Title: Mobile Sensor Webs: Sweet Dreams vs' Nightmares
1Mobile Sensor WebsSweet Dreams vs. Nightmares
- Phillip B. Gibbons, Intel Research Pittsburgh
- MobiSensors07
- Industrial Views and Experience
1/16/07
2Mobile Sensor Web Vision
- Harnest the sensing, computing, and communication
capabilities of a billion mobile wireless devices
to support valuable apps
Pervasive multimedia sensing
3A Pervasive Sensing Paradox
- While the value of a sensing system increases
with the number capabilities of its sensors, so
too do the nightmares - A (mobile) sensor web is a distributed data
management nightmare - Workload is write-intensive, high volume, often
time-critical - Heterogeneity in data types, platforms, networks
- Mobility, Failures common, Shared
4IrisNet An Architecture for a Worldwide Sensor
Web
- Planet-wide local data collection/storage
- Multimedia sensors from cell phones, PDAs, UMPCs
- Query all relevant sensor data at once
- Do for live data what Google does for content
- Robustness, data integrity privacy
- Easy deployment of sensing services
- IrisNet Approach
- Exploit processing power near the sensors
Use application-specific sensor feed filtering - Push queries to sensors compute answers
in-network - Provide load balancing, caching, fault tolerance,
etc for all services
5A Pervasive Sensing Paradox
- While the value of a sensing system increases
with the number capabilities of its sensors, so
too do the nightmares - Multimedia sensors raise huge privacy concerns
Everyone has big brother power - Data management must address theseprivacy
concerns, to the extent it can - IrisNet uses privileged privacy filters
- Only tip of iceberg
- Leverage devices CPU power
6Sweet Dreams vs. Nightmares
- The apps deriving the most benefit from
collective, pervasive multimedia sensing will
encounter the most resistance - Collective-sensing apps
- Require dense multimedia sensing coverage
- Inferences observations of other people
places - U.S. legal climate heightened privacy
sensibilities gt many valuable apps deployed only
elsewhere
7Sweet Dreams vs. Nightmares
- The apps deriving the most benefit from
collective, pervasive multimedia sensing will
encounter the most resistance - Self-sensing apps are ok
- Collect data about a person solely for that
person - Or other trusted party guardian, health care
provider, trainer, etc.
8Examples of sensing, modeling and supporting
everyday behaviors
- Meeting Effectiveness
- - Sense speech dynamics of participants
- Model turn taking, interruptions, dominance,
roles, level of engagement - Support feedback on meeting dynamics,
effectiveness, participation
- Autism
- - Sense speech dynamics/distortions (norms for
F2F interaction patterns ? goal) - Model turn taking, interruptions, intonation,
level of engagement - Support real time coaching to kids on how to
modify behavior appropriately
- Eldercare, ADLs
- Sense everyday interactions with objects, rooms,
locations - Model high-level behavioral activities (ADLs)
- Support real time reminding, escalated alerting,
feedback on wellbeing, patterns anomalies
- Fitness, physical activity
- Sense everyday physical activities (e.g.,
walking, sitting) and their durations - Model high-level physical activities (e.g., a
run, a bicycle ride) - Support real time awareness feedback - goals,
automated journaling, patterns anomalies,
methods to motivate sustained behavior change
Project at Intel Research Seattle
9UbiFit
- Improving fitness through mobile devices
MSP - behavioral monitoring technology
UbiFit garden MSP persuasive technology
Project at U. Washington and Intel Research
Seattle
10Patient Monitoring
Ear-piece SpO2, Skin temp 3d accel
- Integration of physiological, activity and
environmental monitoring - Ear-piece SpO2, skin temperature, 3d
accelerometer - ECG, 3d accelerometer
- Multi-Sensor Platform / Imote2 Activity
Inferences - IMote Environmental Temperature, humidity
- Phone on-body aggregator
- Connect to various sensors
- Data aggregation and processing
- Visualization of latest scalar data
- PC Displays historical data
ECG, 3d accel
MSP/Imote2 Activity Inference
Imote Environ- mental Temp Humidity
PC (visualization)
Project in Intel DHG