vol.16, issue.3, 2012.

N. D. Lane, Y. Chon, and L. Zhou, Piggyback crowdsensing (pcs) energy efficient crowdsourcing of mobile sensor data by exploiting smartphone app opportunities, ACM International Conference on Embedded Networked Sensor Systems, 2013.

N. D. Lane, S. B. Eisenman, and M. Musolesi, Urban sensing systems: opportunistic or participatory, ACM International Workshop on Mobile Computing Systems and Applications, 2008.

N. D. Lane, P. Georgiev, and L. Qendro, Deepear: robust smartphone audio sensing in unconstrained acoustic environments using deep learning, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2015.

N. D. Lane, E. Miluzzo, and H. Lu, A survey of mobile phone sensing, IEEE Communications Magazine, vol.48, issue.9, 2010.

J. K. Laurila, D. Gatica-perez, and I. Aad, The mobile data challenge: Big data for mobile computing research, EPFL Infoscience, 2012.

B. Lefevre, R. Agarwal, and V. Issarny, Mobile crowd-sensing as a resource for contextualized urban public policies: a study using three use cases on noise and soundscape monitoring, Cities & Health, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02127052

B. Lefevre and V. Issarny, Matching technological & societal innovations: the social design of a mobile collaborative app for urban noise monitoring, IEEE International Conference on Smart Computing, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01801314

H. Li, T. Li, and W. Wang, Dynamic participant selection for large-scale mobile crowd sensing, IEEE Transactions on Mobile Computing, vol.18, issue.12, 2019.

H. Li, T. Li, and Y. Wang, Dynamic participant recruitment of mobile crowd sensing for heterogeneous sensing tasks, IEEE International Conference on Mobile Ad Hoc and Sensor Systems, 2015.

M. Li, P. Zhou, and Y. Zheng, Iodetector: A generic service for indoor/outdoor detection, ACM Transactions on Sensor Networks, vol.11, issue.2, 2014.

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

Z. Li, S. Yang, and F. Wu, Holmes: Tackling data sparsity for truth discovery in location-aware mobile crowdsensing, IEEE International Conference on Mobile Ad Hoc and Sensor Systems, 2018.

C. Liu, J. Hua, and C. Julien, Scents: Collaborative sensing in proximity iot networks, IEEE International Conference on Pervasive Computing and Communications Workshops, 2019.

C. H. Liu, B. Zhang, and X. Su, Energy-aware participant selection for smartphone-enabled mobile crowd sensing, Systems Journal, vol.11, issue.3, 2017.

H. Liu, Y. Ong, and X. Shen, When gaussian process meets big data: A review of scalable gps, IEEE Transactions on Neural Networks and Learning Systems, 2020.

J. Liu, D. Sacchetti, and F. Sailhan, Group management for mobile ad hoc networks: Design, implementation and experiment, ACM International Conference on Mobile Data Management, 2005.
URL : https://hal.archives-ouvertes.fr/inria-00414945

J. Liu, H. Shen, and H. S. Narman, A survey of mobile crowdsensing techniques: A critical component for the internet of things, ACM Transactions on Cyber-Physical Systems, vol.2, issue.3, 2018.

K. Liu, W. Shen, and B. Yin, Development of mobile ad-hoc networks over wi-fi direct with off-the-shelf android phones, IEEE International Conference on Communications, 2016.

S. Liu, Z. Zheng, and F. Wu, Context-aware data quality estimation in mobile crowdsensing, IEEE International Conference on Computer Communications, 2017.

T. Liu, J. Nicholas, and M. M. Theilig, Machine learning for phone-based relationship estimation: The need to consider population heterogeneity, Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, vol.3, issue.4, 2019.

Y. Liu, L. Kong, and G. Chen, Data-oriented mobile crowdsensing: A comprehensive survey, IEEE Communications Surveys & Tutorials, vol.21, issue.3, 2019.

Z. Liu, H. Park, and Z. Chen, An energy-efficient and robust indoor-outdoor detection method based on cell identity map, Procedia Computer Science, vol.56, 2015.

H. Lu, W. Pan, and N. D. Lane, Soundsense: scalable sound sensing for people-centric applications on mobile phones, ACM International Conference on Mobile Systems, Applications, and Services, 2009.

