Esempio n. 1
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def centerOfMass(img, yx, window=5):
    """
    find peak by center of mass in a 2D image

    img:    a 2D image array
    yx:     (y,x) in the image
    window: a window where CM calculation is performed on

    return yx
    """
    # prepare small image
    s = N.array([window, window])
    c = s / 2.
    yx = N.round_(yx)
    yx -= c
    yi, xi = N.indices(s)
    yi += yx[0]
    xi += yx[1]
    cc = img[yi, xi]

    # calculate center of mass
    yxi = N.indices(s)
    yxi *= cc
    yxi = yxi.T
    vv = N.sum(yxi, axis=0)
    vv = N.sum(vv, axis=0)
    yxs = vv / float(N.sum(cc))
    yxs += yx
    return yxs
Esempio n. 2
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def gaussianArr2D(
        shape=(256, 256), sigma=[2., 2.], peakVal=None, orig=None, rot=0):
    """
    >1.5x faster implemetation than gaussianArrND
    shape: (y,x)
    sigma: scaler or [sigmay, sigmax]
    orig: (y,x)
    rot:   scaler anti-clockwise

    return N.float32
    """
    shape = N.asarray(shape, N.uint)
    try:
        if len(sigma) == len(shape):
            sy = 2 * (sigma[0] * sigma[0])
            sx = 2 * (sigma[1] * sigma[1])
        elif len(sigma) == 1:
            sx = sy = 2 * (sigma[0] * sigma[0])
        else:
            raise ValueError, 'sigma must be scaler or [sigmay, sigmax]'
    except TypeError:  # sigma scaler
        sx = sy = 2 * (sigma * sigma)

# print y, x
    if rot:
        yyi, xxi = imgFit.rotateIndices2D(shape, rot, orig, N.float32)
    else:
        if orig is None:
            y, x = shape / 2. - 0.5  # pixel center remove
        else:
            y, x = N.subtract(orig, 0.5)  # pixel center remove

        yi, xi = N.indices(shape, dtype=N.float32)
        yyi = y - yi
        xxi = x - xi
    k1 = -(yyi) * (yyi) / (sy) - (xxi) * (xxi) / (sx)

    if peakVal:
        k0 = peakVal
    else:
        k0 = 1. / ((sx + sy) / 2. * ((2 * N.pi)**0.5))
    return k0 * N.exp(k1)
Esempio n. 3
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def radialaverage(data, center=None, useMaxShape=False):
    """
    data: ND array
    center: coordinate of center of radii
    useMinShape: the output uses the maximum shape available

    return 1D array
    """
    if center is None:
        center = N.array(data.shape) // 2
    if len(center) != data.ndim:
        raise ValueError, 'dimension of center (%i) does not match the dimension of data (%i)' % (
            len(center), data.ndim)

    zyx = N.indices((data.shape))
    r = N.zeros(data.shape, N.float32)
    for i, t in enumerate(zyx):
        r += (t - center[i])**2
    r = N.sqrt(r)
    #y, x = N.indices((data.shape))
    #r = N.sqrt((x - center[0])**2 + (y - center[1])**2) # distance from the center
    r = r.astype(N.int)

    if data.dtype.type in (N.complex64, N.complex128):
        rbin = N.bincount(r.ravel(), data.real.ravel())
        ibin = N.bincount(r.ravel(), data.imag.ravel())
        tbin = N.empty(rbin.shape, data.dtype.type)
        tbin.real = rbin
        tbin.imag = ibin

    else:
        tbin = N.bincount(r.ravel(), data.ravel())
    nr = N.bincount(r.ravel())
    radialprofile = tbin / nr.astype(N.float32)

    if not useMaxShape:
        minShape = min(list(N.array(data.shape) - center) + list(center))
        radialprofile = radialprofile[:minShape]
    return radialprofile
Esempio n. 4
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def getSphericalAbbe(arr3D, kmin=2, kmax=60, plot=False):
    """
    compare frequency above and below the focus

    return amplitude var(above)/var(below)
    """
    afz = getFourierZprofile(arr3D)

    # get z profile around the reasonable frequency
    aa = N.abs(N.average(afz[:, kmin:kmax], axis=1))
    # previously it was N.average(N.abs(afz[:,kmin:kmax]), axis=1), but that seems wrong...

    # findMax
    inds = N.indices(aa.shape, dtype=N.float64)
    v, _0, _1, z = U.findMax(aa)
    parm, check = imgFit.fitGaussianND(aa, [z], window=len(aa))
    if check == 5:
        raise RuntimeError, 'Peak not found check=%i' % check

    gg = imgFit.yGaussianND(parm, inds, 3)
    amg = aa - gg

    z0 = parm[2]
    mask = (parm[-1] * 3) / 2.  # sigma * 3 / 2
    ms0 = N.ceil(z0 - mask)
    ms1 = N.ceil(z0 + mask)
    amg[ms0:ms1] = 0

    below = N.var(amg[:ms0])
    above = N.var(amg[ms1:])

