Statistical modeling, classification, and sensor management - PowerPoint PPT Presentation

About This Presentation
Title:

Statistical modeling, classification, and sensor management

Description:

Statistical modeling, classification, and sensor management DARPA-MURI Review 2003 Alfred Hero Univ. Michigan Ann Arbor Target Search Scenario Sensor Deployment ... – PowerPoint PPT presentation

Number of Views:197
Avg rating:3.0/5.0
Slides: 81
Provided by: AndrewEm8
Category:

less

Transcript and Presenter's Notes

Title: Statistical modeling, classification, and sensor management


1
Statistical modeling, classification, and sensor
management
DARPA-MURI Review 2003
  • Alfred Hero
  • Univ. Michigan
  • Ann Arbor

2
Target Search Scenario
HighRes Spot Scan
LowRes Spot Scan
Strip Scan
3
Sensor Deployment Architecture
Our Research themes
Sequential Sensor Management
Image Reconstruction
Adaptive Detection
4
Research Loci
  • Image modeling and reconstruction
  • Markov random field (MRF) polarimetric models
    (HoryBlatt)
  • 3D Imaging with uncalibrated sensor nets
    (RangarajanPatwari)
  • Adaptive detection and classification
  • Pattern matching and modeling (Costa)
  • Distributed detection and classification
    (BlattPatwari)
  • Sequential sensor management
  • Myopic information-driven approaches (Kreucher)
  • Non-myopic approaches (KruecherBlatt)
  • Common theme adaptive robust non-parametric
    methods

5
Detection Target or Clutter Alone?
6
Detection Target or Clutter Alone?
7
Target Returns Not Additive or Gaussian
SNR0dB
SNR6dB
  • 1cm x 1cm x 1mm plate at 1m from ground
  • Plate under forest canopy (10 deciduous trees)
  • 2GHz SAR illumination
  • Aggregate of three look angles (azimuth35,45,55,
    elev180)

8
Polarimetric Field Modeling and Reconstruction
h-pol. incidence
v-pol. incidence
  • Field Distribution On FDTD Box (2 GHz)

9
MRF empirical histogram
Conditional Markov transition histogram
estimated from training data
10
Causal MRF Field Synthesis
11
Example K-NN MRF Extrapolation
12
Non-parametric MRF density estimator
  • General penalized MRF transition density estimate
  • y is observed data
  • parameter b enforces smoothness
  • function g(f) captures data-fidelity
  • g(f)f2 standard L2 quadratic regularization
  • g(f)f L1 regularization for denoising
  • w(x) smoothing within and across neighborhoods

13
Cartoon illustration of density estimator
K-Nearest Neighbors Estimator
Penalized MRF transition Density Estimator
14
Visual Validation of MRF Model
g(f)f
15
MRF Transition Density Comparisons
16
Target Modeling and Classification
  • Pattern matching in high dimensions
  • Standard techniques (histogram, density
    estimation) fail due to curse of dimensionality
  • Entropic graphs recover inter-distribution
    distance directly
  • Robustification to outliers through graph pruning
  • Manifold learning and model reduction
  • Standard techniques (LLE, MDS, LE, HE) rely on
    local linear fits and provide no means of getting
    at sample density
  • Our geodesic entropic graph methods fit the
    manifold globally
  • Computational complexity is only n log n

17
A Planar Sample and its Euclidean MST
18
Convergence of Euclidean MST
Beardwood, Halton, Hammersley Theorem
19
Pattern Matching
20
MST Estimator of a-Jensen Affinity
Two well separated Classes
Two overlapping Classes
21
MST Estimator of Friedman-Rafsky Affinity
Two well separated Classes
Two overlapping Classes
22
Target model reduction
  • 128x128 images of three land vehicles over 360
    deg azimuth at 0 deg elevation
  • The 3(360)1080 images evolve on a lower
    dimensional imbedded manifold in R(16384)

Courtesy of Center for Imaging Science, JHU
23
Target-Image Manifold
24
2D manifold
Embedding
Sampling distribution
Sampling
A statistical sample
25
Geodesic Entropic Graph Manifold Learning and
Pattern Matching Algorithm
  • Construct geodesic edge matrix (ISOMAP,C-ISOMAP)
  • Build entropic graph over geodesic edge matrix
  • MST consistent estimator of manifold dimension
    and process alpha-entropy
  • MST-Jensen consistent estimator of Jensen
    difference between labeled vectors
  • Use bootstrap resampling and LS fitting to
    extract rate of convergence (intrinsic dimension)
    and convergence factor (entropy)