H. Lu, J. Yang, and Z. Liu, The jigsaw continuous sensing engine for mobile phone applications, ACM International Conference on Embedded Networked Sensor Systems, 2010.

D. Luo, H. Luo, and C. Zili, An indoor scene recognition algorithm based on pressure change pattern, IEEE International Conference on Intelligent Computation Technology and Automation, 2015.

H. Ma, D. Zhao, and P. Yuan, Opportunities in mobile crowd sensing, IEEE Communications Magazine, vol.52, issue.8, 2014.

S. Madhani, M. Tauil, and T. Zhang, Collaborative sensing using uncontrolled mobile devices, IEEE International Conference on Collaborative Computing: Networking, Applications and Worksharing, 2005.

N. Maisonneuve, M. Stevens, and M. E. Niessen, Noisetube: Measuring and mapping noise pollution with mobile phones, 2009.

M. K. Marina, V. Radu, and K. Balampekos, Impact of indoor-outdoor context on crowdsourcing based mobile coverage analysis, ACM International Workshop on All Things Cellular: Operations, Applications and Challenges, 2015.

M. Marjanovi?, L. Skorin-kapov, and K. Pripu?i?, Energy-aware and quality-driven sensor management for green mobile crowd sensing, Journal of Network and Computer Applications, vol.59, 2016.

T. J. Matarazzo, P. Santi, and S. N. Pakzad, Crowdsensing framework for monitoring bridge vibrations using moving smartphones, Proceedings of the IEEE, vol.106, issue.4, 2018.

G. Melo, L. Oliveira, and D. Schneider, Towards an observatory for mobile participatory sensing applications, IEEE International Conference on Computer Supported Cooperative Work in Design, 2017.

D. Mendez, M. Labrador, and K. Ramachandran, Data interpolation for participatory sensing systems, Pervasive and Mobile Computing, vol.9, issue.1, 2013.

E. Miluzzo, M. Papandrea, and N. D. Lane, Tapping into the vibe of the city using vibn, a continuous sensing application for smartphones, ACM International Symposium on From Digital Footprints to Social and Community Intelligence, 2011.

B. Minasny and A. B. Mcbratney, The matérn function as a general model for soil variograms, Geoderma, vol.128, issue.3-4, 2005.

F. Montori, L. Bedogni, and L. Bononi, A collaborative internet of things architecture for smart cities and environmental monitoring, IEEE Internet of Things Journal, vol.5, issue.2, 2017.

V. F. Mota, D. F. Macedo, and Y. Ghamri-doudane, Managing the decisionmaking process for opportunistic mobile data offloading, IEEE Network Operations and Management Symposium, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01832566

V. F. Mota, T. H. Silva, and D. F. Macedo, Towards scalable mobile crowdsensing through device-to-device communication, Journal of Network and Computer Applications, vol.122, 2018.

J. Ni, K. Zhang, and Y. Yu, Providing task allocation and secure deduplication for mobile crowdsensing via fog computing, IEEE Transactions on Dependable and Secure Computing, 2018.

O. Ohashi and L. Torgo, Spatial interpolation using multiple regression, IEEE International Conference on Data Mining, 2012.

V. Pankratius, F. Lind, and A. Coster, Mobile crowd sensing in space weather monitoring: the mahali project, IEEE Communications Magazine, vol.52, issue.8, 2014.

F. Pedregosa, G. Varoquaux, and A. Gramfort, Scikit-learn: Machine learning in python, Journal of Machine Learning Research, vol.12, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

D. Peng, F. Wu, and G. Chen, Pay as how well you do: A quality based incentive mechanism for crowdsensing, ACM International Symposium on Mobile Ad Hoc Networking and Computing, 2015.

C. Perera, D. S. Talagala, and C. H. Liu, Energy-efficient location and activity-aware on-demand mobile distributed sensing platform for sensing as a service in iot clouds, IEEE Transactions on Computational Social Systems, vol.2, issue.4, 2015.

C. Perera, A. Zaslavsky, and P. Christen, Context-aware sensor search, selection and ranking model for internet of things middleware, IEEE International Conference on Mobile Data Management, 2013.

