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Compressive Signal Processing

Compressive Signal Processing. Richard Baraniuk Rice University. Better, Stronger, Faster. Analog sensing Digital sensing. Sense by Sampling. too much data!. sample. Case in Point: DARPA ARGUS-IS. 1.8 Gpixel image sensor video rate output: 444 Gbits /s

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Compressive Signal Processing

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  1. CompressiveSignal Processing Richard Baraniuk Rice University

  2. Better, Stronger, Faster

  3. Analog sensing Digital sensing

  4. Sense by Sampling too much data! sample

  5. Case in Point: DARPA ARGUS-IS • 1.8 Gpixel image sensor • video rate output: 444 Gbits/s • comm data rate: 274 Mbits/sfactor of 1600x way out of reach ofexisting compressiontechnology • Reconnaissancewithout conscience • too much data to transmit to a ground station • too much data to make effective real-time decisions

  6. Accelerating Data Deluge • 1250 billion gigabytes generated in 2010 • # digital bits > # stars in the universe • growing by a factor of 10 every 5 years • Total data generated > total storage • Increases in generation rate >>increases in comm rate Available transmission bandwidth

  7. Sense then Compress sample compress JPEG JPEG2000 … decompress

  8. Sparsity largewaveletcoefficients (blue = 0) largeGabor (TF)coefficients pixels widebandsignalsamples frequency time

  9. Concise Signal Structure • Sparse signal: only K out of N coordinates nonzero • model: union of K-dimensional subspacesaligned w/ coordinate axes sparsesignal nonzeroentries sorted index

  10. Concise Signal Structure • Sparse signal: only K out of N coordinates nonzero • model: union of K-dimensional subspaces • Compressible signal: sorted coordinates decay rapidly with power-lawapproximately sparse power-lawdecay sorted index

  11. Concise Signal Structure • Sparse signal: only K out of N coordinates nonzero • model: union of K-dimensional subspaces • Compressible signal: sorted coordinates decay rapidly with power-law • model: ball: power-lawdecay sorted index

  12. What’s Wrong with this Picture? • Why go to all the work to acquire N samples only to discard all but K pieces of data? sample compress decompress

  13. What’s Wrong with this Picture? • nonlinear processing • nonlinear signal model • (union of subspaces) linear processing linear signal model (bandlimited subspace) sample compress decompress

  14. Compressive Sensing • Directly acquire “compressed” data via dimensionality reduction • Replace samples by more general “measurements” compressive sensing recover

  15. Sampling • Signal is -sparse in basis/dictionary • WLOG assume sparse in space domain • Sampling sparsesignal measurements nonzeroentries

  16. Compressive Sampling • When data is sparse/compressible, can directly acquire a condensed representation with no/little information loss through linear dimensionality reduction sparsesignal measurements nonzero entries

  17. How Can It Work? • Projection not full rank…… and so loses information in general • Ex: Infinitely many ’s map to the same(null space)

  18. How Can It Work? • Projection not full rank…… and so loses information in general • But we are only interested in sparse vectors columns

  19. How Can It Work? • Projection not full rank…… and so loses information in general • But we are only interested in sparse vectors • is effectively MxK columns

  20. How Can It Work? • Projection not full rank…… and so loses information in general • But we are only interested in sparse vectors • Design so that each of its MxKsubmatricesare full rank (ideally close to orthobasis) • Restricted Isometry Property (RIP) columns

  21. RIP = Stable Embedding An information preserving projection preserves the geometry of the set of sparse signals RIP ensures that K-dim subspaces

  22. How Can It Work? • Projection not full rank…… and so loses information in general • Design so that each of its MxK submatrices are full rank (RIP) • Unfortunately, a combinatorial, NP-Hard design problem columns

  23. Insight from the 70’s [Kashin, Gluskin] • Draw at random • iid Gaussian • iid Bernoulli … • Then has the RIP with high probability provided columns

