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| MEng Systems Engineering student | | MEng Systems Engineering student |
| MS and BS in Statistics
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| == Introduction ==
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| Introduction
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| x ∈ R N often not really sparse but approximately sparse
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| Φ ∈ R M × N for M � N is a Random Gaussian or Bernoulli matrix
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| y ∈ R M are the observed y samples
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| e ∈ R M noise vector k e k 2 ≤ η
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| s.t.
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| How can we reconstruct x from y = Φx + e
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| The goal is to reconstruct x 0 ∈ R N given y and Φ
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| Sensing matrix Φ must satisfy RIP i.e. Random Gaussian or Bernoulli ma-
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| traceries satisfies (cite)
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| let [ N ] = { 1, . . . , N } be an index set
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| [ N ] enumerates the columns of Φ and x
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| Φ is an undetermined systems with infinite solutions. Why l 2 norm does
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| not work
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| What is compression is sunomunus with to the sparsity.
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| The problem formulation is to recover sparse data x 0 ∈ R N
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| The support of x 0 is supp ( x 0 ) = { i ∈ [ N ] : x 0 ( i ) 6 = 0 }
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| we say x is k sparse when | supp ( x )| ≤ k
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| We are interested in the smallest supp ( x ) , i.e. min(supp ( x ) )
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| Restricted isometry property (RIP) Introduced by Candes, Tao
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| Random Gaussian and Bernoulli satisfies RIP
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| Let Φ ∈ R M × N satsify RIP, Let [ N ] be an index set
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| Before we get into RIP lets talk about RIC
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| Restricted Isometry Constant (RIC) is the smallest δ | s s.t. s ⊆ [ N ] that satsifies the RIP condition
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| For s is a restriction on x denoted by x | s x ∈ R N tos k-sparse x s.t. RIP is
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| satisfied the s = | Γ | i.e. s ⊆ [ N ] and Φ | s ⊆ Φ where the columns of Φ | s is
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| indexed by i ∈ S
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| �
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| x i , i f i ∈ S
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| ( x | S ) i =
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| 0 otherwise
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| RIP defined as
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| ( 1 − δ s )k x k 22 ≤ k Φx k 22 ≤ ( 1 + δ s )k x k 22
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| 3 Lemmas Page 267 Blumensath Davies IHT for CS
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| Lemma 1(Blumensath, Davis 2009 Iterative hard thresholding for compressed
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| sensing), For all index sets Γ and all Φ for which RIP holds with s = | Γ | that is
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| s = supp ( x )
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| 1k Φ Γ T k 2 ≤
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| q
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| 1 + δ | Γ | k y k 2
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| ( 1 − δ | Γ | )k x Γ k 22 ≤ k Φ Γ T Φ Γ x Γ k 22 ≤ ( 1 + δ | Γ | )k x Γ k 22
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| and
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| k( I − Φ Γ T Φ Γ )k 2 ≤ δ | Γ | k x Γ k 2
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| SupposeΓ ∩ Λ = ∅
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| k Φ Γ T Φ Λ ) x Λ k 2 ≤ δ s k x Λ k 2
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| Lemma 2 (Needell Tropp, Prop 3.5 in CoSaMP: Iterative signal recovery
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| from incomplete and inaccurate √ samples)
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| If Φ satisfies RIP k Φx s k 2 ≤ 1 + δ s k x s k 2 , ∀ x s : k x s k 0 ≤ s, Then ∀ x
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| k Φx k 2 ≤
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| p
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| 1 + δ s k x k 2 +
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| p
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| 1 + δ s
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| k x k 1
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| sqrts
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| Lemma 3 (Needell Tropp, Prop 3.5 in CoSaMP: Iterative signal recovery
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| from incomplete and inaccurate samples)
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| Let x s be the best s-term approximation to x. Let x r = x − x s Let
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| y = Φx + e = Φx s + Φx r + e = Φx s + ẽ
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| If Φ statisfies RIP for sparcity s, then the norm of error ẽ is bounded by
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| k ẽ k 2 ≤
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| p
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| 1 + δ s k x − x s k 2 +
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| p
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| 1 + δ s
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| k x − x s k 1
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| √
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| + k e k 2
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| s
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| ∀ x
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| Theory
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| Gel’fend n-width
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| Errors E ( S, Φ, D )
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| Definition Mutual Coherence
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| LetA ∈ R M × N , themutualcoherenceµ A isde f inedby :
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| µ A =
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| |h a i , a j i|
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| k a i kk a j k
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| i 6 = j
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| We want a small µ A because it will be close ot the normal matrix, which
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| will satisfie RIP
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| Numerical Example
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| Basis Persuit
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| Iterative Hard Thresholding IHT
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| Solver
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| 2
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| <math>(1 - \delta_s) \| x \|_2 ^2 \leq \| \Phi x \|_2^2 \leq (1 + \delta_s) \| x \|_2 ^2</math>
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