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Compressive Sensing A New Approach to Image Acquisition and Processing
Richard Baraniuk Mona Sheikh Rice University
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The Digital Universe Size: 281 billion gigabytes generated in 2007
digital bits > stars in the universe growing by a factor of 10 every 5 years > Avogadro’s number (6.02x1023) in 15 years Growth fueled by multimedia data audio, images, video, surveillance cameras, sensor nets, … (2B fotos on Flickr, 4.2M security cameras in UK, …) In 2007 digital data generated > total storage by 2011, ½ of digital universe will have no home [Source: IDC Whitepaper “The Diverse and Exploding Digital Universe” March 2008]
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Act I. What’s wrong with today’s. multimedia sensor systems
Act I What’s wrong with today’s multimedia sensor systems? why go to all the work to acquire massive amounts of multimedia data only to throw much/most of it away? Act II One way out: dimensionality reduction (compressive sensing) enables the design of radically new sensors and systems Act III Compressive sensing in action new cameras, imagers, ADCs, … Postlude Open-access education
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Sense by Sampling sample
Example: Large Hadron Collider will produce 10 peta bytes of data per second; need to triage that down to 100/sec “potentially interesting events” in real time
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Sense by Sampling too sample much data!
Example: Large Hadron Collider will produce 10 peta bytes of data per second; need to triage that down to 100/sec “potentially interesting events” in real time
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Sense then Compress sample compress JPEG JPEG2000 … decompress
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Sparsity large wavelet coefficients (blue = 0) pixels
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Sparsity large wavelet coefficients pixels wideband signal samples
(blue = 0) pixels wideband signal samples large Gabor (TF) coefficients frequency time
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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
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What’s Wrong with this Picture?
linear processing linear signal model (bandlimited subspace) nonlinear processing nonlinear signal model (union of subspaces) sample compress decompress
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Compressive Sensing Directly acquire “compressed” data via dimensionality reduction Replace samples by more general “measurements” compressive sensing recover
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Compressive Sensing Theory A Geometrical Perspective
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Sampling Signal is -sparse in basis/dictionary
WLOG assume sparse in space domain sparse signal nonzero entries
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Sampling Signal is -sparse in basis/dictionary Sampling
WLOG assume sparse in space domain Sampling sparse signal measurements nonzero entries
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Compressive Sensing When data is sparse/compressible, can directly acquire a condensed representation with no/little information loss through linear dimensionality reduction sparse signal measurements nonzero entries
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How Can It Work? Projection not full rank… … and so loses information in general Ex: Infinitely many ’s map to the same (null space)
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How Can It Work? Projection not full rank… … and so loses information in general But we are only interested in sparse vectors columns
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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
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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 MxK submatrices are full rank (ideally close to orthobasis) Restricted Isometry Property (RIP) columns
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Geometrical Interpretation of RIP
An information preserving projection preserves the geometry of the set of sparse signals sparse signal nonzero entries 20
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Geometrical Interpretation of RIP
An information preserving projection preserves the geometry of the set of sparse signals Model: union of K-dimensional subspaces aligned w/ coordinate axes (highly nonlinear!) sparse signal nonzero entries 21
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RIP = Stable Embedding An information preserving projection preserves the geometry of the set of sparse signals RIP ensures that K-dim subspaces 22
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RIP = Stable Embedding An information preserving projection preserves the geometry of the set of sparse signals RIP ensures that 23
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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-complete design problem columns
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Insight from the 70’s [Kashin, Gluskin]
Draw at random iid Gaussian iid Bernoulli … Then has the RIP with high probability provided columns
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Insight from the 70’s [Kashin, Gluskin]
Draw at random iid Gaussian iid Bernoulli … Then has the RIP with high probability provided columns
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Randomized Sensing Measurements = random linear combinations of the entries of No information loss for sparse vectors whp sparse signal measurements nonzero entries
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CS Signal Recovery Goal: Recover signal from measurements
Problem: Random projection not full rank (ill-posed inverse problem) Solution: Exploit the sparse/compressible geometry of acquired signal
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CS Signal Recovery Random projection not full rank
Recovery problem: given find Null space Search in null space for the “best” according to some criterion ex: least squares (N-M)-dim hyperplane at random angle
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Closed-form solution:
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Closed-form solution: Wrong answer! 31
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Closed-form solution: Wrong answer! 32
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: “find sparsest vector in translated nullspace” 33
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Correct! But NP-Complete alg “find sparsest vector in translated nullspace” 34
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Convexify the optimization Candes Romberg Tao Donoho 35
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Signal Recovery Recovery: given (ill-posed inverse problem) find (sparse) Optimization: Convexify the optimization Correct! Polynomial time alg (linear programming) 36
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Compressive Sensing sparse signal random measurements nonzero entries Signal recovery via optimization [Candes, Romberg, Tao; Donoho] 37
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Compressive Sensing Signal recovery via iterative greedy algorithm
sparse signal random measurements nonzero entries Signal recovery via iterative greedy algorithm (orthogonal) matching pursuit [Gilbert, Tropp] iterated thresholding [Nowak, Figueiredo; Kingsbury, Reeves; Daubechies, Defrise, De Mol; Blumensath, Davies; …] CoSaMP [Needell and Tropp] 38
