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In Situ Calibration

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In Situ Calibration. Miodrag Potkonjak. Computer Science Dept, University of ... In Situ Calibration: Pair-wise Consistency. No golden standard ... – PowerPoint PPT presentation

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Title: In Situ Calibration


1
In Situ Calibration
  • Miodrag Potkonjak
  • Computer Science Dept, University of California,
    Los Angeles
  • NSF Center for Embedded Networked Sensing, UCLA

2
Why Calibration ?
  • Process of mapping from measured to correct(ed)
    values s.t. application yield more accurate
    conclusions
  • Calibration as a special case of model
    construction predicting difficult to measure
    variable for one that is easy to measure
  • Off-line Golden standard and/or controlled
    experiment are available
  • On-line Only measurements and outcomes of
    applications are available

3
In Situ Calibration Pair-wise Consistency
  • No golden standard
  • Idea Consistency is necessary and sufficient for
    correct conclusion
  • Consistency definition
  • x1 lt x2 gt f(x1) f(x2)
  • x1 gt x2 gt f(x1) f(x2)
  • Recipe
  • Solve a problem by maximizing consistency
  • Use obtained solution to build model
  • Evaluate model for consistency

4
Location Discovery
  • The Problem
  • In a wireless ad-hoc sensor network (WASN),
    usually a (small) subset of sensor nodes
    (beacons) have a-priori information of their
    locations.
  • Seeks to determine the relative and/or absolute
    positions of each unknown node using the measured
    distances between pairs of communicating nodes.
  • NLP formulation

for all other communicating pairs kl
  • Location error vs. edge consistency

Obj Min Sum
5
Model Construction Novel Properties
  • Accuracy of prediction
  • Simple is beautiful MLD principle
  • Monotonicity
  • Consistency
  • Symmetry yf(x) xg(y) gt yf(g(y))
  • Transitivity yf(x) zg(y) zh(x) gt
    f(x)z(h(x))
  • Compact representation
  • Low computational cost

6
Recipe of Model Construction
  • Translate continuous problem into discrete problem
  • Pose problem as Graph Theoretic Problem
  • Define edges
  • Define cost
  • Define path
  • Identify path
  • of data points
  • Inconsistency cost count
  • Transformation of a graph

Courtesy to Lewis Girod for providing acoustic
distance measurements
7
Beyond Regression Curves
  • Derivatives and slope m f(x) M
  • Low complexity
  • Robustness
  • Multivariate
  • Density estimation
  • Classification

8
Density Estimation Deriving PDF
9
Consistency and Sensor Fusion (Location Discovery)
  • Hide Beacons
  • Hide Edges
  • Hiding 8/16 beacons
  • Hide Nodes
  • Split nodes
  • Predictability given different of hidden beacons

10
Applications of Calibration and Model
Construction
  • Compression
  • Adaptive sampling
  • Missing information recovery
  • Faults detection
  • Obstacle detection
  • Misinformation detection
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