  24. Randomized Sensing • Measurements = random linear combinations of the entries of • No information loss for sparse vectors whp sparsesignal measurements nonzero entries

  25. CS Signal Recovery • Goal: Recover signal from measurements • Problem: Randomprojection not full rank(ill-posed inverse problem) • Solution: Exploit the sparse/compressiblegeometry of acquired signal

  26. CS Signal Recovery • Random projection not full rank • Recovery problem:givenfind • Null space • Search in null space for the “best”according to some criterion • ex: least squares (N-M)-dim hyperplaneat random angle

  27. Recovery: given(ill-posed inverse problem) find (sparse) Optimization: Closed-form solution: Wrong answer! Signal Recovery

  28. Recovery: given(ill-posed inverse problem) find (sparse) Optimization: Signal Recovery “find sparsest vectorin translated nullspace”

  29. Recovery: given(ill-posed inverse problem) find (sparse) Optimization: Correct! But NP-Complete alg Signal Recovery “find sparsest vectorin translated nullspace”

  30. Recovery: given(ill-posed inverse problem) find (sparse) Optimization: Convexify the optimization Signal Recovery Donoho Candes Romberg Tao

  31. Recovery: given(ill-posed inverse problem) find (sparse) Optimization: Convexify the optimization Correct! Polynomial time alg(linear programming) Much recent alg progress greedy, Bayesian approaches, … Signal Recovery

  32. CS Hallmarks Stable acquisition/recovery process is numerically stable Asymmetrical(most processing at decoder) conventional: smart encoder, dumb decoder CS: dumb encoder, smart decoder Democratic each measurement carries the same amount of information robust to measurement loss and quantization “digital fountain” property Random measurements encrypted Universal same random projections / hardware can be used forany sparse signal class (generic)

  33. Universality • Random measurements can be used for signals sparse in any basis

  34. Universality • Random measurements can be used for signals sparse in any basis

  35. Universality • Random measurements can be used for signals sparse in any basis sparsecoefficient vector nonzero entries

  36. Analog sensing Digital sensing Computational sensing

  37. Compressive SensingIn Action

  38. “Single-Pixel” CS Camera scene single photon detector imagereconstructionorprocessing DMD DMD random pattern on DMD array w/ Kevin Kelly

  39. “Single-Pixel” CS Camera scene single photon detector imagereconstructionorprocessing DMD DMD random pattern on DMD array … • Flip mirror array M times to acquire M measurements • Sparsity-based (linear programming) recovery

  40. First Image Acquisition target 65536 pixels 1300 measurements (2%) 11000 measurements (16%)

  41. Utility? Fairchild 100Mpixel CCD single photon detector DMD DMD

  42. SWIR CS Camera InView “single-pixel” SWIR Camera (1024x768) Target (illuminated in SWIR only) Camera output M = 0.5 N

  43. SWIR Video Recovery via CS-MUVI Naïve frame-by-frame recovery CS-MUVI • Multiscale that optimizes spatial/temporal blurs • Optical flow model for scene motion

  44. CS Hyperspectral Imager (Kevin Kelly Lab, Rice U) spectrometer hyperspectral data cube 450-850nm N=1M space x wavelength voxels M=200k random measurements

  45. More CS In Action • CS makes sense when measurements are expensive • Coded imagers • x-ray, gamma-ray, IR, THz, … • Camera networks • sensing/compression/fusion • Array processing • exploit spatial sparsity of targets • Ultrawideband A/D converters • exploit sparsity in frequency domain • Medical imaging • MRI, CT, ultrasound …

  46. Compressive SensingThe Road Ahead

  47. More Realistic Models • Beyond sparsity

  48. Beyond Sparsity Sparse signal model captures simplistic primary structure pixels: background subtracted images wavelets: natural images Gabor atoms: chirps/tones

  49. Structured Sparsity Sparse signal model captures simplistic primary structure Modern compression/processing algorithms capture richer secondary coefficient structure pixels: background subtracted images wavelets: natural images Gabor atoms: chirps/tones

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