26
Illustration for 3 land Vehicles
27
loglogLinear fit to asymptote
LS-Soln d13 H120(bits)_
28
Distributed Multisensor Estimation and Detection
  • Distributed M-estimation (Blatt)
  • Ambiguity function is often multimodal local and
    global M
  • Distributed measurements make local M more
    difficult
  • We develop method to discriminate between
    local/global M
  • Use unsupervised clustering and Fisher
    information matching
  • Distributed change detection (Patwari)
  • Bandwidth and computation constraints
  • Multilayer vs flat store-detect-forward
    architecture
  • We study perfromance loss due to bandwidth
    constraints
  • How much information should be sent to what
    layers?

29
Flat Sensor Aggregation Architecture
Distributed Estimation and Detection
30
Distributed M- Estimation
Ambiguity function for Cauchy distributed points
on a manifold
31
A slice of ambiguity function
32
Key Theoretical Result
  • The asymptotic distribution of M-estimate is
    (asymptotically) a Gaussian mixture
  • Parameters

Ref BlattHero2003
33
Validation of Key Result QQ-plots
M-estimates are clustered into two groups. Each
group is centered according to the analytical
mean and normalized according to the analytical
variance.
34
M-estimator Aggregation Algorithm
Sample Covariance Analysis
Estimation of Gaussian Mixture Parameters (EM
)
Aggregation To Final Estimate
35
Illustration
Model
  • 200 Sensors
  • 100 snapshots per sensor
  • Snapshots are 1D Gaussian 2-mixture
  • Known covariance
  • Unknown means
  • Sensors generate i.i.d. M-estimates of means and
    forward to central processor

Local maximum
Global maximum
Ambiguity function.
36
Local/Global Maxima Discrimination Algorithm
Bad estimates
Bad estimates
Inverse FIM
Good estimates
Empirical covariance
37
Addition of other Discriminants
Value-added due to local acquisition and
transmission of likelihood values
38
Hierarchical Sensor Aggregation Architecture
Distributed Estimation and Detection
Sensor 6
Sensor 5
39
Detection Flat vs Hierarchical Architecture
  • Flat Rago, Willett, et al
  • Hierarchical, w/ and w/o Feedback
  • Each sensor is limited with identical r
  • At low PF, Hierarchical outperforms Flat

Optimal 7-Sensor
r 0.30
r 0.10
Legend
Flat
r 0.03
Hier. w/o Feedback
Hier. w/ Feedback
Optimal 1-Sensor
40
Sequential Adaptive Sensor Management
  • Sequential only one sensor deployed at a time
  • Adaptive next sensor selection based on present
    and past measurements
  • Multi-modality sensor modes can be switched at
    each time
  • Detection/Classification/Tracking task is to
    minimize decision error
  • Centralized decisionmaking sensor has access to
    entire set of previous measurements

Single-target state vector
41
Sequential Adaptive Sensor Management
  • Myopic information-based strategies (Kruecher)
  • Multi-target tracking capabilities
  • Fully Bayesian approach
  • Non-linear particle filtering with adaptive
    partitioning
  • Renyi-alpha divergence criterion
  • Non-Myopic strategies (BlattKreucher)
  • MDP value function approximations and rollout
    methods
  • Bayesian path averaging
  • Reinforcement feedback and learning

42
Sensor scheduling objective function
  • Prospective value of deploying sensor s at time t

Sensor agility
Prediction
Retrospective value of deploying sensor s
Available measurements at time t-1
43
Information-based Value Function
  • Incremental information gained from data
    collected from using sensor s. Can be measured by
    divergence
  • Requires posterior distributions of future
    target state X given future Z and given present
    Z, resp.,
  • Main issues for evaluation of ED(s,t)Z
  • Computation complexity
  • Robustness to model mismatch
  • Decisionmaking relevance

44
Value Function Alpha Divergence
  • Properties of Renyi divergence
  • Simpler and more stably implementable than KL
    (KreucheretalTSP03)
  • Parameter alpha can be adapted to non-Gaussian
    posteriors
  • More robust to mis-specified models than KL
    (KreucheretalTSP03)
  • Related directly to decision error probability
    via Sanov (HeroetalSPM02)
  • Information theoretic interpretation

