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Smartphone Sensing: Testbeds and Applications

Smartphone Sensing: Testbeds and Applications. Demetris Zeinalipour Assistant Professor Department of Computer Science University of Cyprus. "Workshop on Social Platforms for Urban Sensing", Monday, Feb 11, 2013, 15:00 - 18:00, New Campus, University of Cyprus.

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Smartphone Sensing: Testbeds and Applications

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  1. Smartphone Sensing: Testbeds and Applications Demetris Zeinalipour Assistant Professor Department of Computer Science University of Cyprus "Workshop on Social Platforms for Urban Sensing", Monday, Feb 11, 2013, 15:00 - 18:00, New Campus, University of Cyprus

  2. 2011 - current : The Post-PC Era Oct. 8, 2011. The Economist. "Beyond the PC" 02/2012: Canalys Device Ship. 2011 Annual growth Smartphones 487.7 62.7% Total PCs 414.6 14.8% - Notebooks 209.6 7.5% - Desktops 112.4 2.3% - Tablets 63.2 274.2% - Netbooks 29.4 -25.3% 06/2012: IDC 1.6 B mobiles phones shipped in 2011. (Gartner: PCs in use will reach 2B in 2014! 1.7 B units in 2012 . (61% Android, 20.5% iOS, 5.2% Win) 2.2 B units in 2016. (53% Android, 19.2% iOS, 19% Win)

  3. Smartphones: Networking Wireless Data Transfer Rates • 4G ITU peak rates: • 100 Mbps (high mobility, such as trains and cars) • 1Gbps (low mobility, such as pedestrians and stationary users) Plot Courtesy of H. Kim, N. Agrawal, and C. Ungureanu, "Revisiting Storage for Smartphones", The 10th USENIX Conference on File and Storage Technologies (FAST'12), San Jose, CA, February 2012. *** Best Paper Award ***

  4. 1 Smartphone = ~1M Applications Apple App Store: 700,000 apps Google Play Store: 675,000 apps Graphic Courtesy of: Cnet.com / September 27, 2012

  5. N Smartphones = ? Applications Smartphone Network: Many Smartphones sensing and communicating without explicit user interactions in order to realize a collaborative task.”

  6. Smartphone Networks: The Past Mapping Road Traffic with fixed cameras & sensors mounted on roadsides? http://www.rta.nsw.gov.au/

  7. Smartphone Networks Mapping the Road traffic by collecting WiFi signals. Received Signal Strength (RSS): power present in WiFi radio signal Graphics courtesy of: A .Thiagarajan et. al. “Vtrack: Accurate, Energy-Aware Road Traffic Delay Estimation using Mobile Phones, In Sensys’09, pages 85-98. ACM, (Best Paper) MIT’s CarTel Group

  8. Smartphone Networks • Monitoring Urban Spaces • Traffic (VTrack@MIT), Road Quality (PotHole @MIT), Air Quality (HazeWatch,CommonSense @ UNSW), Noise Pollution (Earphone), ... NoiseMap "Ear-Phone: An End-to-End Participatory Urban Noise Mapping System " Rajib Rana, Chun Tung Chou, Salil Kanhere, Nirupama Bulusu, and Wen Hu. In ACM/IEEE IPSN 10, SPOTS Track, Stockholm, Sweden, April 2010.

  9. SmartLab: Programming Cloud • Currently, there are no testbeds (like motelab, planetlab) for realistically prototyping Smartphone Network applications and protocols at a large scale. • Currently applications are tested in emulators. • Sensors are not emulated.  • Reprogramming is difficult.  • SmartLab (http://smartlab.cs.ucy.ac.cy/) is a first-of-a-kind programmable cloud of 40+ smartphones deployed at our department enabling a new line of systems-oriented research on smartphones. [J15]"Crowdsourcing with Smartphones", Georgios Chatzimiloudis, Andreas Konstantinides, Christos Laoudias, Demetrios Zeinalipour-Yazti IEEE Internet Computing (IC '12), Special Issue: Sep/Oct 2012 - Crowdsourcing, May 2012. IEEE Press, 2012 [C38]"Demo: A Programming Cloud of Smartphones", A. Konstantinidis, C. Costa, G. Larkou and D. Zeinalipour-Yazti, "Demo at the 10th International Conference on Mobile Systems, Applications and Services" (Mobisys '12), Low Wood Bay, Lake District, UK, 2012.

