Spatial Smoothing and Broadband Beamforming. Bhaskar D Rao University of California, San Diego
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1 Spatial Smoothing and Broadband Beamforming Bhaskar D Rao University of California, San Diego brao@ucsd.edu
2 Reference Books and Papers 1. Optimum Array Processing, H. L. Van Trees 2. Stoica, P., & Moses, R. L. (2005). Spectral analysis of signals (Vol. 1). Upper Saddle River, NJ: Pearson Prentice Hall. 3. Schmidt, R. (1986). Multiple emitter location and signal parameter estimation. IEEE transactions on antennas and propagation, 34(3), Roy, Richard, and Thomas Kailath. ESPRIT-estimation of signal parameters via rotational invariance techniques. IEEE Transactions on acoustics, speech, and signal processing 37.7 (1989): Rao, Bhaskar D., and K. S. Arun. Model based processing of signals: A state space approach. Proceedings of the IEEE 80.2 (1992):
3 Narrow-band Signals Assumptions D 1 x(ω c, n) = V(ω c, k s )F s [n] + V(ω c, k l )F l [n] + Z[n] l=1 F s [n], F l [n], l = 1,.., D 1, and Z[n] are zero mean E( F s [n] 2 ) = p s, and E( F l [n] 2 = p l, l = 1,..., D 1, and E(Z[n]Z H [n]) = σ 2 z I All the signals/sources are uncorrelated with each other and over time: E(F l [n]f m[p]) = p l δ[l m]δ[n p] and E(F l [n]f s [p]) = 0 The sources are uncorrelated with the noise: E(Z[n]F l [m]) = 0
4 Direction of Arrival (DOA) Estimation D 1 x[n] = V l F l [n] + Z[n], n = 0, 1,..., L 1 l=0 Here we have chosen to denote V s by V 0 for simplicity of notation. Note V l = V(k l ). We will refer to the L vector measurements as L snapshots. Goal: Estimate the direction of arrival k l or equivalently (θ l, φ l ), l = 0,..., D 1. Can also consider estimating the source powers p l, l = 0, 1,..., D 1, and noise variance σ 2 z. ULA : N 1 j V(ψ) = [e 2 ψ,..., e j N 1 2 ψ ] T N 1 j = e 2 ψ [1, e jψ, e j2ψ,..., e j(n 1)ψ ] T Note for a ULA, V(ψ) = JV (ψ), where J is all zeros except for ones along the anti-diagonal. Also note J 2 = I.
5 ULA and Time Series ULA x 0 [n] x 1 [n] D 1. = l=0 x N 1 [n] 1 e jψ l. e j(n 1)ψ l e j N 1 2 ψ l F l [n]+z[n], n = 0, 1,..., L 1 Similar to a time series problems composed of complex exponentials x[n] = D 1 l=0 c le jω l n + z[n], n = 0, 1,..., (M 1). In vector form, the time series measurement is x[0] 1 z[0] x[1] e jω l z[1]. x[m 1] D 1 = l=0. e j(m 1)ω l c l +. z[m 1] The sum of exponentials problem with M samples is equivalent to a ULA with M sensors and one (vector) measurement or one snapshot In array processing we have a limited number of sensors N but can compensate potentially with L snapshots. The time series problem is equivalent to one snapshot but a potentially
6 Observations S x = S s + σz 2 I = E s (Λ s + σz 2 I D D ) E H s + σz 2 E n E H n D N = (λ s l + σz 2 )q l q H l + σz 2 q l q H l l=1 l=(d+1) S x has eigenvalues λ l = λ s l + σ 2 z, l = 1,..., D, and λ l = σ 2 z, l = (D + 1),..., N The number of sources D can be identified by examining the multiplicity of the smallest eigenvalue which is expected to be σ 2 z with multiplicity (N D) The eigenvectors corresponding to the signal subspaces and noise subspaces are readily available from the eigen decomposition of S x, i.e. E s and E n are easily extracted.
7 MUltiple SIgnal Classification (MUSIC) MUSIC uses the noise subspace spanned by the noise eigenvectors E n. Since R(V) = R(E s ) R(E n ), we have V l R(E n ), l = 0, 1,..., (D 1) or V H l E n = 0, l = 0, 1,..., (D 1) Many options to use this orthogonality property. All methods start with S x, usually estimated from the data. MUSIC Algorithm (also known as Spectral-MUSIC) Perform an eigen-decomposition of S x Estimate D and the signal subspace E s and the noise subspace E n Compute the spatial MUSIC spectrum as follows: P MUSIC (k) = 1 V H (k)e n 2 Note that V H (k)e n 2 = V H (k)e n E H n V(k) = V H (k)p n V(k) where P n = E n E H n The peaks in P MUSIC (k) gives us the DOA.