45
Relevance of alpha-D to Decision Error
  • Consider testing hypotheses
  • Sanovs theorem optimal decision rule has error
  • Implication nearly-optimal decision rule for H1
    is
  • if can generate good estimate of alpha-D

46
Multi-Target Bayesian Filtering
  • Joint multiple target posterior density (JMPD)
    jointly represents all target states (Kastela)
  • Update eqns must generally be approximated

Model Update (Prediction using prior kinematic
model)
Measurement Update (Bayes Rule)
47
Particle Filter (Metropolis) Approximation
  • Propose (draw) a set of particles based on some
    importance (proposal) density q chosen to be as
    close to the posterior as possible
  • Weight the particles using the principle of
    importance sampling
  • Resample particles using above density to avoid
    degeneracy

time t
time t-1
48
Particle Filtering Illustration
  • Initialize simulate random samples (particles)
    from proposal density

49
Particle Filtering Illustration
  • Model Update
  • Propose new particles from existing particles
    based on drawing samples from the importance
    density

50
Particle Filtering Illustration
  • Measurement Update Reweight particles density
    according to
  • Resample the particles if necessary

51
Multitarget Tracking Adaptive Proposals
  • When targets are well separated in measurement
    space, each target-partition of particle evolves
    independently.
  • In this case can use independent partition (IP)
    updates
  • When targets become close target-partitions
    become dependent
  • In this case should use coupled partition (CP)
    updates
  • Adaptive strategy use IP unless CP is deemed
    necessary

IP updating
CP updating
CP updating
52
Numerical Experiment
  • Simulation conditions
  • Linear target motion model isotropic diffusion
  • GMTI sensor with dwells over uniform grid
  • Non-linear return Rayleigh target and clutter rv
  • Target detector operates with fixed threshold
    (Pf0.1)
  • No sensor management

53
Tracking Simulated Target Motion w/o SM
Sensor makes measurements on a grid The sensor is
characterized by a probability of detection and
a probability of false alarm.
54
Real Target Motion
Ten real targets Motion taken from recorded GPS
measurements During a battle simulation exercise
at NTC.
55
Real Target Motion
56
Multiple Model for Real Target Motion
  • Target state vector
  • Three different models
  • Target is moving
  • Target is stopped
  • Target is accelerating

57
Multiple Model for Real Target Motion
  • Model switching transition matrix

58
Tracking Real Multitarget Motion w/o SM
Staging area
Ten real targets Motion taken from recorded GPS
measurements During a battle simulation exercise
at NTC.
59
Quantitative Results Adaptive Partitions
60
Comparison of Managed and Non-Managed Performance
  • We illustrate the benefit of info-gain SM with AP
    implementation of JMPD tracking 10 moving
    targets.
  • GMTI radar simulated Rayleigh target/clutter
    statistics
  • Contrast to a periodic (non-managed) scan same
    statistics
  • Coverage of managed and non-managed50 dwells per
    second

61
Tracker Comparison Managed vs. Non-Managed
  • Monte Carlo tests (left) show performance with SM
    using 50 looks similar to periodic scan with 700
    looks
  • SM makes the tracker 12 times as efficient in
    terms of sensor resources needed.
  • More extensive runs in similar scenario (right)
    with 3 targets show performance with SM using 24
    looks similar to periodic (non-managed)
    performance with 312 looks
  • SM makes the tracker approximately 13 times as
    efficient in this scenario.
  • Performance of managed scenario with 24 looks at
    SNR 2 (3dB) similar to performance of periodic
    management at SNR 9 (9.5dB) approximately a
    6.5dB performance gain.

62
Choice of Alpha Matched Models
  • When filter model matches the actual target
    kinematics very closely, the performance of the
    algorithm is insensitive to the choice of a.
  • Simulation Three targets moving according to a
    nearly constant velocity model with diffusive
    component q. Filter has exact model of target
    motion with correct q.
  • Results Tracker performance nearly identical for
    all values of a.