, Sensing as a service model for smart cities supported by internet of things, Transactions on Emerging Telecommunications Technologies, vol.25, issue.1, 2014.

A. Phan, P. Tichavsk?, and A. Cichocki, Fast alternating ls algorithms for high order candecomp/parafac tensor factorizations, IEEE Transactions on Signal Processing, vol.61, issue.19, 2013.

J. Phuttharak and S. W. Loke, A review of mobile crowdsourcing architectures and challenges: Toward crowd-empowered internet-of-things, IEEE Access, vol.7, 2018.

I. Zarko, A. Antonic, and K. Pripu?ic, Publish/subscribe middleware for energy-efficient mobile crowdsensing, ACM International Conference on Pervasive and Ubiquitous Computing Adjunct Publication, 2013.

Z. Qin and Y. Zhu, Noisesense: A crowd sensing system for urban noise mapping service, IEEE International Conference on Parallel and Distributed Systems, 2016.

V. Radu, P. Katsikouli, and R. Sarkar, A semi-supervised learning approach for robust indoor-outdoor detection with smartphones, ACM International Conference on Embedded Network Sensor Systems, 2014.

R. Rana, C. T. Chou, and N. Bulusu, Ear-phone: A context-aware noise mapping using smart phones, Pervasive and Mobile Computing, vol.17, 2015.

R. K. Rana, C. T. Chou, and S. S. Kanhere, Ear-phone: an end-to-end participatory urban noise mapping system, ACM/IEEE International Conference on Information Processing in Sensor Networks, 2010.

C. E. Rasmussen, Gaussian processes in machine learning, Springer Summer School on Machine Learning, 2003.

S. Reddy, A. Parker, and J. Hyman, Image browsing, processing, and clustering for participatory sensing: lessons from a dietsense prototype, ACM Workshop on Embedded Networked Sensors, 2007.

F. Restuccia, P. Ferraro, and S. Silvestri, Incentme: effective mechanism design to stimulate crowdsensing participants with uncertain mobility, IEEE Transactions on Mobile Computing, vol.18, issue.7, 2018.

F. Sailhan, V. Issarny, and O. Tavares-nascimiento, Opportunistic multiparty calibration for robust participatory sensing, IEEE International Conference on Mobile Ad Hoc and Sensor Systems, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01599377

M. Saloni, C. Julien, and A. L. Murphy, Lasso: A device-to-device group monitoring service for smart cities, IEEE International Smart Cities Conference, 2017.

S. Sarma, N. Venkatasubramanian, and N. Dutt, Sense-making from distributed and mobile sensing data: A middleware perspective, ACM Annual Design Automation Conference, 2014.

M. Satyanarayanan, The emergence of edge computing, Computer, vol.50, issue.1, 2017.

I. Schweizer, R. Bärtl, and A. Schulz, Noisemap-real-time participatory noise maps, International Workshop on Sensing Applications on Mobile Phones, 2011.

X. Sheng, J. Tang, and W. Zhang, Energy-efficient collaborative sensing with mobile phones, IEEE International Conference on Computer Communications, 2012.

W. Sherchan, P. P. Jayaraman, and S. Krishnaswamy, Using on-the-move mining for mobile crowdsensing, IEEE International Conference on Mobile Data Management, 2012.

J. Shi, R. Zhang, and Y. Liu, Prisense: privacy-preserving data aggregation in people-centric urban sensing systems, IEEE International Conference on Computer Communications, 2010.

W. Shi, J. Cao, and Q. Zhang, Edge computing: Vision and challenges, IEEE Internet of Things Journal, vol.3, issue.5, 2016.

V. Singh, D. Chander, and U. Chhaparia, Safestreet: An automated road anomaly detection and early-warning system using mobile crowdsensing, IEEE International Conference on Communication Systems & Networks, 2018.

V. Sivaraman, J. Carrapetta, and K. Hu, Hazewatch: A participatory sensor system for monitoring air pollution in Sydney, IEEE Conference on Local Computer Networks-Workshops, 2013.

M. Stevens, E. , and D. Hondt, Crowdsourcing of pollution data using smartphones, Workshop on Ubiquitous Crowdsourcing, 2010.

