Python numpy.poly() 使用实例

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Example 1

def estimate_time_constant(y, p=2, sn=None, lags=5, fudge_factor=1.):
    """
    Estimate AR model parameters through the autocovariance function

    Parameters
    ----------
    y : array, shape (T,)
        One dimensional array containing the fluorescence intensities with
        one entry per time-bin.
    p : positive integer
        order of AR system
    sn : float
        sn standard deviation, estimated if not provided.
    lags : positive integer
        number of additional lags where he autocovariance is computed
    fudge_factor : float (0< fudge_factor <= 1)
        shrinkage factor to reduce bias

    Returns
    -------
    g : estimated coefficients of the AR process
    """

    if sn is None:
        sn = GetSn(y)

    lags += p
    xc = axcov(y, lags)
    xc = xc[:, np.newaxis]

    A = scipy.linalg.toeplitz(xc[lags + np.arange(lags)],
                              xc[lags + np.arange(p)]) - sn**2 * np.eye(lags, p)
    g = np.linalg.lstsq(A, xc[lags + 1:])[0]
    gr = np.roots(np.concatenate([np.array([1]), -g.flatten()]))
    gr = (gr + gr.conjugate()) / 2.
    gr[gr > 1] = 0.95 + np.random.normal(0, 0.01, np.sum(gr > 1))
    gr[gr < 0] = 0.15 + np.random.normal(0, 0.01, np.sum(gr < 0))
    g = np.poly(fudge_factor * gr)
    g = -g[1:]

    return g.flatten() 

Example 2

def test_poly(self):
        assert_array_almost_equal(np.poly([3, -np.sqrt(2), np.sqrt(2)]),
                                  [1, -3, -2, 6])

        # From matlab docs
        A = [[1, 2, 3], [4, 5, 6], [7, 8, 0]]
        assert_array_almost_equal(np.poly(A), [1, -6, -72, -27])

        # Should produce real output for perfect conjugates
        assert_(np.isrealobj(np.poly([+1.082j, +2.613j, -2.613j, -1.082j])))
        assert_(np.isrealobj(np.poly([0+1j, -0+-1j, 1+2j,
                                      1-2j, 1.+3.5j, 1-3.5j])))
        assert_(np.isrealobj(np.poly([1j, -1j, 1+2j, 1-2j, 1+3j, 1-3.j])))
        assert_(np.isrealobj(np.poly([1j, -1j, 1+2j, 1-2j])))
        assert_(np.isrealobj(np.poly([1j, -1j, 2j, -2j])))
        assert_(np.isrealobj(np.poly([1j, -1j])))
        assert_(np.isrealobj(np.poly([1, -1])))

        assert_(np.iscomplexobj(np.poly([1j, -1.0000001j])))

        np.random.seed(42)
        a = np.random.randn(100) + 1j*np.random.randn(100)
        assert_(np.isrealobj(np.poly(np.concatenate((a, np.conjugate(a)))))) 

Example 3

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 4

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 5

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 

Example 6

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 7

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 8

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 9

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 10

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 

Example 11

def estimate_time_constant(fluor, p = 2, sn = None, lags = 5, fudge_factor = 1.):
    """    
    Estimate AR model parameters through the autocovariance function    
    Inputs
    ----------
    fluor        : nparray
        One dimensional array containing the fluorescence intensities with
        one entry per time-bin.
    p            : positive integer
        order of AR system  
    sn           : float
        noise standard deviation, estimated if not provided.
    lags         : positive integer
        number of additional lags where he autocovariance is computed
    fudge_factor : float (0< fudge_factor <= 1)
        shrinkage factor to reduce bias
        
    Return
    -----------
    g       : estimated coefficients of the AR process
    """    
    

    if sn is None:
        sn = GetSn(fluor)
        
    lags += p
    xc = axcov(fluor,lags)        
    xc = xc[:,np.newaxis]
    
    A = scipy.linalg.toeplitz(xc[lags+np.arange(lags)],xc[lags+np.arange(p)]) - sn**2*np.eye(lags,p)
    g = np.linalg.lstsq(A,xc[lags+1:])[0]
    gr = np.roots(np.concatenate([np.array([1]),-g.flatten()]))
    gr = (gr+gr.conjugate())/2.
    gr[gr>1] = 0.95 + np.random.normal(0,0.01,np.sum(gr>1))
    gr[gr<0] = 0.15 + np.random.normal(0,0.01,np.sum(gr<0))
    g = np.poly(fudge_factor*gr)
    g = -g[1:]    
        
    return g.flatten() 

Example 12

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 13

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 14

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 

Example 15

def z_coeff(Poles,Zeros,fs,g,fg,fo = 'none'):
    if fg == np.inf:
        fg = fs/2
    if fo == 'none':
        beta = 1.0
    else:
        beta = f_warp(fo,fs)/fo
    a = np.poly(z_from_f(beta*np.array(Poles),fs))
    b = np.poly(z_from_f(beta*np.array(Zeros),fs))
    gain = 10.**(g/20.)/abs(Fz_at_f(beta*np.array(Poles),beta*np.array(Zeros),fg,fs))
    
    return (a,b*gain) 

Example 16

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 17

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 18

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 

Example 19

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 20

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 21

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 

Example 22

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 23

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 24

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 25

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 26

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 27

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 28

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 29

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 30

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 31

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 32

def lsf_to_lpc(all_lsf):
    if len(all_lsf.shape) < 2:
        all_lsf = all_lsf[None]
    order = all_lsf.shape[1]
    all_lpc = np.zeros((len(all_lsf), order + 1))
    for i in range(len(all_lsf)):
        lsf = all_lsf[i]
        zeros = np.exp(1j * lsf)
        sum_zeros = zeros[::2]
        diff_zeros = zeros[1::2]
        sum_zeros = np.hstack((sum_zeros, np.conj(sum_zeros)))
        diff_zeros = np.hstack((diff_zeros, np.conj(diff_zeros)))
        sum_filt = np.poly(sum_zeros)
        diff_filt = np.poly(diff_zeros)

        if order % 2 != 0:
            deconv_diff = sg.convolve(diff_filt, [1, 0, -1])
            deconv_sum = sum_filt
        else:
            deconv_diff = sg.convolve(diff_filt, [1, -1])
            deconv_sum = sg.convolve(sum_filt, [1, 1])

        lpc = .5 * (deconv_sum + deconv_diff)
        # Last coefficient is 0 and not returned
        all_lpc[i] = lpc[:-1]
    return np.squeeze(all_lpc) 

Example 33

def test_objects(self):
        from decimal import Decimal
        p = np.poly1d([Decimal('4.0'), Decimal('3.0'), Decimal('2.0')])
        p2 = p * Decimal('1.333333333333333')
        assert_(p2[1] == Decimal("3.9999999999999990"))
        p2 = p.deriv()
        assert_(p2[1] == Decimal('8.0'))
        p2 = p.integ()
        assert_(p2[3] == Decimal("1.333333333333333333333333333"))
        assert_(p2[2] == Decimal('1.5'))
        assert_(np.issubdtype(p2.coeffs.dtype, np.object_))
        p = np.poly([Decimal(1), Decimal(2)])
        assert_equal(np.poly([Decimal(1), Decimal(2)]),
                     [1, Decimal(-3), Decimal(2)]) 

Example 34

def test_zero_dims(self):
        try:
            np.poly(np.zeros((0, 0)))
        except ValueError:
            pass 

Example 35

def test_poly_int_overflow(self):
        """
        Regression test for gh-5096.
        """
        v = np.arange(1, 21)
        assert_almost_equal(np.poly(v), np.poly(np.diag(v))) 
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