Ejemplo n.º 1
0
 def costfun(param0):
     return evaluateCross(param0,
                          imx,
                          fig=None,
                          istepmodel=istepmodel,
                          usemask=False,
                          istep=istep,
                          use_abs=use_abs)[0]
Ejemplo n.º 2
0
def fitModel(param0,
             imx,
             verbose=1,
             cfig=None,
             ksizemv=41,
             istep=None,
             istepmodel=.5,
             cb=None,
             use_abs=False,
             w=2.5):
    """ Fit model of an anti-crossing 
    
    This is a wrapper around evaluateCross and the scipy optimization routines.
    
    Args:
        param0 (array): parameters for the anti-crossing model
        imx (array): input image
        
    
    """

    samplesize = [int(ksizemv / istepmodel), int(ksizemv / istepmodel)]

    costfun = lambda param0: evaluateCross(param0,
                                           imx,
                                           fig=None,
                                           istepmodel=istepmodel,
                                           usemask=False,
                                           istep=istep,
                                           use_abs=use_abs)[0]

    vv = []

    def fmCallback(plocal, pglobal):
        """ Helper function to store intermediate results """
        vv.append((plocal, pglobal))

    if cfig is not None:
        cb = lambda x: fmCallback(x, None)
        #cb= lambda param0: evaluateCross(param0, imx, ksize, fig=cfig)[0]
        #cb = lambda param0: print('fitModel: cost %.3f' % evaluateCross(param0, imx, ksize, fig=None)[0] )

    if 1:
        # simple brute force
        ranges = list([slice(x, x + .1, 1) for x in param0])
        for ii in range(2):
            ranges[ii] = slice(param0[ii] - 13, param0[ii] + 13, 1)
        ranges = tuple(ranges)
        res = scipy.optimize.brute(costfun, ranges)
        paramy = res
    else:
        paramy = param0
    res = scipy.optimize.minimize(costfun,
                                  paramy,
                                  method='nelder-mead',
                                  options={
                                      'maxiter': 1200,
                                      'maxfev': 101400,
                                      'xatol': 1e-8,
                                      'disp': verbose >= 2
                                  },
                                  callback=cb)
    #res = scipy.optimize.minimize(costfun, res.x, method='Powell',  options={'maxiter': 3000, 'maxfev': 101400, 'xtol': 1e-8, 'disp': verbose>=2}, callback=cb)

    if verbose:
        print('fitModel: score %.2f -> %.2f' % (costfun(param0), res.fun))
    return res
Ejemplo n.º 3
0
def fit_anticrossing(dataset,
                     width_guess=None,
                     angles_guess=None,
                     psi=None,
                     w=2.5,
                     diff_dir='dx',
                     plot=False,
                     verbose=1,
                     param={}):
    """ Fits an anti-crossing model to a 2D scan.

    The model fitted is without tunnel coupling.

    Args:
        dataset (qcodes dataset): the 2D scan measurement dataset
        width_guess (None or float): Initial estimate for width of anti-crossing in the same unit as the dataset axis.
        angles_guess (None or float): Initial estimate for angles of anti-crossing in radians
        psi (None or float): angle for cross section of anti-crossing
        w (float): Width of lines in anti-crossing model
        diff_dir (str): differentiation direction
        plot (int): If non-zero, then plot into specified matplotlib window
        verbose (int): verbosity level
        param (dict): additional parameters

    Returns:
        anticross_fit: (dict) the parameters describing the fitted anti-cross
                       optionally the cost for fitting and the figure number

    The main fields in the result structure are:

        * centre (2x1 array): position of the fitted anti-crossing
        * fit_params (array): fitting parameters of the model. See :func:`fitModel`
        * fitpoints (dict): a dictionary with fitted points. centre is the centre point; left_point and right_point are the corners
                    of the anti-crossing. the four lines outwards are define by inner_points and outer_points

    """
    abs_val = True

    set_arrays = dataset.default_parameter_array().set_arrays
    labels = [x.name for x in set_arrays]

    im, tr = qtt.data.dataset2image(dataset)
    imextent = tr.scan_image_extent()