M. Talasila, R. Curtmola, and C. Borcea, Mobile crowd sensing, Handbook of Sensor Networking: Advanced Technologies and Applications, 2015.

M. N. Tehrani, M. Uysal, and H. Yanikomeroglu, Device-to-device communication in 5g cellular networks: challenges, solutions, and future directions, IEEE Communications Magazine, vol.52, issue.5, 2014.

D. D. Teixeira, A. C. Viana, and M. S. Alvim, Deciphering predictability limits in human mobility, ACM International Conference on Advances in Geographic Information Systems, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02286128

G. Texier and V. Issarny, Leveraging the power of the crowd and offloading urban iot networks to extend their lifetime, IEEE International Symposium on Local and Metropolitan Area Networks, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01813313

N. Thepvilojanapong, S. Konomi, and Y. Tobe, Opportunistic collaboration in participatory sensing environments, ACM International Workshop on Mobility in the Evolving Internet Architecture, 2010.

M. Umer, L. Kulik, and E. Tanin, Spatial interpolation in wireless sensor networks: localized algorithms for variogram modeling and kriging, Geoinformatica, vol.14, issue.1, 2010.

R. Ventura, V. Mallet, and V. Issarny, Assimilation of mobile phone measurements for noise mapping of a neighborhood, Journal of the Acoustical Society of America, vol.144, issue.3, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01909933

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

H. Wackernagel, Multivariate geostatistics: an introduction with applications, 2013.

E. Wang, Y. Yang, and J. Wu, An efficient prediction-based user recruitment for mobile crowdsensing, IEEE Transactions on Mobile Computing, vol.17, issue.1, 2017.

J. Wang, F. Wang, and Y. Wang, Social-network-assisted worker recruitment in mobile crowd sensing, IEEE Transactions on Mobile Computing, vol.18, issue.7, 2018.

, Allocating heterogeneous tasks in participatory sensing with diverse participant-side factors, IEEE Transactions on Mobile Computing, vol.18, issue.9, 2019.

J. Wang, Y. Wang, and S. , A context-driven worker selection framework for crowd-sensing, International Journal of Distributed Sensor Networks, vol.12, issue.3, 2016.

J. Wang, Y. Wang, and D. Zhang, Learning-assisted optimization in mobile crowd sensing: A survey, IEEE Transactions on Industrial Informatics, vol.15, issue.1, 2018.

L. Wang, D. Zhang, and A. Pathak, Ccs-ta: Quality-guaranteed online task allocation in compressive crowdsensing, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01259541

L. Wang, D. Zhang, and Y. Wang, Sparse mobile crowdsensing: challenges and opportunities, IEEE Communications Magazine, vol.54, issue.7, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01346728

L. Wang, D. Zhang, and H. Xiong, effsense: energy-efficient and cost-effective data uploading in mobile crowdsensing, ACM International Conference on Pervasive and Ubiquitous Computing Adjunct Publication, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01258177

L. Wang, D. Zhang, and H. Xiong, ecosense: Minimize participants' total 3g data cost in mobile crowdsensing using opportunistic relays, IEEE Transactions on Systems, Man, and Cybernetics: Systems, vol.47, issue.6, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01534510

L. Wang, D. Zhang, and Z. Yan, effsense: A novel mobile crowd-sensing framework for energy-efficient and cost-effective data uploading, IEEE Transactions on Systems, Man, and Cybernetics: Systems, vol.45, issue.12, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01258438

W. Wang, Q. Chang, and Q. Li, Indoor-outdoor detection using a smart phone sensor, Sensors, vol.16, issue.10, 2016.

X. Wang, R. Jia, and X. Tian, Location-aware crowdsensing: Dynamic task assignment and truth inference, IEEE Transactions on Mobile Computing, vol.19, issue.2, 2018.

D. Weir, S. Rogers, and R. Murray-smith, A user-specific machine learning approach for improving touch accuracy on mobile devices, ACM International Symposium on User Interface Software and Technology, 2012.

J. Wen, S. Loke, and J. Indulska, Sensor-based activity recognition with dynamically added context, EAI International Conference on Mobile and Ubiquitous Systems: Computing, Networking and Services, 2015.

