""" Discrete Fourier Transforms - basic.py """ import numpy as np import functools from . import pypocketfft as pfft from .helper import (_asfarray, _init_nd_shape_and_axes, _datacopied, _fix_shape, _fix_shape_1d, _normalization, _workers) def c2c(forward, x, n=None, axis=-1, norm=None, overwrite_x=False, workers=None, *, plan=None): """ Return discrete Fourier transform of real or complex sequence. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) overwrite_x = overwrite_x or _datacopied(tmp, x) norm = _normalization(norm, forward) workers = _workers(workers) if n is not None: tmp, copied = _fix_shape_1d(tmp, n, axis) overwrite_x = overwrite_x or copied elif tmp.shape[axis] < 1: raise ValueError("invalid number of data points ({0}) specified" .format(tmp.shape[axis])) out = (tmp if overwrite_x and tmp.dtype.kind == 'c' else None) return pfft.c2c(tmp, (axis,), forward, norm, out, workers) fft = functools.partial(c2c, True) fft.__name__ = 'fft' ifft = functools.partial(c2c, False) ifft.__name__ = 'ifft' def r2c(forward, x, n=None, axis=-1, norm=None, overwrite_x=False, workers=None, *, plan=None): """ Discrete Fourier transform of a real sequence. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) norm = _normalization(norm, forward) workers = _workers(workers) if not np.isrealobj(tmp): raise TypeError("x must be a real sequence") if n is not None: tmp, _ = _fix_shape_1d(tmp, n, axis) elif tmp.shape[axis] < 1: raise ValueError("invalid number of data points ({0}) specified" .format(tmp.shape[axis])) # Note: overwrite_x is not utilised return pfft.r2c(tmp, (axis,), forward, norm, None, workers) rfft = functools.partial(r2c, True) rfft.__name__ = 'rfft' ihfft = functools.partial(r2c, False) ihfft.__name__ = 'ihfft' def c2r(forward, x, n=None, axis=-1, norm=None, overwrite_x=False, workers=None, *, plan=None): """ Return inverse discrete Fourier transform of real sequence x. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) norm = _normalization(norm, forward) workers = _workers(workers) # TODO: Optimize for hermitian and real? if np.isrealobj(tmp): tmp = tmp + 0.j # Last axis utilizes hermitian symmetry if n is None: n = (tmp.shape[axis] - 1) * 2 if n < 1: raise ValueError("Invalid number of data points ({0}) specified" .format(n)) else: tmp, _ = _fix_shape_1d(tmp, (n//2) + 1, axis) # Note: overwrite_x is not utilized return pfft.c2r(tmp, (axis,), n, forward, norm, None, workers) hfft = functools.partial(c2r, True) hfft.__name__ = 'hfft' irfft = functools.partial(c2r, False) irfft.__name__ = 'irfft' def fft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete Fourier transform. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return fftn(x, s, axes, norm, overwrite_x, workers) def ifft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete inverse Fourier transform of real or complex sequence. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return ifftn(x, s, axes, norm, overwrite_x, workers) def rfft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete Fourier transform of a real sequence """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return rfftn(x, s, axes, norm, overwrite_x, workers) def irfft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete inverse Fourier transform of a real sequence """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return irfftn(x, s, axes, norm, overwrite_x, workers) def hfft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete Fourier transform of a Hermitian sequence """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return hfftn(x, s, axes, norm, overwrite_x, workers) def ihfft2(x, s=None, axes=(-2,-1), norm=None, overwrite_x=False, workers=None, *, plan=None): """ 2-D discrete inverse Fourier transform of a Hermitian sequence """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') return ihfftn(x, s, axes, norm, overwrite_x, workers) def c2cn(forward, x, s=None, axes=None, norm=None, overwrite_x=False, workers=None, *, plan=None): """ Return multidimensional discrete Fourier transform. """ if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) shape, axes = _init_nd_shape_and_axes(tmp, s, axes) overwrite_x = overwrite_x or _datacopied(tmp, x) workers = _workers(workers) if len(axes) == 0: return x tmp, copied = _fix_shape(tmp, shape, axes) overwrite_x = overwrite_x or copied norm = _normalization(norm, forward) out = (tmp if overwrite_x and tmp.dtype.kind == 'c' else None) return pfft.c2c(tmp, axes, forward, norm, out, workers) fftn = functools.partial(c2cn, True) fftn.__name__ = 'fftn' ifftn = functools.partial(c2cn, False) ifftn.__name__ = 'ifftn' def r2cn(forward, x, s=None, axes=None, norm=None, overwrite_x=False, workers=None, *, plan=None): """Return multidimensional discrete Fourier transform of real input""" if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) if not np.isrealobj(tmp): raise TypeError("x must be a real sequence") shape, axes = _init_nd_shape_and_axes(tmp, s, axes) tmp, _ = _fix_shape(tmp, shape, axes) norm = _normalization(norm, forward) workers = _workers(workers) if len(axes) == 0: raise ValueError("at least 1 axis must be transformed") # Note: overwrite_x is not utilized return pfft.r2c(tmp, axes, forward, norm, None, workers) rfftn = functools.partial(r2cn, True) rfftn.__name__ = 'rfftn' ihfftn = functools.partial(r2cn, False) ihfftn.__name__ = 'ihfftn' def c2rn(forward, x, s=None, axes=None, norm=None, overwrite_x=False, workers=None, *, plan=None): """Multidimensional inverse discrete fourier transform with real output""" if plan is not None: raise NotImplementedError('Passing a precomputed plan is not yet ' 'supported by scipy.fft functions') tmp = _asfarray(x) # TODO: Optimize for hermitian and real? if np.isrealobj(tmp): tmp = tmp + 0.j noshape = s is None shape, axes = _init_nd_shape_and_axes(tmp, s, axes) if len(axes) == 0: raise ValueError("at least 1 axis must be transformed") if noshape: shape[-1] = (x.shape[axes[-1]] - 1) * 2 norm = _normalization(norm, forward) workers = _workers(workers) # Last axis utilizes hermitian symmetry lastsize = shape[-1] shape[-1] = (shape[-1] // 2) + 1 tmp, _ = _fix_shape(tmp, shape, axes) # Note: overwrite_x is not utilized return pfft.c2r(tmp, axes, lastsize, forward, norm, None, workers) hfftn = functools.partial(c2rn, True) hfftn.__name__ = 'hfftn' irfftn = functools.partial(c2rn, False) irfftn.__name__ = 'irfftn' def r2r_fftpack(forward, x, n=None, axis=-1, norm=None, overwrite_x=False): """FFT of a real sequence, returning fftpack half complex format""" tmp = _asfarray(x) overwrite_x = overwrite_x or _datacopied(tmp, x) norm = _normalization(norm, forward) workers = _workers(None) if tmp.dtype.kind == 'c': raise TypeError('x must be a real sequence') if n is not None: tmp, copied = _fix_shape_1d(tmp, n, axis) overwrite_x = overwrite_x or copied elif tmp.shape[axis] < 1: raise ValueError("invalid number of data points ({0}) specified" .format(tmp.shape[axis])) out = (tmp if overwrite_x else None) return pfft.r2r_fftpack(tmp, (axis,), forward, forward, norm, out, workers) rfft_fftpack = functools.partial(r2r_fftpack, True) rfft_fftpack.__name__ = 'rfft_fftpack' irfft_fftpack = functools.partial(r2r_fftpack, False) irfft_fftpack.__name__ = 'irfft_fftpack'