• 数字信号处理Day1自制电子音乐


    第一天的课程感觉比較简单,主要介绍Karplus-Strong Algorithm

    给出方程 y[n]=αy[nM]+x[n],                         

    x[n]是输入,M是延迟,α是衰弱系数

    我们要衰减D次,总的採样数就是D*M


    以下是最直接的实现

    关于x = x(:).';的语法是这种,这是一个转置,可是是非共轭转置,假设是x',那么1+i就成了1-i

    function y = ks_loop(x, alpha, D)
    
    % Length of the output signal must be larger than the length of the input signal,
    % that is, D must be larger than 1 
    if D < 1   
        error('Duration D must be greater than 1');
    end    
        
    % Make sure the input is a row-vector
    x = x(:).';
    
    % Number of input samples
    M = length(x);
    
    % Number of output samples
    size_y = D * M;
    
    % Initialize with random input x
    y = zeros(1, size_y);
    y(1:M) = x;
    
    for index = (M+1):size_y
        y(index) = alpha * y(index - M);
    end
    
    y = y(:);
    
    return


    以下来測试一下

    x = randn(100, 1);

    stem(x);


    y = ks_loop(x, 0.9, 10);

    stem(y);


    事实上,你已经完毕了KS算法

    要知道,在matlab和octave这种软件中,矩阵运算比单个运算速度要快非常多,于是就有了优化的版本号


    function y = ks(x, alpha, D)
        
    % Length of the output signal must be larger than the length of the input signal,
    % that is, D must be larger than 1 
    if D < 1   
        error('Duration D must be greater than 1.');
    end  
        
    % Make sure the input is a row-vector 
    x = x(:).';
    
    % Number of input samples
    M = length(x);
    
    % number of output samples
    size_y = D * M;
    
    % Create a vector of the powers of alpha, [alpha^0 alpha^1 ....]
    size_alphaVector = D;
    alphaVector = (alpha*ones(size_alphaVector,1)).^((0:(size_alphaVector-1))');
    
    % Create a matrix with M columns, each being the vector of the powers of alpha
    alphaMatrix = repmat(alphaVector, 1, M);
    
    % Create a matrix with D rows filled by the input signal x   
    xMatrix = repmat(x, D, 1);
    
    % Multipliy the two, and take the transpose so we can read it out
    % column-by-column
    yMatrix = (alphaMatrix .* xMatrix).';
    
    % Read out the output column by columnn
    y = yMatrix(:);
    
    return

    在matlab中,你能够用soundsc(y, FS)来播放音乐

    y是我们的採样数据,FS是频率

    以下这个样例能够播放opening chord of Hard day's night 开头的音乐,太奇妙了

    由于牵扯到音乐的相关知识,一些參数就不大懂,仅仅画出了最后的採样图看看


    clear all
    close all
    clc
    
    % Parameters:
    %
    % - Fs       : sampling frequency
    % - F0       : frequency of the notes forming chord
    % - gain     : gains of individual notes in the chord
    % - duration : duration of the chord in second
    % - alpha    : attenuation in KS algorithm
    
    Fs = 48000;
    
    % D2, D3, F3, G3, F4, A4, C5, G5
    F0 = 440*[2^-(31/12); 2^-(19/12); 2^-(16/12); 2^(-14/12); 2^-(4/12); 1; 2^(3/12); 2^(10/12)];
    gain = [1.2 3.0 1.0 2.2 1.0 1.0 1.0 3.5];
    duration = 4;
    alpha = 0.9785;
    
    % Number of samples in the chord
    nbsample_chord = Fs*duration;
    
    % This is used to correct alpha later, so that all the notes decay together
    % (with the same decay rate)
    first_duration = ceil(nbsample_chord / round(Fs/F0(1)));
    
    % Initialization
    chord = zeros(nbsample_chord, 1);
    
    for i = 1:length(F0)
        
        % Get M and duration parameter
        current_M = round(Fs/F0(i));
        current_duration = ceil(nbsample_chord/current_M);
    
        % Correct current alpha so that all the notes decay together (with the
        % same decay rate)
        current_alpha = alpha^(first_duration/current_duration);
    
        % Let Paul's high D on the bass ring a bit longer
        if i == 2
            current_alpha = current_alpha^.8;
        end
    
        % Generate input and output of KS algorithm
        x = rand(current_M, 1);
        y = ks(x, current_alpha, current_duration);
        y = y(1:nbsample_chord);
            
        % Construct the chord by adding the generated note (with the
        % appropriate gain)
        chord = chord + gain(i) * y;
    end
    
    % Play output
    soundsc(chord, Fs);


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  • 原文地址:https://www.cnblogs.com/mfrbuaa/p/3853179.html
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