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山东大学:《生物医学信号处理 Biomedical Signal Processing》精品课程教学资源(PPT课件讲稿)Chapter 08 The Discrete Fourier Transform

◆8.0 Introduction ◆8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆8.2 Properties of the Discrete Fourier Series ◆8.3 The Fourier Transform of Periodic Signal ◆8.4 Sampling the Fourier Transform ◆8.5 Fourier Representation of Finite-Duration Sequence: the Discrete Fourier Transform ◆8.6 Properties of the Discrete Fourier Transform ◆8.7 Linear Convolution using the Discrete Fourier Transform ◆8.8 the discrete cosine transform (DCT)
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apter 8 The discrete Fourier Transform K8:0 Introduction K8.1 Representation of Periodic Sequence: the Discrete fourier series 98.2 Properties of the Discrete Fourier Series 8.3 The Fourier transform of Periodic signal 8.4 Sampling the Fourier Transform 98.5 Fourier Representation of Finite-Duration Sequence: the discrete Fourier Transform < 8.6 Properties of the Discrete Fourier Transform 18.7 Linear Convolution using the Discrete Fourier transform 8.8 the discrete cosine transform(DCT)

2 Chapter 8 The Discrete Fourier Transform ◆8.0 Introduction ◆8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆8.2 Properties of the Discrete Fourier Series ◆8.3 The Fourier Transform of Periodic Signal ◆8.4 Sampling the Fourier Transform ◆8.5 Fourier Representation of Finite-Duration Sequence: the Discrete Fourier Transform ◆8.6 Properties of the Discrete Fourier Transform ◆8.7 Linear Convolution using the Discrete Fourier Transform ◆8.8 the discrete cosine transform (DCT)

Filter Design Techniques 8.0 Introduction

3 Filter Design Techniques 8.0 Introduction

8.0 Introduction Discrete Fourier Transform(DFT)for finite duration sequence DFT is a sequence rather than a function of a continuous variable DFT corresponds to samples, equally spaced in frequency, of the Discrete-time Fourier transform(dTFT) of the signal

4 8.0 Introduction ◆Discrete Fourier Transform (DFT) for finite duration sequence ◆DFT is a sequence rather than a function of a continuous variable ◆DFT corresponds to samples, equally spaced in frequency, of the Discrete-time Fourier transform (DTFT) of the signal

8.0 Introduction Derivation and interpretation of DFT is based on relationship between periodic sequence and finite-length sequences The Fourier series representation of the periodic sequence corresponds to the DFT of the finite-length sequence

5 8.0 Introduction ◆Derivation and interpretation of DFT is based on relationship between periodic sequence and finite-length sequences: ◆The Fourier series representation of the periodic sequence corresponds to the DFT of the finite-length sequence

8.1 Representation of Periodic Sequence the discrete fourier series Given a periodic sequence x[n] with period n so that 义]=Xn+rN The Fourier series representation can be written as 2丌/N|n 刘=∑平[e k Fourier series representation of continuous-time periodic signals require infinitely many complex exponentials Not that for discrete-time periodic signals since 2丌 2丌 2丌 k+mN)n (2zm) k=0.1.2…,N-1

6 ◆Fourier series representation of continuous-time periodic signals require infinitely many complex exponentials ◆Not that for discrete-time periodic signals, since 8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆Given a periodic sequence with period N so that x[n] ~ x[n rN] ~ x[n] ~ = +   1 (2 / ) [ ] k j N kn x n X k N e  =  ( ) ( ) 2 2 2 2 j k n j kn j kn N mN N N j mn e e e e     + = = ◆The Fourier series representation can be written as , 0,1,2, , 1 k N = −

8.1 Representation of Periodic Sequence: the discrete fourier series 2丌 2丌 2丌 k+mN)n 2mn Due to the periodicity of the complex exponential we only need n exponentials for discrete time Fourier series 小]=∑[k]e0xA nk=0

7 8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆Due to the periodicity of the complex exponential we only need N exponentials for discrete time Fourier series   (2 ) 1 0 1 / [ ] N k j N kn x n X k e N  − = =  ◆No need   1 (2 / ) [ ] j N kn k x n X k e N  =  ( ) ( ) 2 2 2 2 j k n j kn j kn N mN N N j mn e e e e     + = =

Discrete fourier series pair the Fourier series representation of a periodic sequence. 刘m=∑X[k]e (2T/N)kn N k=0 To obtain the Fourier series coefficients we multiply both sides by e-/(2 N)rn for0≤n≤N-1 and then sum both the sides we obtain .2丌 (-)n x(ne ∑ ∑X(k)eN n=0 n=0 N 2丌 ∑ 27(k-r)n r(n)en ∑X(k)∑eN n=0 k=0 n=0 8

8 Discrete Fourier Series Pair   ( ) 1 0 1 2 / [ ] N k j N kn x n X k N e  − = =  ◆The Fourier series representation of a periodic sequence: 1 1 1 0 0 0 2 ( ) 2 1 ( ) ( ) N N N n n k j n k N N r j r n x n X k N e e − − −   = = = − −    = 1 1 0 0 1 0 2 ( ) 2 1 ( ) ( ) N N n k N n j r j k r n N n N x n X k N e e − −   = = − = − −  =  ◆To obtain the Fourier series coefficients we multiply both sides by for 0nN-1 and then sum both the sides , we obtain j n (2 / ) N r e − 

Discrete fourier series pair 2兀 n ∑x n) N ∑)1c解k n=0 k=0 n=0 N 2丌 (k-r)n k-r=mN, m an integer ∑ 0. otherwise Problem 8.51 HW (n) X(r) n=0 2丌 (k)=∑(m)eN n=0 对小=∑[ke k=0

9 Discrete Fourier Series Pair 1 0 2 ( ) 1, - , 0, 1 N n j k r n N k r mN m an integer N otherwi es e −  = −  = =    1 0 2 ( ) ( ) N n j N r n x n X e r −  = −  = 1 0 2 ( ) ( ) N n j kn X k x n N e −  = − =   1 0 2 1 [ ] N k j kn N x n X k N e −  = =  Problem 8.51, HW 1 1 0 0 1 0 2 ( ) 2 1 ( ) ( ) N N n k N n j r j k r n N n N x n X k N e e − −   = = − = − −  = 

8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆ a periodic sequence with period N n] =n+rN]for any integer A The Fourier series coefficients of xn is N-1 2n kn X(k) x(neN Analysis equation 对=7∑ kn synthesis k=0 equation

11 8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆a periodic sequence xn with period N, ~ xn= xn+ rN for any integer r ~ ~ ◆The Fourier series coefficients of is xn ~ 1 0 2 ( ) ( ) N n j kn X k x n N e −  = − =   1 0 2 1 [ ] N k j kn N x n X k N e −  = =  Synthesis equation Analysis equation

8.1 Representation of Periodic Sequence: the Discrete Fourier Series [小=∑ (2 兀/Nkn xne n tThe sequence X [k is periodic with period N []=M]]=XN+ [k+N=∑ 2I/Nk+nin n=0 ∑ 1(2xN)。2z xInle n=0

12 8.1 Representation of Periodic Sequence: the Discrete Fourier Series ◆The sequence is X k  periodic with period N        1 ~ 1 ~ , ~ 0 ~ X = X N X = X N +     ( )( ) 1 0 2 N n j N k N n X k N x n e  − = − + + =    ( )   1 0 2 2 N n j N kn j n x n X k e e   − =   − − = =          ( ) 1 0 2 N n j N kn X k x n e  − = − = 

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