J. Weppner and P. Lukowicz, Bluetooth based collaborative crowd density estimation with mobile phones, IEEE International conference on pervasive computing and communications, 2013.

D. C. Wheeler and A. Páez, Geographically weighted regression," in Handbook of applied spatial analysis, 2010.

I. H. Witten, E. Frank, and M. A. Hall, Data mining: practical machine learning tools and techniques, 2017.

C. Xiang, P. Yang, and S. Xiao, Counter-strike: accurate and robust identification of low-level radiation sources with crowd-sensing networks, Personal and Ubiquitous Computing, vol.21, issue.1, 2017.

Y. Xiao, P. Simoens, and P. Pillai, Lowering the barriers to large-scale mobile crowdsensing, ACM International Workshop on Mobile Computing Systems and Applications, 2013.

H. Xiong, D. Zhang, and G. Chen, icrowd: Near-optimal task allocation for piggyback crowdsensing, IEEE Transactions on Mobile Computing, vol.15, issue.8, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01347999

L. Xu, X. Hao, and N. D. Lane, More with less: Lowering user burden in mobile crowdsourcing through compressive sensing, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2015.

Q. Xu and R. Zheng, Mobibee: a mobile treasure hunt game for locationdependent fingerprint collection, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2016.

X. Xu, R. Ansari, and A. Khokhar, Hierarchical data aggregation using compressive sensing (hdacs) in wsns, ACM Transactions on Sensor Networks, vol.11, issue.3, 2015.

Y. Xu, Y. Zhu, and Z. Qin, Urban noise mapping with a crowd sensing system, Wireless Networks, vol.25, issue.5, 2019.

J. Yang, E. Munguia-tapia, and S. Gibbs, Efficient in-pocket detection with mobile phones, ACM International Conference on Pervasive and Ubiquitous Computing Adjunct Publication, 2013.

S. Yang, J. Bian, and L. Wang, Edgesense: Edge-mediated spatial-temporal crowdsensing, IEEE Access, vol.7, 2018.

Y. Yang, W. Liu, and E. Wang, A prediction-based user selection framework for heterogeneous mobile crowdsensing, IEEE Transactions on Mobile Computing, vol.18, issue.11, 2019.

J. Yoo and K. H. Park, A cooperative clustering protocol for energy saving of mobile devices with wlan and bluetooth interfaces, IEEE Transactions on Mobile Computing, vol.10, issue.4, 2010.

Ö. Yürür, C. H. Liu, and Z. Sheng, Context-awareness for mobile sensing: A survey and future directions, IEEE Communications Surveys & Tutorials, vol.18, issue.1, 2014.

W. Zamora, C. T. Calafate, and J. Cano, A survey on smartphone-based crowdsensing solutions, Mobile Information Systems, vol.2016, 2016.

A. Zanella, N. Bui, and A. Castellani, Internet of things for smart cities, IEEE Internet of Things Journal, vol.1, issue.1, 2014.

Y. Zhan and H. Haddadi, Towards automating smart homes: contextual and temporal dynamics of activity prediction, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2019.

D. Zhang, L. Wang, and H. Xiong, 4w1h in mobile crowd sensing, IEEE Communications Magazine, vol.52, issue.8, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01078233

X. Zhang, Z. Yang, and W. Sun, Incentives for mobile crowd sensing: A survey, IEEE Communications Surveys & Tutorials, vol.18, issue.1, 2015.

X. Zhang, L. Shu, and Z. Huo, A short review of constructing noise map using crowdsensing technology, Springer International Conference on Collaborative Computing: Networking, Applications and Worksharing, 2017.

Y. Zheng, T. Liu, and Y. Wang, Diagnosing new york city's noises with ubiquitous data, ACM International Joint Conference on Pervasive and Ubiquitous Computing, 2014.

Z. Zhou, J. Feng, and B. Gu, When mobile crowd sensing meets uav: Energy-efficient task assignment and route planning, IEEE Transactions on Communications, vol.66, issue.11, 2018.

Q. Zhu, M. Y. Uddin, and N. Venkatasubramanian, Spatiotemporal scheduling for crowd augmented urban sensing, IEEE International Conference on Computer Communications, 2018.