  10. SmartLab: GUI video http://smartlab.cs.ucy.ac.cy/

  11. SmartLab: Applications SQLite Benchmarking on Android (EPL646) Trajectory Benchmarking (TKDE'12) [J14] "Crowdsourced Trace Similarity with Smartphones", Demetrios Zeinalipour-Yazti and Christos Laoudias and Costantinos Costa and Michalis Vlachos and Maria I. Andreou and Dimitrios Gunopulos, IEEE Transactions on Knowledge and Data Engineering (TKDE '12), IEEE Computer Society, Volume 99, Los Alamitos CA USA, 2012.

  12. SmartLab: Architecture

  13. SmartLab: Connectivity

  14. SmartLab: I/O Latency Push/Install Quickly

  15. SmartLab Programming Cloud Optimized Screen Capture

  16. SmartLab Programming Cloud Optimized Screen Capture

  17. SmartLab Programming Cloud Sensor/GPS Mockup Subsystem

  18. Research Focus Data Management in Systems and Networks (Sensor, Smartphone, P2P, Crowds, …) Word cloud on titles of venues I have published at. / wordle.net Distributed Query Processing, Storage and Retrieval Methods for Sensor, Smartphone and Peer-to-Peer Systems, Mobile and Network Data Management, Energy-aware Data Management.

  19. Airplace: "Sensing" your Location video • A-GPS localization - Drawbacks: • suffers from high-energy drain • RSS Localization with Airplace • Collaboration with KIOS lead to a prototype system for a well-known Taiwanese entertainment company! • VectorMap obfuscates user location with a bloom vector [C42]"The Airplace Indoor Positioning Platform for Android Smartphones", C. Laoudias, G. Constantinou, M. Constantinides, S. Nicolaou, D. Zeinalipour-Yazti, C. G. Panayiotou, "Demo at the 13th IEEE International Conference on Mobile Data Management (Best Demo Award!)" (MDM '12), IEEE Computer Society, Bangalore, India, 2012. [C40]"Towards In-Situ Localization on Smartphones with a Partial Radiomap", Andreas Konstantinidis, Georgios Chatzimilioudis, Christos Laoudias, Silouanos Nicolaou and Demetrios Zeinalipour-Yazti, "The 4th ACM International Workshop on Hot Topics in Planet-Scale Measurement, HotPlanet’12, in conjunction with the 10th ACM International Conference on Mobile Systems, Applications and Services" (MobiSys’12), Low Wood Bay, Lake District, UK,2012.

  20. Distance D = 7.3 D = 10.2 D = 11.8 SmartTrace: "Sensing" Similar Traces • Problem: Compare a query trajectory against some distributed target traces returning the k most similar ones (without transferring the target traces to the query processor). K ? Query [J14] "Crowdsourced Trace Similarity with Smartphones", Demetrios Zeinalipour-Yazti and Christos Laoudias and Costantinos Costa and Michalis Vlachos and Maria I. Andreou and Dimitrios Gunopulos, IEEE Transactions on Knowledge and Data Engineering (TKDE '12), IEEE Computer Society, Volume 99, Los Alamitos CA USA, 2012.

