Difference between 'conv' & ifft(fft) when doing convolution?
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Hi, I'm trying to obtain convolution of two vectors using 'conv' and 'fft' function in matlab. For example:
%%Example 1;
x = [1 2 3 4 0 0]; y = [-3 5 -4 0 0 0];
con_xy1 = conv(x,y);
con_xy2 = ifft(fft(x).*fft(y));
Results: >> con_xy1
con_xy1 =
-3 -1 -3 -5 8 -16 0 0 0 0 0
>> con_xy2
con_xy2 =
-3.0000 -1.0000 -3.0000 -5.0000 8.0000 -16.0000
Obviously, the first six values in con_xy1 is identical to con_xy2. However, when I use another two vectors, the results are totally different:
%%Example 2
x = [5 6 8 2 5]; y = [6 -1 3 5 1];
con_xy1 = conv(x,y);
con_xy2 = ifft(fft(x).*fft(y));
Results: >> con_xy1
con_xy1 =
30 31 57 47 87 47 33 27 5
>> con_xy2
con_xy2 =
77 64 84 52 87
*My first question is: comparing example 1 and 2, why 'conv' and 'ifft(fft)' yields identical results in example 1 but not example 2?Is it because vectors in example 1 contain zeros at the end?Theoretically they should be identical, no matter what 'x' and 'y' are, am I right? *
Then, I try to apply 'fft(x,n)' instead of 'fft(x)' (I assigned 'n' in fft). It becomes:
%%Example 3:
x = [5 6 8 2 5]; y = [6 -1 3 5 1];
con_xy1 = conv(x,y);
con_xy2 = ifft(fft(x,16).*fft(y,16));
Results: >> con_xy1
con_xy1 =
30 31 57 47 87 47 33 27 5
>> con_xy2
con_xy2 =
Columns 1 through 11
30.0000 31.0000 57.0000 47.0000 87.0000 47.0000 33.0000 27.0000 5.0000 0.0000 0
Columns 12 through 16
0 0 0 -0.0000 0
In this case, the non-zero values in con_xy2 are identical to con_xy1.
*My second question is: according to example 2 and 3, should we always assign a large enough number to 'n' to make 'fft' accurate? *
My last question: how do we understand convolution in matlab? For example: now we have two functions: x(t) and y(t), and t = 1:1:10, we want to get z(t) = x(t)*y(t).
Obviously, length of z(t) should be the same as t, x(t) and y(t), i.e. 10. But if we use 'conv' function, we will get a result of length 2*10-1 = 19; if we use 'ifft(fft)', we will get a result of length 10 - the same length as x and y; if we use 'ifft(fft(x,n))', the result will be length n - the number we assigned.
I'm totally confused: how can I obtain real 'z(t)'?? Should I just use the first half or the second half of con(x,y) to present z(t)?
Please help. Thanks in advance!!
Best Regards, Q.L
1 comentario
Eran
el 18 de Abr. de 2016
fft is cyclic therefore padding is needed
Respuesta aceptada
Más respuestas (4)
Wayne King
el 13 de Mayo de 2012
3 votos
Hi, No, the result should not obviously be the same length. The result should be the length of x plus the length of y -1: length(x)+length(y)-1. In your case you get 19 and that is absolutely correct for linear convolution.
4 comentarios
Q L
el 13 de Mayo de 2012
Wayne King
el 13 de Mayo de 2012
This forum does not lend itself to presenting you the proof, but I promise you, it is easy to show. Just assume you have two sequences, one of length L and another of length M, if you work out the summation, you will see that the resulting linear convolution has length L+M-1.
Q L
el 14 de Mayo de 2012
Wayne King
el 14 de Mayo de 2012
I gave you the answer. Go back up and look at my post just below your original question. It has now moved up because it got two votes. Please read it, it is THE answer.
Wayne King
el 13 de Mayo de 2012
Here is a demonstration, not a proof, which is not hard. But assume you have two length 3 vectors, if you reverse one with respect to the other and shift, you will see that you will get 5 (3+3-1) products in the convolution. That is where the 5 terms come from (leaving out the summation)
x = [1 2 3];
y = [4 5 6];
Illustration of the 5 element-by-element products (summing produces the convolution)
1 2 3
6 5 4 %first element is 4
1 2 3
6 5 4 %2nd element is 5+8
1 2 3
6 5 4 %3rd element is 6+10+12
1 2 3
6 5 4 %4th element is 12+15
1 2 3
6 5 4 %5th element is 18
Guo
el 13 de Mayo de 2012
1 voto
Hi,I feel your question is very special.And I think you may mistake the 't',which may be different in signal processing and math function.Here 't' is just a subscript or signal order which has no negative value and is not a independent variable,so it's different from one within a mathematical function.Even though for a math problem,the domain of definition can be different before and after the computation.
4 comentarios
Q L
el 14 de Mayo de 2012
Wayne King
el 14 de Mayo de 2012
Even for square-integrable functions of a continuous variable, the convolution of those functions does NOT usually have the same support as the two individual functions. If you convolve two rectangles with support [0,1], In other words, f(t) = 1 0<=t<=1, the resulting convolution does not have support on [0,1]
Q L
el 18 de Mayo de 2012
ww
el 17 de Jun. de 2013
Hi QL,
I have the same problem with you.
In signal processing, the time range t is fixed, but after convolution, the length is bigger than time range.
how did you solve this problem?
Thanks
MD RASEL MIAH
el 18 de Jun. de 2022
0 votos

1 comentario
MD RASEL MIAH
el 19 de Jun. de 2022
x = [1 2 3 4 0 0]; y = [-3 5 -4 0 0 0];
con_xy1 = conv(x,y);
con_xy2 = ifft(fft(x).*fft(y)); we can use this 1 st queastion answer
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