    if plot:
        Y.ploty(N.array((aa, gg, amg)))
        print 'below: ', below
        print 'above: ', above
        print ms0, ms1, z0

    return above / (above + below)  #above / below
Esempio n. 5
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def Xcorr(a,
          b,
          highpassSigma=2.5,
          wiener=0.2,
          cutoffFreq=3,
          forceSecondPeak=None,
          acceptOrigin=True,
          maskSigmaFact=1.,
          removeY=None,
          removeX=None,
          ret=None,
          normalize=True,
          gFit=True,
          lap=None,
          win=11):
    """
    returns (y,x), image
    if ret is True, returns [v, yx, image]

    to get yx cordinate of the image,
    yx += N.divide(picture.shape, 2)

    a, b:            2D array
    highpassSigma:   sigma value used for highpass pre-filter
    wiener:          wiener value used for highpass pre-filter
    cutoffFreq:      kill lowest frequency component from 0 to this level
    forceSecondPeak: If input is n>0 (True is 1), pick up n-th peak
    acceptOrigin:    If None, result at origin is rejected, look for the next peak
    maskSigmaFact:   Modifier to remove previous peak to look for another peak
    removeYX:        Rremove given number of pixel high intensity lines of the Xcorr
                     Y: Vertical, X: Horizontal
    normalize:       intensity normalized
    gFit:            peak is fitted to 2D gaussian array, if None use center of mass
    win:             window for gFit

    if b is a + (y,x) then, answer is (-y,-x)
    """
    shapeA = N.asarray(a.shape)
    shapeB = N.asarray(b.shape)
    shapeM = N.max([shapeA, shapeB], axis=0)
    shapeM = N.where(shapeM % 2, shapeM + 1, shapeM)
    center = shapeM / 2.

    arrs = [a, b]
    arrsS = ['a', 'b']
    arrsF = []
    for i, arr in enumerate(arrs):
        if arr.dtype not in [N.float32, N.float64]:
            arr = N.asarray(arr, N.float32)
        # this convolution has to be done beforehand to remove 2 pixels at the edge
        if lap == 'nothing':
            pass
        elif lap:
            arr = arr_Laplace(arr, mask=2)
        else:
            arr = arr_sorbel(arr, mask=1)

        if N.sometrue(shapeA < shapeM):
            arr = paddingMed(arr, shapeM)

        if normalize:
            mi, ma, me, sd = U.mmms(arr)
            arr = (arr - me) / sd

        if i == 1:
            arr = F.shift(arr)
        af = F.rfft(arr)

        af = highPassF(af, highpassSigma, wiener, cutoffFreq)
        arrsF.append(af)

    # start cross correlation
    af, bf = arrsF
    bf = bf.conjugate()
    cf = af * bf

    # go back to space domain
    c = F.irfft(cf)
    #  c = _changeOrigin(cr)

    # removing lines
    if removeX:
        yi, xi = N.indices((removeX, shapeM[-1]))  #sx))
        yi += center[-2] - removeX / 2.  #sy/2 - removeX/2
        c[yi, xi] = 0
    if removeY:
        yi, xi = N.indices((shapeM[-2], removeY))  #sy, removeY))
        xi += center[-1] - removeY / 2.  #sx/2 - removeY/2
        c[yi, xi] = 0

    # find the first peak
    if gFit:
        v, yx, s = findMaxWithGFit(c, win=win)  #, window=win, gFit=gFit)
        if v == 0:
            v, yx, s = findMaxWithGFit(c, win=win +
                                       2)  #, window=win+2, gFit=gFit)
            if v == 0:
                v = U.findMax(c)[0]
        yx = N.add(yx, 0.5)
        #yx += 0.5
    else:
        vzyx = U.findMax(c)
        v = vzyx[0]
        yx = vzyx[-2:]
        s = 2.5

    yx -= center

    if N.alltrue(N.abs(yx) < 1.0) and not acceptOrigin:
        forceSecondPeak = True

    # forceSecondPeak:
    if not forceSecondPeak:
        forceSecondPeak = 0
    for i in range(int(forceSecondPeak)):
        print '%i peak was removed' % (i + 1)  #, sigma: %.2f' % (i+1, s)
        yx += center
        g = gaussianArr2D(c.shape, sigma=s / maskSigmaFact, peakVal=v, orig=yx)
        c = c - g
        #c = mask_gaussian(c, yx[0], yx[1], v, s)
        if gFit:
            v, yx, s = findMaxWithGFit(c, win=win)  #, window=win, gFit=gFit)
            if v == 0:
                v, yx, s = findMaxWithGFit(c, win=win +
                                           2)  #, window=win+2, gFit=gFit)
                if v == 0:
                    v = U.findMax(c)[0]
            yx -= (center - 0.5)
        else:
            vzyx = U.findMax(c)
            v = vzyx[0]

    if not gFit:
        yx = centerOfMass(c, vzyx[-2:]) - center
    if lap is not 'nothing':
        c = paddingValue(c, shapeM + 2)

    if ret == 2:
        return yx, af, bf.conjugate()
    elif ret:
        return v, yx, c
    else:
        return yx, c