    # get parameters of the algorithm
    istep = param.get('istep', 0.25)  # resolution to convert the data into
    istepmodel = param.get('istepmodel',
                           0.5)  # resolution in which to perform model fitting
    ksizemv = param.get('ksizemv', 31)  # kernel size in mV

    diffvals = {'dx': 0, 'dy': 1, 'dxy': 2, 'xmy': 'xmy', 'g': 'g'}
    imc = cleanSensingImage(im, sigma=0.93, dy=diffvals[diff_dir])
    imx, (fw, fh, mvx, mvy,
          Hstraight) = qtt.algorithms.images.straightenImage(imc,
                                                             imextent,
                                                             mvx=istep,
                                                             verbose=verbose)

    imx = imx.astype(np.float64) * \
        (100. / np.percentile(imx, 99))  # scale image

    # initialization of anti-crossing model
    param0 = [(imx.shape[0] / 2 + .5) * istep, (imx.shape[0] / 2 + .5) * istep,
              3.5, 1.17809725, 3.5, 4.3196899, 0.39269908]
    if width_guess is not None:
        param0[2] = width_guess

    if angles_guess is not None:
        param0[3:] = angles_guess

    if psi is not None:
        param0e = np.hstack((param0, [psi]))
    else:
        psi = np.pi / 4
        param0e = copy.copy(param0)

    # fit anti-crossing (twice)
    res = fitModel(param0e,
                   imx,
                   verbose=verbose,
                   cfig=10,
                   istep=istep,
                   istepmodel=istepmodel,
                   ksizemv=ksizemv,
                   use_abs=abs_val,
                   model_line_width=w)
    fitparam = res.x
    res = fitModel(fitparam,
                   imx,
                   verbose=verbose,
                   cfig=10,
                   istep=istep,
                   istepmodel=istepmodel,
                   ksizemv=ksizemv,
                   use_abs=abs_val,
                   model_line_width=w)
    fitparam = res.x

    cost, patch, cdata, _ = evaluateCross(fitparam,
                                          imx,
                                          verbose=0,
                                          fig=None,
                                          istep=istep,
                                          istepmodel=istepmodel)
    ccpixel_straight = cdata[0]
    ccpixel = qtt.pgeometry.projectiveTransformation(
        np.linalg.inv(Hstraight), (istepmodel / istep) * ccpixel_straight)

    if verbose:
        print('fit_anticrossing: patch size %s' % (patch.shape, ))

    def convert_coordinates(xpix):
        ccpixel = qtt.pgeometry.projectiveTransformation(
            np.linalg.inv(Hstraight), (istepmodel / istep) * xpix)
        return tr.pixel2scan(ccpixel)

    (cc, lp, hp, ip, op, _, _, _) = cdata

    centre = convert_coordinates(np.array(cc))
    lp = convert_coordinates(np.array(lp))
    hp = convert_coordinates(np.array(hp))
    ip = convert_coordinates(np.array(ip).T)
    op = convert_coordinates(np.array(op).T)

    anticross_fit = {'labels': labels}
    anticross_fit['centre'] = tr.pixel2scan(ccpixel)
    anticross_fit['fitpoints'] = {
        'centre': centre,
        'left_point': lp,
        'right_point': hp,
        'inner_points': ip,
        'outer_points': op
    }

    if len(param) == 7:
        param = np.append(fitparam, psi)
    anticross_fit['fit_params'] = fitparam
    anticross_fit['params'] = param

    if plot:
        if isinstance(plot, int):
            fig = plot
        else:
            fig = None
        fig_anticross = plt.figure(fig)
        cost, patch, cdata, _ = evaluateCross(fitparam,
                                              imx,
                                              verbose=verbose,
                                              fig=fig_anticross.number,
                                              istep=istep,
                                              istepmodel=istepmodel,
                                              w=w)
        anticross_fit['cost'] = cost
        anticross_fit['patch'] = patch
        anticross_fit['cdata'] = cdata
        anticross_fit['fig_num'] = fig_anticross.number
        anticross_fit['imx'] = imx

    return anticross_fit