63
Choice of Alpha Mismatched Models
Snapshot of information map for ten target GPS
simulation
64
Choice of Alpha Mismatched Models
  • Under target kinematic model mismatch using a ½
    yields better performance.
  • Simulation Ten targets with trajectories taken
    from real, recorded data. The filter kinematics
    are mismatched to vehicles with nearly constant
    velocity.
  • Results Fewest lost tracks over 50 Monte Carlo
    trials with a.5

65
Multimode Radar Mode and Dwell Point Selection
  • Particle Filter
  • Multiple model (stopped and moving)
  • Adaptive Proposal Method
  • 100 Particles, 3 Targets
  • Sensor Management
  • Expected gain for each modality/pointing angle
    calculated before each measurement.
  • 12 Looks/time step each of 250km2 (total
    approximately 10 of surveillance area)
  • MTI Mode
  • Each detection cells is 100m x 100m
  • Measures strips 1x25 cells long
  • Pd 0.9, Pfa .001
  • Detects targets with velocity gt MDV
  • FTI Mode
  • Measures cells that are 100m x 100m
  • Measures spots 5x5 cells on the ground
  • Pd 0.5, Pfa 1e-12
  • Detects stopped targets

66
Myopic vs Non-Myopic Strategies
  • Myopic SM computes only one-step ahead
  • Non-myopic SM looks ahead multiple steps
  • Even two step look-ahead can be of value
  • Simple illustration
  • Non-myopic information gain criterion
  • Two targets in two cells
  • At even time instants only one cell is visible

67
Non-Myopic Search Tree
68
(No Transcript)
69
Comparison of Greedy and Non-Myopic (2 step)
decision making
Myopic Target lost 22 of the time
Non-Myopic Target lost 11 of the time
70
Myopic Target lost 22 of the time
Non-myopic Target lost 11 of the time
71
  • Before time 190 (the crossover point)
  • At even time instants, only one target is visible
    and the myopic/nonmyopic strategies agree 100 of
    the time.
  • At odd time instants, the right method is to
    measure the right target. The myopic/nonmyopic
    strategies agree about 85 of the time.

72
Foci for 2nd Year
  • Non-parametric polarimetric backscatter modeling
    for multistatic target detection
  • Target and clutter model reduction and pattern
    matching
  • Adaptive non-myopic sensor scheduling and
    management

73
Personnel on A. Heros sub-Project(2002-03)
  • Krishnakanth Subramanian, 1st year MS student
  • Birla Institute of Technology
  • 50 GSRA
  • Michael Fitzgibbons, 1st year MS student
  • Northeastern Univ.
  • 50 GSRA
  • Cyrille Hory, Post-doctoral researcher
  • University of Grenoble
  • Area of specialty data analysis and modeling,
    SAR, time-frequency

74
Personnel on A. Heros sub-Project(ctd)
  • Jose Costa, 3rd year doctoral student
  • IST Lisbon
  • Portugese fellowship, summer GSRA
  • Chris Kreucher, 3rd year grad student
  • UM-Dearborn, Veridian Intl
  • Veridian support
  • Neal Patwari, 2nd year doctoral student
  • Virginia tech
  • NSF Graduate Fellowship, summer GSRA
  • Doron Blatt, 2nd year doctoral student
  • Univ. Tel Aviv
  • Dept. Fellowship, summer GSRA
  • Raghuram Rangarajan, 2nd year doctoral student
  • IIT Madras
  • Dept. Fellowship, summer GSRA

75
Publications(02-03) Estimation-Classification
  • J. Costa and A. O. Hero, Manifold learning with
    geodesic minimal spanning trees, submitted to
    IEEE T-SP (Special Issue on Machine Learning),
    July 2003.
  • A. O. Hero, J. Costa and B. Ma, "Convergence
    rates of minimal graphs with random vertices,"
    submitted to IEEE T-IT, March 2003.
  • J. Costa, A. O. Hero and C. Vignat, "On solutions
    to multivariate maximum alpha-entropy Problems",
    in Energy Minimization Methods in Computer Vision
    and Pattern Recognition (EMM-CVPR), Eds. M.
    Figueiredo, R. Rangagaran, J. Zerubia,
    Springer-Verlag, 2003
  • D. Blatt and A. Hero, "Asymptotic distribution of
    log-likelihood maximization based algorithms and
    applications," in Energy Minimization Methods in
    Computer Vision and Pattern Recognition
    (EMM-CVPR), Eds. M. Figueiredo, R. Rangagaran, J.
    Zerubia, Springer-Verlag, 2003