8 Root-MUSIC Algorithm for ULAs Perform an eigen-decomposition of S x Estimate D and the signal subspace E s and the noise subspace E n Compute q l (z) = N 1 m=0 q l[m]z m, l = D + 1,..., N 1. Compute B(z) = N l=d+1 B l(z) where B l (z) = q l (z)q l ( 1 z ) = N 1 l= (N 1) r q l [m]z m Perform a spectral factorization to find a minimum phase factor H rm (z), i.e. B(z) = H rm (z)h rm( 1 z ). The D roots on/close to the unit circle are identified and their argument used to estimate the DOA
9 ESPRIT algorithm Perform an eigen-decomposition of S x Estimate D and the signal subspace E s and the noise subspace E n From E s determine E 1 as the first (N 1) rows and E 2 as the last (N 1) rows of E s Compute Φ by solving E 2 = E 1 Φ using a Least Squares Approach, i.e. Φ = E + 1 E 2. Perform an eigen-decomposition of Φ The argument of the D eigenvalues are used to estimate the DOA As in the minimum norm method, E + 1 can be obtained efficiently using the matrix inversion lemma and the computation of Φ can be simplified. Another option is to use a Total Least Squares approach, as opposed to a Least Squares approach, to estimate Φ
10 ESPRIT: ULA and Doublets
11 ESPRIT with Doublets: Theory If the array manifold for the first array is v 1 (k), and the array manifold for the second array is v 2 (k),then for a plane with wavenumber k l, we have v 2 (k l ) = v 1 (k l )e jωc τ l. The overall array manifold has the form V(k l ) = [ v1 (k l ) v 2 (k l ) ] [ = v 1 (k l ) v 1 (k l )e jωc τ l Now consider D plane waves. The signal subspace [ ] [ ] v1 (k V = [V 0, V 1,..., V D 1 ] = 0 ) v 1 (k 1 )... v 1 (k D 1 ) V1 = v 2 (k 0 ) v 2 (k 1 )... v 2 (k D 1 ) V 2 [ ] [ ] v = 1 (k 0 ) v 1 (k 1 )... v 1 (k D 1 ) V1 v 1 (k l )e jωc τ0 v 1 (k l )e jωc τ1... v 1 (k l )e jωc τ = D 1 V 1 Ψ An ESPRIT algorithm can be developed now with [ ] E1 E s = with E E 2 = E 1 Φ 2 ]
12 Coherent Sources S x = S s + σ 2 z I = VS F V H + σ 2 z I The dimension D of the signal subspace depends on the rank of the source covariance matrix S F. If the sources are highly correlated, S F can be ill-conditioned or singular. This can make the dimension of the signal subspace less than D and in particular when an estimate of S x is used. Spatial Smoothing for ULAs: A technique to overcome this rank deficiency problem.
13 Spatial Smoothing We will consider the ULA as two sub-arrays as in ESPRIT: subarray 1 is the first (N 1) sensors and subarray 2 is the last (N 1) sensors. Since the data is given by x[n] = VF[n] + Z[n], we have the data from the two sub-arrays given by x 1 [n] = V 1 F[n] + Z 1 [n] and x 2 [n] = V 2 F[n] + Z 2 [n] Covariance of the two subarrays are given by S (1) x = V 1 S F V1 H + σz 2 I and S (2) x = V 2 S F V2 H + σz 2 I = V 1 ΨS F Ψ H V1 H + σz 2 I Spatially Smoothed Covariance S x (s) = 1 ( ) S (1) x + S (2) x = 1 ( V1 S F V1 H + σz 2 I + V 2 S F V2 H + σz 2 I ) 2 2 = 1 ( V1 S F V1 H + V 1 ΨS F Ψ H V H ) 1 + σ 2 2 z I ( SF + ΨS F Ψ H ) = V 1 V1 H = V 1 SF V1 H 2 S F = S F +ΨS F Ψ H 2 is more likely to have rank D restoring the signal subspace dimension in the spatially smoothed covariance matrix
14 Spatial Smoothing Cont d We can generalize this idea by viewing the ULA as P sub-arrays: subarray 1 is the first (N P + 1) sensors, and subarray 2 is the next (N P + 1) sensors and so on. Since the data is given by x[n] = VF[n] + Z[n], we have the data from the l sub-array given by x l [n] = V l F[n] + Z l [n], l = 1, 2,.., P with V l = V 1 Ψ l 1 Covariance of the lth sub-array is given by S (l) x = V l S F V H l + σ 2 z I = V 1 Ψ l 1 S(Ψ H ) l 1 V 1 + σ 2 z I Spatially Smoothed Covariance S (s) x = 1 P P l=1 S (l) x = V 1 S F V H 1 S F = 1 P P l=1 Ψl 1 S F (Ψ H ) l 1 is more likely to have rank D restoring the signal subspace dimension in the spatially smoothed covariance matrix
