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Published byCecil Berry Modified over 9 years ago
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1 Discrete Hilbert Transform 7 th April 2007 Digital Signal Processing I Islamic University of Gaza
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2 Overview Hilbert Transforms Discrete Hilbert Transforms DHT in Periodic/Finite Length sequences DHT in Band pass Sampling
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3 Transforms Laplace Transforms Time domain s-plane Fourier Transforms (FT/DTFT/DFT) Time domain frequency domain Z- Transforms Time domain Z domain ( delay domain ) Hilbert Transforms For Causal sequences relates the Real Part of FT to the Imaginary Part FT
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4 Why Hilbert Transforms ? Fourier Transforms require complete knowledge of both Real and Imaginary parts of the magnitude and phase for all frequencies in the range – π < ω < π Hilbert Transforms applied to causal signals takes advantage of the fact that Real sequences have Symmetric Fourier transforms.
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5 Because of the possible singularity at x=t, the integral is considered as a Cauchy Principal value Analog Hilbert Transforms The Hilbert Transform of the function g(t) is defined as The forms of the Hilbert Transform are So the Hilbert transform is a Convolution
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6 A note on Symmetry For real signals we have the following Fourier transforms relationships Any complex signal can be decomposed into parts having Conjugate Symmetry ( even for real signals) Conjugate Anti-Symmetry (odd for real signals) (1) (2) (3) (4) (5) (6)
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7 A note on Symmetry … x[n] x e [n] x o [n] x[-n] n
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8 Problem1 1) Find Xi(w)
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9 Problem2 2) Find X(z)
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10 Derivation of Hilbert Transform Relationships
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11 The Hilbert Transform Relationships The above equations are called discrete Hilbert Transform Relationships hold for real and imaginary parts of the Fourier transform of a causal stable real sequence. Where P is Cauchy principle value
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12 Note: A periodic sequence cannot be casual in the sense used before, but we will define a “ periodically causal ” sequence Henceforth we assume N is even Definitions: Periodic Sequences
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13 Periodic Sequences …
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14 x ~ [n] x ~ [-n] n x ~ o [n] x ~ e [n] Periodic Sequences …
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15 1.Compute x ~ e [n] from X ~ R [k] using DFS synthesis equation 2.Compute x ~ [n] from x ~ e [n] 3.Compute X ~ [k] from x ~ [n] using DFS analysis equation Periodic Sequences …
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16 Finite Length Sequences It is possible to apply the transformations derived if we can visualize a finite length sequence as one period of a periodic sequence. For all time domain equations replace x ~ (n) with x(n) For freq domain equations ---
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17 Problem 3 N=4, X R [k]=[ 2 3 4 3 ], Find X I [k] Method 1 V 4 [k]=[ … 0 -2j 0 2j … ] jX I [k]=[ 0 j 0 – j ] Method 2 x e [n]=[ 3 -1/2 0 -1/2 ] x o [n]=[ 0 -1/2 0 -1/2 ] jX I [k]=[ 0 j 0 – j ]
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18 Relationships between Magnitude and Phase We obtain a relationship between Magnitude and phase by imposing causality on a sequence x^(n) derived from x(n) The fact that the minimum phase condition ( X(z) has all poles and zeros inside the unit circle) guarantees causality of the complex cepstrum.
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19 Complex Sequences Useful in useful in representation of bandpass signals Fourier transform is zero in 2 nd half of each period. Z-Transform is zero on the bottom half The signal called an analytic signal (as in continuous time signal theory)
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20 Complex Sequences … Note: Such a system is also called a 90º phase shifter. -x r [n] can also be obtained form a x i [n] using a 90º phase shifter
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21 Complex Sequences … Hilbert Transformer X r [n] X i [n]
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22 Representation of Bandpass Signals
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23 Representation of Bandpass Signals … s r [n] sin(w c n) x r [n] s i [n] Hilbert Transformer X + X cos(w c n) Hilbert Transformer + +- Hilbert Transformer X X + sin(w c n) cos(w c n) x r [n] +
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24 Bandpass Sampling C/D Hilbert Transformer ↓M T S r [n]=S c [nT] S id [n] S rd [n] S i [n] Sc(t)
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25 Bandpass Sampling … Reconstruction of the real bandpass signal involves 1.Expand the complex signal by a factor M 2.Filter the signal using an ideal bandpass filter 3.Obtain S r [n]=Re{s e [n]*h[n]}
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26 Concluding Remarks Relations between Real and Imaginary part of Fourier transforms for causal signal were investigated Hilbert transform relations for periodic sequences that satisfy a modified causality constraint When minimum phase condition is satisfied logarithm of magnitude and the phase of the Fourier transform are a Hilbert transform pair Application of complex analytic signals to the efficient sampling of bandpass signals were discussed
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27 References Discrete Time Signal Processing, 2 nd Edition. © 1999 Chapter 11 pages 755-800, Alan V Oppenheim, Ronald W Schafer with John R Buck
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