Synthetic Aperture Radar (SAR) Basic Concept of SAR: ⇒ Angular resolution θB ≅ λ / L L Consider fixed array v i (t ) Σ Claim Equivalent to Moving Antenna: θB Assumes phase coherence in oscillator during each image Lec20.4-1 2/26/01 v R1 Synthetic Aperture Radar (SAR) Ideal point reflector Maintain coherence Typical CW pulse signal and echo, E e − jφ v=x t x φ(t) Received phase: 2π x, t 0 Process a "window" of data, e.g. Received magnitude: If scat ≠ f(angle): Phase φ(t ) = f( λ, point source range) Magnitude E = f(point source σ s , range) E θB • Ro x, t 0 We seek 2-D source characterization: σs = f(azimuth, range) Lec20.4-2 2/26/01 R2 Resolution of “Unfocused” SAR Reconstruction of image: first select R, xo of interest W(x) ↔ x0 L x λ L θSAR 0 W(x) • E(x) observed ψx ˆ ψ ) W(ψ ) ∗ E(ψ ) = E( x SAR angular resolution: θSAR ≅ λ LSAR ≥ λ RθB = D R ≅λD Lec20.4-3 2/26/01 R3 Resolution of “Unfocused” SAR SAR angular resolution: θSAR ≅ λ / LSAR ≥ λ / RθB = D / R Lateral spatial resolution = θSAR • R ≅ D (want small D, large θB , large L) Range resolution ≅ cT / 2 ≅ λ /D Note: If antenna is steered toward the target, increasing L, the lateral resolution can be < D. Then repeat for all R, x 0 R Rmax Yields image: ∆R Rmin Lec20.4-4 2/26/01 0 ∆x > D cT ∆R ≅ 2 x R4 Phase-Focused SAR ψ (x) θB ≅ λ / D R D x0 L 2 ⎧ L ⎛ ⎞ 2 2 2 + = + δ ≅ + 2δR R (R ) R ⎪ ⎜2⎟ ⎝ ⎠ ∼ λ / 2D ⎪ ⎪ λ λ L2 δ< ⇒⎨ ≤ δ≅ 8R 16 16 ⎪ 2L2 ⎪ ⎪therefore R ≥ λ "farfield" x and focusing is ⎩ unnecessary Phase focusing is required if δ > λ 16, so the target is in the SAR near field, i.e., if R < 2L2 / λ = 2λR2 / D2 ( where L = λ / θSAR = λR / D ) . Lec20.4-5 2/26/01 S1 Phase-Focused SAR Solution: W(x) → W '(x) with phase correction φ(t) Pulse 2π xo x, t ↑ PRF must be higher; to reconstruct φ(t) we need at least 2 samples per phase wrap. Note: With phase focusing, L increases and spatial resolution in x ca be less than D, using beamsteering (e.g. a phased array) Also: L.O. phase drift can be corrected if bright point sources exist in scene. Lec20.4-6 2/26/01 S2 Required Pulse-Repetition Frequency (PRF) Ι(x)W(x ) Ι ( x) ↔ Ι (ψx ) L′ L λ / L′ 0 ∆ψ x ψx ˆ W(x) • Ι(x) • E(x) Observed W(ψ x ) ∗ Ι(ψ x ) ∗ E(ψ x ) = Eˆ ( ψ x ) PRF = v / L′ (e.g., v = aircraft velocity) Want ∆ψ x = λ / L′ >> λ / D, or D >> L′ Therefore want PRF >> v/D Lec20.4-7 2/26/01 S3 PRF Impacts SAR Swath Width Rmax Swath being imaged vx Rmin θBy x y Don't want echoes to overlap for successive pulses. D ⎛ 1 ⎞ ′ << = Therefore let 2 (Rmax − Rmin ) / c < ⎜ L / v x ⎟ vx ⎝ PRF ⎠ D Implies that large swath widths require large vx and yield poorer spatial resolution. Lec20.4-8 2/26/01 S4 Envelope Delay Focusing Envelope-delay focusing required when δR > ∆R 3 Range Box ∆R R0 θB 2 θBR0 Envelope delay δR vx 2Ro c x0 (Target location) x Compensation for both envelope delay and phase delay is needed for very high spatial resolution [i.e., for small ∆R (large B)] and large θBR0 . Lec20.4-9 2/26/01 S5 SAR Intensity Estimates: Speckle For each SAR pixel, the