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Instituto de Telecomunica

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Title: PowerPoint Presentation Author: Jose Bioucas Dias Last modified by: bioucas Created Date: 3/18/2004 11:04:10 AM Document presentation format – PowerPoint PPT presentation

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Title: Instituto de Telecomunica


1
Sparse Regression-based Hyperspectral Unmixing
Antonio Plaza1
Marian-Daniel Iordache1,2
José M. Bioucas-Dias2
2
1
Instituto de Telecomunicações,Instituto Superior
Técnico,Technical University of Lisbon, Lisbon
Department of Technology of Computers and
Communications,University of Extremadura,
Caceres Spain
2
Hyperspectral imaging concept
3
Outline
  • Linear mixing model
  • Spectral unmixing
  • Sparse regression-based unmixing
  • Algorithms
  • Results

4
Linear mixing model (LMM)
5
Algorithms for SLU
Three step approach
6
Sparse regression-based SLU
  • Spectral vectors can be expressed as linear
    combinations
  • of a few pure spectral signatures obtained
    from a
  • (potentially very large) spectral library
  • Advantage sidesteps endmember estimation

6
IGARSS 2011
7
Sparse regression-based SLU
Very difficult (NP-hard)
Approximations to P0 OMP orthogonal matching
pursuit Pati et al., 2003 BP basis pursuit
Chen et al., 2003 BPDN basis pursuit
denoising
IGARSS 2011
7
8
Convex approximations to P0
Striking result In given circumstances, related
with the coherence of among the columns of matrix
A, BP(DN) yields the sparsest solution (Donoho
06, Candès et al. 06).
Efficient solvers for CBPDN SUNSAL, CSUNSAL
Bioucas-Dias, Figueiredo, 2010
8
IGARSS 2011
9
Application of CBPDN to SLU
Extensively studied in Iordache et al.,10,11
  • Six libraries (A1, , A6 )
  • Simulated data
  • Endmembers random selected from the libraries
  • Fractional abundances uniformely distributed
  • over the simplex
  • Real data
  • AVIRIS Cuprite
  • Library calibrated version of USGS (A1)

IGARSS 2011
10
Hyperspectral libraries
Bad news hiperspectral libraries exhibits high
mutual coherence
Good news hiperspectral mixtures are sparse (k
5 very often)
IGARSS 2011
11
Reconstruction errors (SNR 30 dB)
ISMA Rogge et al, 2006
IGARSS 2011
12
Real data AVIRIS Cuprite
IGARSS 2011
13
Real data AVIRIS Cuprite
IGARSS 2011
14
Beyond l1 regularization
Rationale introduce new sparsity-inducing
regularizers to counter the sparse regression
limits imposed by the high coherence of the
hyperspectral libraries.
New regularizers Total variation (TV ) and group
lasso (GL)
TV regularizer
l1 regularizer
GL regularizer
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15
Total variation and group lasso regularizers
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16
GLTV_SUnSAL for hyperspectral unmixing
Criterion
GLTV_SUnSAL algorithm based on CSALSA Afonso et
al., 11. Applies the augmented Lagrangian method
and alternating optimization to decompose the
initial problem into a sequence of simper
optimizations
IGARSS 2011
17
GLTV_SUnSAL results l1 and GL regularizers
k (no. act. groups) no. endmembers SRE (l1) dB SRE (l1GL) dB
1 3 9.7 16.3
2 6 7.8 14.5
3 9 6.7 14.0
4 12 4.8 12.3
MC runs 20 SNR 1
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18
GLTV_SUnSAL results l1 and GL regularizers
Library
SNR 20 dB, l1TV
SNR 20 dB, l1
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19
Real data AVIRIS Cuprite
IGARSS 2011
20
Concluding remarks
  • Shown that the sparse regression framework
  • has a strong potential for linear
    hyperspectral unmixing
  • Tailored new regression criteria to cope with
  • the high coherence of hyperspectral
    libraries
  • Developed optimization algorithms for the above
  • criteria
  • To be done reseach ditionary learning techniques

IGARSS 2011
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