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An Introduction to Compressive Sensing. Speaker: Ying- Jou Chen Advisor: Jian-Jiun Ding. Compressive Compressed. Sensing Sampling. CS. Outline. Conventional Sampling & Compression Compressive Sensing Why it is useful? Framework When and how to use Recovery Simple demo. Review…
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An Introduction to Compressive Sensing Speaker: Ying-Jou Chen Advisor: Jian-Jiun Ding
CompressiveCompressed SensingSampling CS
Outline • Conventional Sampling & Compression • Compressive Sensing • Why it is useful? • Framework • When and how to use • Recovery • Simple demo
Review… Sampling and Compression
Nyquist’s Rate • Perfect recovery
Transform Coding • Assume: signal is sparse in some domain… • e.g. JPEG, JPEG2000, MPEG… • Sample with frequency . Get signal of length N • Transform signal K (<< N) nonzero coefficients • Preserve K coefficients and their locations
Compressive Sensing • Sample with rate lower than !! • Can be recoveredPERFECTLY!
Some Applications • ECG • One-pixel Camera • Medical Imaging: MRI
Framework N M M N N: length for signal sampled with Nyquist’s rate M: length for signal with lower rate Sampling matrix
When? How? Two things you must know…
When…. • Signal is compressible, sparse… N M M N
Example… ECG : 心電圖訊號:DCT(discrete cosine transform)
How… • How to design the sampling matrix? • How to decide the sampling rate(M)? N M
Sampling Matrix • Low coherence Low coherence
Coherence • Describe similarity • High coherence more similar Low coherence more different
Example: Time and Frequency • For example, • ,
Fortunately… • Random Sampling • iid Gaussian N(0,1) • Random • Low coherence with deterministic basis.
More about low coherence… Random Sampling
Sampling Rate • Can be exactly recovered with high probability. C : constant S: sparsity n: signal length
Recovery N M M N N BUT….
Recovery • Many related research… • GPSR (Gradient projection for sparse reconstruction) • L1-magic • SparseLab • BOA (Bound optimization approach) …..
Total Procedure Sampling (Assume f is spare somewhere) Find an incoherent matrix e.g. random matrix f Sample signal 已知: Recovering
Reference • Candes, E. J. and M. B. Wakin (2008). "An Introduction To Compressive Sampling." Signal Processing Magazine, IEEE25(2): 21-30. • Baraniuk, R. (2008). Compressive sensing. Information Sciences and Systems, 2008. CISS 2008. 42nd Annual Conference on. • Richard Baraniuk, Mark Davenport, Marco Duarte, ChinmayHegde. An Introduction to Compressive Sensing. • https://sites.google.com/site/igorcarron2/cs#sparse • http://videolectures.net/mlss09us_candes_ocsssrl1m/