• java实现FFT变换(转)


    源:java实现FFT变换

    /*************************************************************************
     *  Compilation:  javac FFT.java
     *  Execution:    java FFT N
     *  Dependencies: Complex.java
     *
     *  Compute the FFT and inverse FFT of a length N complex sequence.
     *  Bare bones implementation that runs in O(N log N) time. Our goal
     *  is to optimize the clarity of the code, rather than performance.
     *
     *  Limitations
     *  -----------
     *   -  assumes N is a power of 2
     *
     *   -  not the most memory efficient algorithm (because it uses
     *      an object type for representing complex numbers and because
     *      it re-allocates memory for the subarray, instead of doing
     *      in-place or reusing a single temporary array)
     *  
     *************************************************************************/
    
    public class FFT {
    
        // compute the FFT of x[], assuming its length is a power of 2
        public static Complex[] fft(Complex[] x) {
            int N = x.length;
    
            // base case
            if (N == 1) return new Complex[] { x[0] };
    
            // radix 2 Cooley-Tukey FFT
            if (N % 2 != 0) { throw new RuntimeException("N is not a power of 2"); }
    
            // fft of even terms
            Complex[] even = new Complex[N/2];
            for (int k = 0; k < N/2; k++) {
                even[k] = x[2*k];
            }
            Complex[] q = fft(even);
    
            // fft of odd terms
            Complex[] odd  = even;  // reuse the array
            for (int k = 0; k < N/2; k++) {
                odd[k] = x[2*k + 1];
            }
            Complex[] r = fft(odd);
    
            // combine
            Complex[] y = new Complex[N];
            for (int k = 0; k < N/2; k++) {
                double kth = -2 * k * Math.PI / N;
                Complex wk = new Complex(Math.cos(kth), Math.sin(kth));
                y[k]       = q[k].plus(wk.times(r[k]));
                y[k + N/2] = q[k].minus(wk.times(r[k]));
            }
            return y;
        }
    
    
        // compute the inverse FFT of x[], assuming its length is a power of 2
        public static Complex[] ifft(Complex[] x) {
            int N = x.length;
            Complex[] y = new Complex[N];
    
            // take conjugate
            for (int i = 0; i < N; i++) {
                y[i] = x[i].conjugate();
            }
    
            // compute forward FFT
            y = fft(y);
    
            // take conjugate again
            for (int i = 0; i < N; i++) {
                y[i] = y[i].conjugate();
            }
    
            // divide by N
            for (int i = 0; i < N; i++) {
                y[i] = y[i].times(1.0 / N);
            }
    
            return y;
    
        }
    
        // compute the circular convolution of x and y
        public static Complex[] cconvolve(Complex[] x, Complex[] y) {
    
            // should probably pad x and y with 0s so that they have same length
            // and are powers of 2
            if (x.length != y.length) { throw new RuntimeException("Dimensions don't agree"); }
    
            int N = x.length;
    
            // compute FFT of each sequence
            Complex[] a = fft(x);
            Complex[] b = fft(y);
    
            // point-wise multiply
            Complex[] c = new Complex[N];
            for (int i = 0; i < N; i++) {
                c[i] = a[i].times(b[i]);
            }
    
            // compute inverse FFT
            return ifft(c);
        }
    
    
        // compute the linear convolution of x and y
        public static Complex[] convolve(Complex[] x, Complex[] y) {
            Complex ZERO = new Complex(0, 0);
    
            Complex[] a = new Complex[2*x.length];
            for (int i = 0;        i <   x.length; i++) a[i] = x[i];
            for (int i = x.length; i < 2*x.length; i++) a[i] = ZERO;
    
            Complex[] b = new Complex[2*y.length];
            for (int i = 0;        i <   y.length; i++) b[i] = y[i];
            for (int i = y.length; i < 2*y.length; i++) b[i] = ZERO;
    
            return cconvolve(a, b);
        }
    
        // display an array of Complex numbers to standard output
        public static void show(Complex[] x, String title) {
            System.out.println(title);
            System.out.println("-------------------");
            for (int i = 0; i < x.length; i++) {
                System.out.println(x[i]);
            }
            System.out.println();
        }
    
    
       /*********************************************************************
        *  Test client and sample execution
        *
        *  % java FFT 4
        *  x
        *  -------------------
        *  -0.03480425839330703
        *  0.07910192950176387
        *  0.7233322451735928
        *  0.1659819820667019
        *
        *  y = fft(x)
        *  -------------------
        *  0.9336118983487516
        *  -0.7581365035668999 + 0.08688005256493803i
        *  0.44344407521182005
        *  -0.7581365035668999 - 0.08688005256493803i
        *
        *  z = ifft(y)
        *  -------------------
        *  -0.03480425839330703
        *  0.07910192950176387 + 2.6599344570851287E-18i
        *  0.7233322451735928
        *  0.1659819820667019 - 2.6599344570851287E-18i
        *
        *  c = cconvolve(x, x)
        *  -------------------
        *  0.5506798633981853
        *  0.23461407150576394 - 4.033186818023279E-18i
        *  -0.016542951108772352
        *  0.10288019294318276 + 4.033186818023279E-18i
        *
        *  d = convolve(x, x)
        *  -------------------
        *  0.001211336402308083 - 3.122502256758253E-17i
        *  -0.005506167987577068 - 5.058885073636224E-17i
        *  -0.044092969479563274 + 2.1934338938072244E-18i
        *  0.10288019294318276 - 3.6147323062478115E-17i
        *  0.5494685269958772 + 3.122502256758253E-17i
        *  0.240120239493341 + 4.655566391833896E-17i
        *  0.02755001837079092 - 2.1934338938072244E-18i
        *  4.01805098805014E-17i
        *
        *********************************************************************/
    
        public static void main(String[] args) { 
            int N = Integer.parseInt(args[0]);
            Complex[] x = new Complex[N];
    
            // original data
            for (int i = 0; i < N; i++) {
                x[i] = new Complex(i, 0);
                x[i] = new Complex(-2*Math.random() + 1, 0);
            }
            show(x, "x");
    
            // FFT of original data
            Complex[] y = fft(x);
            show(y, "y = fft(x)");
    
            // take inverse FFT
            Complex[] z = ifft(y);
            show(z, "z = ifft(y)");
    
            // circular convolution of x with itself
            Complex[] c = cconvolve(x, x);
            show(c, "c = cconvolve(x, x)");
    
            // linear convolution of x with itself
            Complex[] d = convolve(x, x);
            show(d, "d = convolve(x, x)");
        }
    
    }
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  • 原文地址:https://www.cnblogs.com/LittleTiger/p/4604297.html
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