  21. SmartTrace Protocol Querying Node Server (QN) Participating Node LCSS(MBEQ,Ai) 1 2 LCSS(Q,Ai) 3

  22. [J14] "Crowdsourced Trace Similarity with Smartphones", Demetrios Zeinalipour-Yazti and Christos Laoudias and Costantinos Costa and Michalis Vlachos and Maria I. Andreou and Dimitrios Gunopulos, IEEE Transactions on Knowledge and Data Engineering (TKDE '12), IEEE Computer Society, Volume 99, Los Alamitos CA USA, 2012. [C31] "Disclosure-Free GPS Trace Search in Smartphone Networks", Christos Laoudias, Maria I. Andreou, Dimitrios Gunopulos, "Proceedings of the 2011 IEEE 12th International Conference on Mobile Data Management - Volume 01" (MDM '11), IEEE Computer Society, Pages: 78--87, Washington DC USA, ISBN: 978-0-7695-4436-6, 2011. [C30] "SmartTrace: Finding similar trajectories in smartphone networks without disclosing the traces", Constandinos Costa, Christos Laoudias, Demetrios ZeinalipourYazti, Dimitrios Gunopulos, "Proceedings of the 2011 IEEE 27th International Conference on Data Engineering" (ICDE '11), IEEE Computer Society, Pages: 1288--1291, Washington DC USA, ISBN: 978-1-4244-8959-6, 2011. SmartTrace: Trajectory Similarity http://smarttrace.cs.ucy.ac.cy/ Query Q Device B Device C

  23. SmartTrace: Applications • Our framework finds applications in a wide range of domains: • Intelligent Transportation Systems: “Find whether a new bus route is similar to the trajectories of K other users.” • Social Networks: “Find whether there is a cycling route from MOMA to the Julliard” • GeoLife, GPS-Waypoints, Sharemyroutes, etc. offer centralized counterparts. • Habitant Monitoring: Find zebras that moved more similarly to zebra X before it got injured.

  24. Proximity: "Sensing" your Neighbors [C43] "Continuous all k-nearest neighbor querying in smartphone networks", Georgios Chatzimilioudis, Demetrios Zeinalipour-Yazti, Wang-Chien Lee, Marios D. Dikaiakos, "13th IEEE International Conference on Mobile Data Management" (MDM '12), IEEE Computer Society, Bangalore India, 2012. Look inside your cell! Query Processor u3. u2. .u4 WRONG! u0. C .u1 TOO EXPENSIVE! u6. . u7 u5. Perform iterative deepening!

  25. Proximity: CAKNN Query Processing • Initialize a k+-heap for every cell • Insert every user’s location report to every k+-heap • Notice that k+-heap is a heap-based structure and most location reports will be dropped as a result of an insert operation • For every user scan the k+-heap of his cell to find his k-NN Query Processor http://crowdcast.cs.ucy.ac.cy/ C [C43] "Continuous all k-nearest neighbor querying in smartphone networks", Georgios Chatzimilioudis, Demetrios Zeinalipour-Yazti, Wang-Chien Lee, Marios D. Dikaiakos, "13th IEEE International Conference on Mobile Data Management" (MDM '12), IEEE Computer Society, Bangalore India, 2012.

  26. Smartphone Sensing: Testbeds and Applications Demetris Zeinalipour Thanks! Questions? "Workshop on Social Platforms for Urban Sensing", Monday, Feb 11, 2013, 15:00 - 18:00, New Campus, University of Cyprus http://dmsl.cs.ucy.ac.cy/

  27. Background on Trajectory Similarity • Lp-norms are the simplest way to compare trajectories (e.g., Euclidean, Manhattan, etc.) • Lp-norms are fast (i.e., O(n)), but inaccurate. • No Flexible matching in time. (miss out-of-phase) • No Flexible matching in space. (miss outliers) P=1 Manhattan P=2 Euclidean

  28. ignore majority of noise match match Longest Common Subsequence • A Dynamic Programming algorithm for this problem requires O(|A|*|B|)time. • However we can compute it in O(δ*min(|A|,|B|)) if we limit the matching within a time window of δ. Time δ B A

  29. LCSS(MBEQ, Ai): Bounding Above LCSS Q ΜΒΕ: Minimum Bounding Envelope Ai ε 2δ 6pts 40 pts X TIME * Indexing multi-dimensional time-series with support for multiple distance measures,M. Vlachos, M. Hadjieleftheriou, D. Gunopulos, E. Keogh,In KDD 2003. * Indexing multi-dimensional time-series with support for multiple distance measures,M. Vlachos, M. Hadjieleftheriou, D. Gunopulos, E. Keogh,In KDD 2003.

  30. Prototype System (GPS) Privacy Setting Answer With Trace Answer

  31. Prototype System (RSS) The SmartTrace algorithm works equally well for indoor environments (using RSS) Ε Ζ Γ Η Δ A B

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