15 Covariance Estimation Given L snapshots Ŝ x = 1 L 1 x[n]x H [n] = 1 L L DDH, where D = [x[0], x[1],..., x[l 1]] n=0 Smoothed Covariance Estimate Ŝ (s) x = 1 P P l=1 Ŝ (l) x = 1 PL P D l Dl H where D l = [x l [0], x l [1],..., x l [L 1]] l=1 and x l [n] = [x l 1 [n], x l [n],..., x N P+l 1 [n]] T. For P = 2, we have x 1 [n] = [x 0 [n], x 1 [n],..., x N 2 [n]] T and x 2 [n] = [x 1 [n], x 2 [n],..., x N l [n]] T. Alternatively, we can express the smoothed covariance estimate as Ŝ (s) x = 1 L 1 D s [n]ds H [n], where D s [n] = [x 1 [n], x 2 [n],..., x P [n]] L n=0
16 Time Series: Sum of Exponentials x[n], n = 0, 1,..., M 1: L = 1, one snapshot, array size N = M, where M is the number of samples containing D exponentials. To compute a covariance matrix, we have to do smoothing. D s = x[0] x[1]... x[p 1] x[1] x[2]... x[p].... x[m P] x[m P + 1]... x[m 1] The smoothed covariance can be computed a Ŝ(s) x = 1 P D sds H. Since we need rank of the matrix to be greater than D, we need P > D and M P + 1 > D. This requires M > 2D. Instead of an eigen-decomposition of Ŝ(s) x, one can do a SVD of D s. Numerically superior. Can use MUSIC, ESPRIT or any subspace method to estimate the frequencies ω l.
17 Forward-Backward (FB) Smoothing for ULAs For a ULA, we have JV (ψ) = V(ψ). Hence JS xj = JV S F V T J + σ 2 z JIJ = VS F V H + σ 2 z I The signal subspace of JS xj is also spanned by V and so subspace methods MUSIC etc can be applied to JS xj. The FB covariance estimate S FB x = 1 2 (S x + JS xj) = 1 2 V(S F + S F )V H + σ 2 z I Subspace methods can be readily applied to estimated ŜFB x. The FB covariance matrix has a better condition number and so improves performance. The FB approach can be applied to spatial smoothing, i.e. 1 2 (Ŝ(s) x + JŜ (s) x J ) and also to the time series [D s, JDs ].
18 Broadband Signals Narrow band signals: f (t τ)e jωc (t τ) f (t)e jωc (t τ), for τ << T = 1 2B The signal becomes broadband if the bandwidth becomes large and the delay across the array can no longer be considered small compared to the sampling interval
19 Signals such as speech signals are naturally baseband signals and are broadband in nature
20 Delay and Sum beamformer Delay the output of the sensors appropriately and enable constructive addition of the copies to get SNR improvement over white noise In the presence of an interferer will use FIR filters at the output to cancel or suppress interference
21 Time-Delay Estimation: Preliminaries 1 r x1x 2 [m] = E(x 1 [n + m]x2 [n]) and from LTI systems theory we know the cross-power spectrum is given by S y1y 2 (e jω ) = m= r y1y 2 [m]e jωm = H 1 (e jω )H 2 (e jω )S x1x 2 (e jω ) S y1y 1 (e jω ) is the power spectrum which is real and positive. If we are given data, we can divide the data into L blocks of length N and estimate the cross-power spectrum using the FFT 1 Carter, G. Clifford. Coherence and time delay estimation: an applied tutorial for research, development, test, and evaluation engineers. IEEE, 1993.
22 Time Delay Estimation y 1 [n] y 2 [n] = r 1 (nt ) = s[n] + z 1 [n] = r 2 (nt ) = s[n D] + z 2 [n] Assuming the noises are uncorrelated, r y2y 1 [m] = r ss [m D]. ˆD = arg max r 1 π y 2y 1 [m] = arg max S y2y m m 2π 1 (e jω )e jωm dω π The peak is sharp if s[n] is a white noise sequence and in the absence of reverberation/multipath.
