# pythonによるFFTの実装

pythonでFFT（高速フーリエ変換）を実装しようと思っています
コードはご覧の通りです

(FFT_sort.py)

``````import numpy as np

def sort(N):

flag = ~(N & (N - 1))
if flag != -1:
return None

result = np.zeros(N, dtype=np.int64)

result[0] = 0
result[1] = N / 2

result[N / 2] = 1
result[N / 2 + 1] = N / 2 + 1

T = n  = N / 2
oldN = n
oldCat = 0
cat = 1

count = 1
judge = 0
next = 2

linspace = np.array([i for i in range(N)])

while(n != 2):

n /= 2
cat *= 2

judge += cat

normal = 2 ** (count + 1))
for i in range(cat / 2):

j = 1 + i * 2
index = j * N / normal

result[index] = next
result[index + 1] = next + T

result[index + T] = next + 1
result[index + T + 1] = next + T + 1

next += 2

count += 1
oldN = n

return result
``````

(FFT.py)

``````import FFT_sort as fs
import numpy as np
from numpy import pi

import matplotlib.pyplot as plt

N = input()

x = np.linspace(0, 2 * np.pi, N)
y = np.sin(x)

data = fs.sort(N)

if data is None:
print("error")
quit()
else:
print(data)

result = np.zeros(N, dtype=np.complex)
result[:] = y[:]

num = 1

while(num != N):

count = 0

T = num
F = N / (num * 2)

print("F:", F)

for i in range(N):

judge = i / num

if judge % 2 == 0:
k = i + T

else:
k = i - T

iF = i * F % N

w = np.exp(float(i) * iF * -1j * 2 * pi / float(N))

print("iF:", iF)
print("w:", w)

n = data[k]

result[i] += w * result[n]

count += 1
num *= 2

print(result)
``````

コードの入力はFFTのサンプリングの数で
アウトプットは

ここで質問ですが

``````[ 6.23785596 -4.42077404j  5.0713722  -3.1314097 j
-3.8474327  -1.99237623j  2.05949337 -0.61485772j
5.84009223 -4.84151225j -2.02845113 -0.82589246j
-1.36232081 -8.6730753 j  1.26764366 -7.27397125j
-0.01871131 -4.59613684j  1.0188491  -4.96565877j
3.58757676-10.1782615 j  2.92161011 -6.39504849j
-2.59079252 -3.55000541j  2.78417111-13.26650134j
-6.0297906  -1.17150871j -4.92477154 -4.98328949j]
[-2.49800181e-16+0.        j  1.49800460e+00-7.53097769j
-2.88537029e-01+0.69659001j -2.36488255e-01+0.35392969j
-2.22614343e-01+0.22261434j -2.16932373e-01+0.14494958j
-2.14217111e-01+0.08873163j -2.12937210e-01+0.04235584j
-2.12556562e-01+0.        j -2.12937210e-01-0.04235584j
-2.14217111e-01-0.08873163j -2.16932373e-01-0.14494958j
-2.22614343e-01-0.22261434j -2.36488255e-01-0.35392969j
-2.88537029e-01-0.69659001j  1.49800460e+00+7.53097769j]
``````

このような結果になるのは何故でしょうか
コードのどの部分に問題があるのでしょうか？

ご覧の通り、結果は全然違います

バタフライ演算の方向もあっていますし
wの値のとり方に問題がありそうですが

## 1 件の回答

すみません

バタフライ演算の肝をしらなかったからですね

（FFT_sort.pyの所は同じなので省略 FFT.pyだけの修正）

``````import FFT_sort as fs
import numpy as np
from numpy import pi

import matplotlib.pyplot as plt

N = input()

x = np.linspace(0, 2 * np.pi, N)
y = np.sin(x)

#y = np.ones(N)

data = fs.sort(N)

if data is None:
print("error")
quit()
else:
print(data)

result = np.zeros(N, dtype=np.complex)
temp = np.zeros(N, dtype=np.complex)
result[:] = y[data]

num = 1

print(y)
print(result)

while(num != N):

count = 0

T = num
F = N / (num * 2)

print("********************************************")

print("F:", F)

temp[:] = result[:]
print("result:", result)
print("temp:", temp)

for i in range(N):

judge = i / num

f = iF = i * F % N

if iF - N / 2 >= 0:
iF -= N / 2
flag = -1.0
else:
flag = 1.0

w = flag * np.exp(float(iF) * -1j * 2.0 * pi / float(N))

if judge % 2 == 0:
k = i + T
#n = data[k]
result[i] += w * temp[k]
else:
k = i - T
#n = data[k]
result[i] *= w
result[i] += temp[k]

print(judge % 2 == 0)

print("i:", i)
print("f:", f)
print("iF:", iF)
print("flag:", flag)
print("k:", k)
#print("n:", n)
print("w:", w)

#result[i] += w * temp[n]

#print("temp[n]:", temp[n])
print("former result[i]:", temp[i])
print("result[i]:", result[i])

count += 1
num *= 2

print(result)