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Session-2 Participants Cyrus Shahabi Raju Vatsavai Mohamed Mokbel Shashi Shekhar Mubarak Shah Jans Aasman Monika Sester Wei Ding Phil Hwang Anthony Stefanidis.

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Presentation on theme: "Session-2 Participants Cyrus Shahabi Raju Vatsavai Mohamed Mokbel Shashi Shekhar Mubarak Shah Jans Aasman Monika Sester Wei Ding Phil Hwang Anthony Stefanidis."— Presentation transcript:

1 Session-2 Participants Cyrus Shahabi Raju Vatsavai Mohamed Mokbel Shashi Shekhar Mubarak Shah Jans Aasman Monika Sester Wei Ding Phil Hwang Anthony Stefanidis (Matt Duckham) (Angelos Stavrou)

2 Making sense of spatiotemporal sensor data (GeoSensor Nexus) Collaborative Acquisition, Querying, and Spatiotemporal Analysis of distributed sensor data in geographic spaces

3 Defining Characteristics Cover all locations, all the time (with resource constraints) in 3D – Various resolution, quality/uncertainty, sparsity in space and time Support all types of sensors (Multi-modal, multi-source) – Remote sensors, moving sensors, humans as sensors, web as sensors, cameras, camcorders, cell-phones, microphones, RFID, human body sensors, chemical sensors Large scale of sensors (and hence data) Spatiotemporal analysis to identify, model and understand high- level events and processes; and then react to them – Timely spatiotemporal analysis of sensor data (present) – Archival and predictive spatiotemporal analysis of sensor data (past & future)

4 Sample Challenges Analysis On GPS data: noisy and uncertain data; clustering trajectories, classification (e.g., indoor/outdoor, walking/running) On Traffic sensors: bulky data; traffic prediction On remote sensors: not enough training data ; extracting associating rules On special-purpose sensors (e.g., radioactive detection): signature not unique, multi-feature; outlier detection On video/image sensors: non-structured data; track moving objects, geo-registering through video cameras Performance (e.g., response-time) On remote sensor and traffic sensor data: Multi-resolution aggregation and indexing Optimization On moving sensors (e.g., humans w/ cell phones, trucks): Planning for efficient and optimal acquisition of data at the right time and space

5 Sample Challenges … In-network processing – Add geo to sensor networks; adapt query processing techniques to restrictions of geo-sensors (e.g., power, bandwidth) – The local+distributed computation, e.g., improve the accuracy of GPS data by using multiple sensors (with differential GPS) – Distributed in-field computation of geo-sensors (e.g., monitoring propagation of a contaminant, tracking) – Track moving objects from a network of still and moving cameras Fusion of sensors (integration) – For forensic (identify when a video/image is taken, what was happening there, …) – Using geospatial sources to improve image/video analysis – With other traditional sources (different reliability and granularity) Privacy, Security & Trust – When people data are involved: Trajectory anonymization, Private LBS – Share sensor & resources without sharing data (network) – Dealing with adversarial data & un-trusted sources for analysis

6 A Different Perspective: Spatio-Temporal Scale (not necessarily in hierarchical order) Level 1: Process local raw data measured by a sensor, e.g. thresholding Level 2: Multi-sensor correlation for focal or teleconnection – Triangulation to position a moving object – Identify anomalies across sensors (e.g. discontinuity) Level 3: Aggregate common global operation picture – Extract events/processes, Interpret events in context, Develop hypothesis about current events – Knowledge Discovery - maps, descriptive models, visualization – Data Mining - Descriptive models: clusters, trends, associations,... Level 4: Prediction (e.g. via forward/inverse models) of process – Predict future states, e.g. final states (goals) and – Explain cause (intent/drivers/phase changes) Level 5 – Action, System Optimization: – How to redirect intelligence, surveillance, and reconnaissance (ISR) to improve performance (e.g. get better sensor utilization)

7 Backup Slides

8 Topics Raju: Sensor Net, ORNL government program – Data Processing: sensors measuring radioactive material (at truck weight station) – Challenges: signature not unique, outlier detection, multi-feature Wei: Remote sensing dataset: multispectral, analyze images to detect shapes (crater), integrating multi- layers (land-use, vegetation, temperatures) – Challenges: noisy data, too many false positives, not enough training data; complex structures Mubarak: image/video sensor; track moving objects from a network of still and moving cameras, fusion of videos; geo-registering through video cameras – challenges: using geospatial sources to improve image/video analysis Mohamed: add geo to sensor networks; adapt query processing techniques to restrictions of geo-sensors (e.g., power, bandwidth) Monika: specifics of sensor network is the local computation (local+distributed processing); where are the applications?; improve the accuracy of GPS data by using multiple sensors (with differential sensors) Jans: graph database (social networks): GPS sensors on moving objects and dealing with moving objects (historic and real-time decisions and planning) Tony: distributed in-field computation of geo-sensors (e.g., propagation of a contaminant, tracking) – Challenges: missing data, mobile sensors (actuate sensors); both real-time and historical, prediction. Human as sensors (text, speech), web sensors, surveillance (integrate multi-model and multi-source information to detect events) ; interacting/navigating the network Phil: sensors: traffic cameras, cell-phones; back-end: forensic (identified when is taken, what was happening there, …) Shashi: Analyzing/mining the measurements of sensors – several levels of processing: raw data analysis (denoising), simple aggregate queries (average, standard), data-mining (patterns), decision making (human analysis), power restriction is not an issue all the time

9 Topics …. Cyrus: Traffic sensors (mining; large size/response- time; compression) Humans as sensors (planning) GPS sensors (privacy LBS; mining: trajectory clusters, classification, e.g., indoor/outdoor, walking/running) Remote sensors (access to raw data at multiple resolutions, e.g., for visualization)


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