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Iterated Thresholding
update signal estimate prune signal estimate (best K-term approx) update residual
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Summary: CS Encoding: = random linear combinations of the entries of
Decoding: Recover from via optimization sparse signal measurements nonzero entries 40
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CS Hallmarks Stable Asymmetrical (most processing at decoder)
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 for any sparse signal class (generic) 41
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Compressive Sensing In Action
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Gerhard Richter 4096 Farben / 4096 Colours
cm X 254 cm Laquer on Canvas Catalogue Raisonné: 359 Museum Collection: Staatliche Kunstsammlungen Dresden (on loan) Sales history: 11 May 2004 Christie's New York Post-War and Contemporary Art (Evening Sale), Lot 34 US$3,703,500 43
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“Single-Pixel” CS Camera
scene single photon detector image reconstruction or processing DMD DMD random pattern on DMD array DMD is used in projectors Multiply value of random pattern in mirror with value of signal (light intensity) in pixel lens is focused onto the photodiode w/ Kevin Kelly
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“Single-Pixel” CS Camera
scene single photon detector image reconstruction or processing DMD DMD random pattern on DMD array DMD is used in projectors Multiply value of random pattern in mirror with value of signal (light intensity) in pixel lens is focused onto the photodiode … Flip mirror array M times to acquire M measurements Sparsity-based (linear programming) recovery
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First Image Acquisition
target pixels 11000 measurements (16%) 1300 measurements (2%)
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single photon detector
Utility? Fairchild 100Mpixel CCD single photon detector DMD is used in projectors Multiply value of random pattern in mirror with value of signal (light intensity) in pixel lens is focused onto the photodiode DMD DMD
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CS Low-Light Imaging with PMT
true color low-light imaging 256 x 256 image with 10:1 compression [Nature Photonics, April 2007]
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CS Infrared Camera 20% 5%
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CS Hyperspectral Imager
spectrometer hyperspectral data cube nm 1M space x wavelength voxels 200k random sums
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CS MRI Lustig, Pauly, Donoho et al at Stanford
Design MRI sampling patterns (in frequency/k-space) to be close to random Speed up acquisition by reducing number of samples required for a given image reconstruction quality
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Multi-Slice Brain Imaging [M. Lustig]
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3DFT Angiography [M. Lustig]
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CS In Action CS makes sense when measurements are expensive
Ultrawideband A/D converters [DARPA “Analog to Information” program] Camera networks sensing/compression/fusion Radar, sonar, array processing exploit spatial sparsity of targets DNA microarrays smaller, more agile arrays for bio-sensing [Milenkovic, Orlitsky, B]
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Summary Compressive sensing
randomized dimensionality reduction integrates sensing, compression, processing exploits signal sparsity information enables new sensing modalities, architectures, systems relies on large-scale optimization Why CS works: preserves information in signals with concise geometric structure sparse signals | compressible signals | manifolds
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Open Research Issues Links with information theory
new encoding matrix design via codes (LDPC, fountains) new decoding algorithms (BP, etc.) quantization and rate distortion theory Links with machine learning Johnson-Lindenstrauss, manifold embedding, RIP Processing/inference on random projections filtering, tracking, interference cancellation, … Multi-signal CS array processing, localization, sensor networks, … CS hardware ADCs, receivers, cameras, imagers, radars, …
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background subtracted images
Beyond Sparsity Sparse signal model captures simplistic primary structure pixels: background subtracted images wavelets: natural images Gabor atoms: chirps/tones 58
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background subtracted images
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 59
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Wavelet Tree-Sparse Recovery
CoSaMP, (RMSE=1.12) target signal N=1024 M=80 Tree-sparse CoSaMP (RMSE=0.037) L1-minimization (RMSE=0.751) 60
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dsp.rice.edu/cs
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vibrant interactive community connected innovative up-to-date efficient effective
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create share use freely re-use openly vibrant interactive community connected innovative up-to-date efficient effective
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create share use freely re-use openly vibrant interactive community connected innovative up-to-date efficient effective
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create share use re-use freely openly why?
today’s textbooks/courses lock up educational ideas closed formats closed copyrights
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create share use re-use freely openly open education
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OE enablers
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enabler 1: technology Web/XML modularization
common framework for sharing Internet virtually free distribution virtually infinite, permanent storage
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Connexions – primordial state
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textbook / course
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personalize
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reuse
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enabler 2: new IP common legal vocabulary
intellectual property and copyright make content safe to share common legal vocabulary inspiration: open-source software (ex: Linux)
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today’s textbook pipeline
authoring editing quality control publishing distribution
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open education ecosystem
authoring editing quality control publishing distribution feedback peers users learning
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Connexions (cnx.org) free on-line low-cost in print
non-profit OE platform/community based at Rice U since 1999 ($6m+ in foundation funding) 950+ open textbooks/courses reusable Lego modules 1.5 million+ unique users/month free on-line low-cost in print
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Universality Random measurements can be used for signals sparse in any basis
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Universality Random measurements can be used for signals sparse in any basis
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Universality Random measurements can be used for signals sparse in any basis sparse coefficient vector nonzero entries
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