estimated cross-section is: 2 K = range-dependent constant σˆ = K ∑ w ( xi ) Eij where i = pulse number i, j j = subscattering index Many subscatters j per pixel Simplifying: σˆ = N ∑ εk k =1 2 = N ∑ ak e j( ωt +φk ) Scattering centers j Lec20.4-10 2/26/01 = r 2 k =1 random variable Ppixel 2 Ιm { ε} uniformly over 2π typically ∑ Re {ε} = g.r.v.z.m. k ∑ Ιm{ε} = g.r.v.z.m. k j+1 Re { ε} v U1 SAR Intensity Estimates: Speckle p { ∑ εk } = "r " r σ 2 e −r 2 / 2 σ 2 p{r } Ιm { ε} p {r > ro } = e − ( ro / σ ) / 2 2 r σ E[r ] = σ π / 2 Re { ε} 2 2⎤ 2 ⎡ E r = σ (2 − π / 2) ∝ ε r ⎣ ⎦ Because we are adding (averaging) phasors, not scalars 0 2 E ⎡⎣r − r ⎤⎦ ≅ 2σ / 3 ≠ f(N)! Thus raw SAR images, full spatial resolution, STD deviation 2σ / 3 = 0.53 ⇒ very grainy images have Q≅ mean intensity σ π/2 Lec20.4-11 2/26/01 U2 Reduction of SAR Speckle Alternate ways to reduce "speckle" by averaging pixel intensities: 1) Blur image by averaging M2 pixels ⇒ Q = 0.53 / M (using large Bτ signals yields high resolution, can be smoothed) 2) Average using spatial diversity Q= 0.53 N L N = 3 or more looks possible. Trade against potential resolution in x. x Lec20.4-12 2/26/01 U3 Reduction of SAR Speckle Alternate ways to reduce “speckle” by average pixel intensities: 3) Average using frequency diversity, where each band yields an independent image. Note that the same total bandwidth could alternatively yield more range resolution and pixels for averaging. Image 1 Image 3 Image 2 Q= f Lec20.4-13 2/26/01 0.53 N N Bands U4 Reduction of SAR Speckle 4) Time averaging works only if source varies. For example a narrow swath permits high PRF and an increase in N, but unless the antenna translates more than ~λR/D between pulses [R = range, D = pixel width (m)], then adjacent pulse returns are correlated. j D θp ≅ λ D R In general, reasonably smooth images need > 8 levels, so Q¢ = S.D./M ≅ (1/3)/4 levels = 1/12, versus Q ≅ 1/2. To reduce standard deviation by 6, need N ~ > 62 = 36 looks. Lec20.4-14 2/26/01 U5 Alternative SAR Geometries and Applications Case A. Source Stationary Case B. Source Moves Case C. Source rotates v (e.g., geology) v Antenna Moves (e.g. moon or spacecraft) (e.g. satellite) Antenna Stationary Antenna Stationary Velocity dispersion within inverse SAR (ISAR) source (e.g., a moving car) can displace its apparent position laterally. Lec20.4-15 2/26/01 U6 ESTIMATION Examples taken from Remote Sensing Principles are Nonetheless Widely Applicable Linear and Non-Linear Problems Gaussian and Non-Gaussian Statistics Professor David H. Staelin Massachusetts Institute of Technology Lec20.4-16 2/26/01 A1 Linear Estimation: Smoothing and Sharpening Smoothing reduces image speckle and other noise; sharpening or “deconvolution” increases it. Sharpening can “de-blur” images, compensating for diffraction or motion induced blurring. Audio smoothing and sharpening are similar. Consider antenna response example; we observe: ( ) TA ψ A Lec20.4-17 2/26/01 ( ) ( ) 1 = G ψ A − ψ s TB ψ s dΩ s ∫ π 