76
Publications(02-03) Sensor Management
  • C. Kreucher, K. Kastella, and A. Hero, Sensor
    management using relevance feedback learning,
    submitted to IEEE T-SP, June 2003
  • C. Kreucher, K. Kastella, and A. Hero,
    Multitarget tracking using particle
    representation of the joint multi-target
    density, submitted to IEEE T-AES, Aug. 2003.
  • C. Kreucher, K. Castella, and A. O. Hero,
    "Multitarget sensor management using alpha
    divergence measures, Proc First IEEE Conference
    on Information Processing in Sensor Networks ,
    Palo Alto, April 2003.
  • C..Kreucher, K. Kastella, and A. Hero, A
    Bayesian Method for Integrated Multitarget
    Tracking and Sensor Management, 6th
    International Conference on Information Fusion,
    Cairns, Australia, July 2003.

77
Publications(02-03) Sensor Management(ctd)
  • C. Kreucher, C., Kastella, K., and Hero, A.,
    Tracking Multiple Targets Using a Particle
    Filter Representation of the Joint Multitarget
    Probability Density, SPIE, San Diego California,
    August 2003.
  • C. Kreucher, K. Kastella, and A. Hero,
    Information-based sensor management for
    multitarget tracking, SPIE, San Diego,
    California, August 2003.
  • C. Kreucher, K. Kastella, and A. Hero, Particle
    filtering and information prediction for sensor
    management, 2003 Defense Applications of Data
    Fusion Workshop, Adelaide, Australia, July 2003.
  • C. Kreucher, K. Kastella, and A. Hero,
    Information Based Sensor Management for
    Multitarget Tracking, Proc. Workshop on Multiple
    Hypothesis Tracking A Tribute to Samuel S.
    Blackman, San Diego, CA, May 30, 2003.

78
Publications(02-03) SP for Sensor Nets
  • N. Patwari and A. O. Hero, "Hierarchical
    censoring for distributed detection in wireless
    sensor networks, Proc. Of ICASSP, Hong Kong,
    April 2003.
  • N. Patwari, A. O. Hero, M. Perkins, N. S. Correal
    and R. J. O'Dea, "Relative location estimation in
    sensor networks, IEEE T-SP, vol. 51, No. 9, pp.
    2137-2148, Aug. 2003.
  • A. O. Hero , Secure space-time communication,"
    to appear in IEEE T-IT, Dec. 2003.
  • M.F. Shih and A. O. Hero, "Unicast-based
    inference of network link delay distributions
    using mixed finite mixture models," IEEE T-SP,
    vol. 51, No. 9, pp. 2219-2228, Aug. 2003.

79
Synergistic Activities(02-03)
  • Veridian, Inc
  • K. Kastella collaboration with A. Hero in sensor
    management, July 2002-
  • J. Ackenhusen collaboration with A. Hero in mine
    detection, Oct. 2002-
  • C. Kreucher doctoral student of A. Hero, Sept.
    2002-
  • ARL
  • NAS-SED A. Hero is a member of yearly review
    panel, May 2002-
  • B. Sadler N. Patwari (doctoral student of A.
    Hero) held internship in distributed sensor
    information processing, summer 2003
  • ERIM Intl.
  • B. ThelenN. Subotic collaborators with A. Hero,
    Oct. 2002
  • Chalmers Univ.,
  • M. Viberg A. Hero is Opponent on multimodality
    landmine detection doctoral thesis, Aug 2003
  • EMMCVPR
  • Entropy, spanner graphs, and pattern matching,
    plenary lecture, July 2003

80
Cross-Fertilization to Other Sponsors(02-03)
  • NSF-ITR
  • Modular strategies for internetwork monitoring,
    A. Hero, PI (2003-2008)
  • NIH-P01
  • Automated 3D registration for enhanced cancer
    management, C. Meyer, PI (2002-2007)
  • NIH-R01
  • Radionucleides radiation detection and
    quantification, N. Clinthorne, PI (2002-2005)
  • Sramek Foundation
  • Genetic pathways to diabetic retinopathy, A.
    Swaroop, PI (2002-2005)
Write a Comment
User Comments (0)
About PowerShow.com