23 Generalized Cross-Correlation (GCC) Methods ˆD = arg max m 1 π φ(e jω )S y2y 2π 1 (e jω )e jωm dω π Cross-Correlation Method: φ(e jω ) = 1 The purpose of φ(e jω ) is to whiten the signal and/or weight the spectrum based on the SNR in the frequency domain. Note that S y2y 1 (e jω ) = S ss (e jω )e jωd. PHAse Transform (PHAT): φ(e jω ) = 1 S y2 y 1 (e jω ) Smoothed COherence Transform (SCOT): φ(e jω ) = 1 Sy1 y 1 (e jω )S y2 y 2 (e jω ) Maximum-Likelihood (ML): φ(e jω ) = 1 γ y2 y 1 (e jω ) 2 S y2 y 1 (e jω ) 1 γ y2 y 1 (e jω ) 2 where γ y2y 1 (e jω ) = S y2y 1 (e jω ) Sy1y 1 (e jω )S y2y 2 (e jω ), 0 γ y 2y 1 (e jω ) 1, ω is the coherence function.
24 Adaptive Broadband Beamformer 2 2 Frost, Otis Lamont. An algorithm for linearly constrained adaptive array processing. Proceedings of the IEEE 60.8 (1972):
25 Wideband BF Formulation Number of sensors: N = K, number of taps, i.e. order of FIR filters is J. If we denote the input measurement vector as x[n], then the data in the tap delay line is [x[n], x[n 1],..., x[n J + 1]] Weights: Using vector notation, the weights in the tap delay line are [W 0, W 1,..., W J 1 ], where W k = [w k,0, w k,1,..., w k,n 1 ]. Key Question: How to characterize and design such an array? Characterization: Frequency-Wavenumber Response Extension of the MPDR formulation: Look direction constraint plus minimize output power
26 Frequency Wavenumber Response If the source signal is s(t) = e jωt from direction k, then the signal received at sensor l is delayed relative to the origin by τ l. x l (t) = s(t) = e jω(t τ l ) or x l [n] = x l (nt ) = e jω(nt τ l ) = e jω(n τ l ) where ω = ΩT and τ l = 1 T τ l. The array output x l [n] H l (z) y l [n] = e jω(n τ l ) H l (e jω ) N 1 N 1 N 1 y[n] = y l [n] = e jω(n τ l ) H l (e jω ) = e jωn e jω τ l H l (e jω ) = e jωn B(ω, k) l=0 l=0 B(ω, k) = N 1 l=0 ejω τ l H l (e jω ) is the frequency-wavenumber response of array l=0
27 Time-Domain Formulation Beamformer output J 1 y[n] = W0 T x[n] + W1 T x[n 1] WJ 1x[n T J + 1] = Wk T x[n k] k=0 Constraints: Define 1 = [1, 1,..., 1] T, a vector in R N. N 1 w k,m = f k or 1 T W k = f k, k = 0, 1,..., J 1 m=0 This is equivalent to look direction transfer function constraint of J 1 H d (z) = F (z) = f 0 + f 1 z f J 1 z (J 1) = f m z m m=0
28 Frost Beamformer Stacking all the BF weights and the constraints into large vectors of dimension NJ, we have y[n] = W T X[n], where W = [W T 0, W T 1,..., W T J 1] T and X[n] = [x T [n], x T [n 1],..., x T [n J + 1]] T. The output power is E(y 2 [n]) = W T R xx W where R xx = E(X[n]X T [n]). The constraints are given by C T W = f or The optimization problem is 1 T T T W = min W WT R xx W subject to C T W = f Using Lagrange multipliers, we can show W o = R 1 xx C(C T R 1 xx C) 1 f f 1 f 2. f J 1
29 GSC structure Because of the symmetric nature of the constraints with respect to time 1 T W k = f k, i.e. the constraint matrix 1 is the same, the constraint can be implemented first followed by filtering. Our W q = 1 N [1, 1,..., 1]T and our B matrix is an orthonormal set of vectors orthogonal to W q. If N = 8, a choice for B is from the Haar basis B =
30 GSC Implementation of Adaptive Broadband BF 3 3 Griffiths, Lloyd, and C. W. Jim. An alternative approach to linearly constrained adaptive beamforming. IEEE Transactions on antennas and propagation 30.1 (1982):
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