4 4π A2 Linear Estimation: Smoothing and Sharpening Consider antenna response example; we observe: 1 TA ψ A = G ψ A − ψ s TB ψ s dΩ s ∫ 4π 4 π 1 TA ψ A ≅ G ψ ∗ TB ψ (small solid angles) 4π ( ) ( ( ) ( ) ( ) ( ) ( ) ( ) ) ( ) 1 G fψ • TB fψ 4π ↑ ↑ Cycles/Radian Antenna Spectral Response T A fψ = − j2 π( ψ x fψ x +ψ y fψ y ) ⎡ ⎤ dψ x dψ y ⎥ ⎢i.e., G fψ x , fψ y = ∫∫ G ( ψ x , ψ y ) e ⎣ ⎦ ( Lec20.4-18 2/26/01 ) A3 Example: Square Uniformly-Illuminated Aperture ( ) ( ) ( ) 1 TA ψ A ≅ G ψ ∗ TB ψ (small solid angles) 4π 1 = G fψ • TB fψ T A fψ 4π ↓ ↓ Cycles/Radian Antenna Spectral Response ( ) Aperture ( ) ( ) ( ) 0 τ y , fψ λ Try: ( ) T̂B fψ = Lec20.4-19 2/26/01 G(ψ) R E τλ , G fψ D D ( ) y Dλ e.g. τ x , fψ λ x ↔ ψy ψx λ /D Blurring Function ( ) This restores high-frequency components, but G ( fψ ) ← goes to zero for fψ > D / λ ! x 4 πT A fψ A4 Example: Square Uniformly-Illuminated Aperture ( ) T̂B fψ = ( ) Try: TˆB fψ = ( ) This restores high-frequency components, but G ( fψ ) ← goes to zero for fψ > D / λ ! x 4 πT A fψ ( ) ( )W f ( ψ) G ( fψ ) W fψ 4 πT A fψ 0 fψ fψ , τ x x λ D cycles/radian λ y ( ) The window function W fψ avoids the singularity. The "principal solution" uses a boxcar W (s). Lec20.4-20 2/26/01 A5 Example: Square Uniformly-Illuminated Aperture ( ) ( ) Then TB ( fψ ) = 1, so TˆB ( fψ ) = 4 πT A ( f ψ ) W ( f ψ ) G ( f ψ ) = W ( fψ ) , since TA ( f ψ ) = G ( f ψ ) TB ( f ψ ) 4 π T̂B ( ψ ) = 2-D sinc function for a uniformly illuminated rectangular Consider the restored (sharpened) image of a point source, TB ψ = δ ψ : ψy antenna aperture. ( ) ψx T̂B ψ = Zero at λ / 2D ( ) Predicts TB ψ < 0! Can clip, transform, iterate ( ) T̂B ψ Lec20.4-21 2/26/01 0 ↔ ( ) T̂B fψ fψ x 0 Can set to zero (apriori information) A6 Sharpening Noisy Images ( ) ( ) ( ) T̂ A fψ = T A fψ + N fψ ↑ ↑ Truth ∆T rms ( ) ( ) T̂B fψ N ( fψ ) 0 D/λ for point source fψ → 0! Amplifier Noise ↓ −D / λ / G fψ ⎤ W fψ ⎦ ( ) ( ) ( ) Tˆ B fψ = ⎡ 4πTˆ A fψ ⎣ ( ) N fψ for small G fψ TA ( fψ ) e.g. ( ) Amplifies white noise 0 D/λ fψ x ( ) Therefore optimize W fψ Lec20.4-22 2/26/01 A7 Sharpening Noisy Images ( ) Therefore optimize W fψ : ⎡ 4 π W ( fψ ) Minimize E ⎢ TB ( fψ ) − T A ( fψ ) + N ( fψ ) 0 ⎢ G ( fψ ) ⎣ ( ∂Q / ∂W = 0 yields: ( )optimum W fψ ⎥ =∆ Q ⎥ ⎦ 2 ∗ 1 1 * ⎡ ⎤ E T A ( f ψ ) + T A ( f ψ ) N ( fψ ) + T A ( f ψ ) N ( fψ ) o o ⎢⎣ o ⎥⎦ 2 2 = 2⎤ ⎡ E T A ( f ψ ) + N ( fψ ) ⎢⎣ o ⎥⎦ If E [ T A N] = 0, then Lec20.4-23 2/26/01 ) 2⎤ 1 ⎞ ⎛ ≅ W optimum ( fψ ) = ⎜ 2 N⎟ ⎡ ⎤ E N ( fψ ) ⎢⎣ ⎥⎦ ⎜⎝ 1 + S ⎟⎠ 1+ 2⎤ ⎡ E T A ( fψ ) ⎢⎣ o ⎥⎦ 1 A8 Sharpening Noisy Images ( ) If E [ T A N] = 0, then W optimum fψ The weighting (1 + N / S) −1 1 ⎞ ⎛ = ≅ ⎜ 2 N⎟ ⎡ ⎤ E N fψ 1+ ⎟ ⎢⎣ ⎥⎦ ⎜⎝ S⎠ 1+ 2⎤ ⎡ E T A fψ ⎥⎦ ⎣⎢ o ( ) ( ) is widely used ( ) W opt fψ Wopt ( f ψ ) N≠0 for N = 0 : 0 ( ) 1 D/λ fψ 0 fψ W opt fψ ⇒ wider beam (lower spatial resolution), lower sidelobes. Can be used for restoration of blurred images of all types: ( ) photographs TV, TA ψ A maps, SAR images, filtered speech, etc. Lec20.4-24 2/26/01 A9