Grid classes¶
- class prfpy.model.CFGaussianModel(stimulus)[source]¶
A class for constructing gaussian connective field models.
- create_rfs()[source]¶
creates rfs for the grid search
Returns¶
grid_rfs: The receptive field profiles for the grid. vert_centres_flat: A vector that defines the vertex centre associated with each rf profile. sigmas_flat: A vector that defines the CF size associated with each rf profile.
- class prfpy.model.CSS_Iso2DGaussianModel(stimulus, hrf=[1.0, 1.0, 0.0], filter_predictions=False, filter_type='dc', filter_params={}, normalize_RFs=False, **kwargs)[source]¶
- create_grid_predictions(gaussian_params, nn, hrf_1=None, hrf_2=None)[source]¶
create_predictions
creates predictions for a given set of parameters
[description]
Parameters¶
- gaussian_params: ndarray size (3)
containing prf position and size.
- nn: ndarrays
containing the range of grid values for other CSS model parameters (exponent)
- return_prediction(mu_x, mu_y, size, beta, baseline, n, hrf_1=None, hrf_2=None)[source]¶
returns the prediction for a single set of parameters. As this is to be used during iterative search, it also has arguments beta and baseline.
Parameters¶
- mu_xfloat
x-position of pRF
- mu_yfloat
y-position of pRF
- sizefloat
size of pRF
- betafloat, optional
amplitude of pRF (the default is 1)
- baselinefloat, optional
baseline of pRF (the default is 0)
- nfloat, optional
exponent of pRF (the default is 1, which is a linear Gaussian)
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
Returns¶
- numpy.ndarray
single prediction given the model
- class prfpy.model.DoG_Iso2DGaussianModel(stimulus, hrf=[1.0, 1.0, 0.0], filter_predictions=False, filter_type='dc', filter_params={}, normalize_RFs=False, **kwargs)[source]¶
redefining class for difference of Gaussians in iterative fit.
- create_grid_predictions(gaussian_params, sa, ss, hrf_1=None, hrf_2=None)[source]¶
create_predictions
creates predictions for a given set of parameters
[description]
Parameters¶
- gaussian_params: ndarray size (3)
containing prf position and size.
- sa,ss: ndarrays
containing the range of grid values for other DoG model parameters (surroud amplitude, surround size (sigma_2))
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
- return_prediction(mu_x, mu_y, prf_size, prf_amplitude, bold_baseline, srf_amplitude, srf_size, hrf_1=None, hrf_2=None)[source]¶
returns the prediction for a single set of parameters. As this is to be used during iterative search, it also has arguments beta and baseline.
Parameters¶
- mu_xfloat
x-position of pRF
- mu_yfloat
y-position of pRF
- prf_sizefloat
size of pRF
- prf_amplitudefloat
Amplitude (scaling) of pRF
- bold_baselinefloat
BOLD baseline (generally kept fixed)
- srf_amplitudefloat
Surround pRF amplitude
- srf_sizefloat
Surround pRF size
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
Returns¶
- numpy.ndarray
single prediction given the model
- class prfpy.model.Iso2DGaussianModel(stimulus, hrf=[1.0, 1.0, 0.0], filter_predictions=False, filter_type='dc', filter_params={}, normalize_RFs=False, **kwargs)[source]¶
To extend please create a setup_XXX_grid function for any new way of defining grids.
- create_grid_predictions(mu_x, mu_y, size, hrf_1=None, hrf_2=None)[source]¶
create_predictions
creates predictions for a given set of parameters
see return_prediction
Parameters¶
- return_prediction(mu_x, mu_y, size, beta, baseline, hrf_1=None, hrf_2=None)[source]¶
returns the prediction for a single set of parameters. As this is to be used during iterative search, it also has arguments beta and baseline.
Parameters¶
- mu_xfloat
x-position of pRF
- mu_yfloat
y-position of pRF
- sizefloat
size of pRF
- betafloat
amplitude of pRF
- baselinefloat
baseline of pRF
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
Returns¶
- numpy.ndarray
single prediction given the model
- class prfpy.model.Model(stimulus)[source]¶
Class that takes care of generating grids for pRF fitting and simulations
- convolve_timecourse_hrf(tc, hrf)[source]¶
Convolve neural timecourses with single or multiple hrfs.
Parameters¶
- tcndarray, 1D or 2D
The timecourse(s) to be convolved.
- hrfndarray, 1D or 2D
The HRF. Can be single, or a different one for each timecourse.
Returns¶
- convolved_tcndarray
Convolved timecourse.
- create_drifts_and_noise(drift_ranges=[[0, 0]], noise_ar=None, noise_ma=(1, 0.0), noise_amplitude=1.0)[source]¶
add_drifs_and_noise
creates noise and drifts of size equal to the predictions
Parameters¶
- drift_rangeslist of 2-lists of floats, optional
specifies the lower- and upper bounds of the ranges of each of the discrete cosine low-pass components to be generated
- noise_ar2x2 list.
argument passed to timecourse.generate_arima_noise (the default is None, for no noise)
noise_amplitude : float, optional
- class prfpy.model.Norm_Iso2DGaussianModel(stimulus, hrf=[1.0, 1.0, 0.0], filter_predictions=False, filter_type='dc', filter_params={}, normalize_RFs=False, **kwargs)[source]¶
Redefining class for normalization model
- create_grid_predictions(mu_x, mu_y, size, sa, ss, nb, sb, hrf_1=None, hrf_2=None)[source]¶
create_predictions
creates predictions for a given set of parameters
[description]
Parameters¶
- gaussian_params: ndarray size (3)
containing prf position and size.
- sa,ss,nb,sb: ndarrays
containing the range of grid values for other norm model parameters (surroud amplitude (C), surround size (sigma_2), neural baseline (B), surround baseline (D))
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
- return_prediction(mu_x, mu_y, prf_size, prf_amplitude, bold_baseline, srf_amplitude, srf_size, neural_baseline, surround_baseline, hrf_1=None, hrf_2=None)[source]¶
return_prediction [summary]
returns the prediction for a single set of parameters.
Parameters¶
- mu_xfloat
x position
- mu_yfloat
y position
- prf_sizefloat
sigma_1
- prf_amplitudefloat
Norm Param A
- bold_baselinefloat
BOLD baseline (generally kept fixed)
- neural_baselinefloat
Norm Param B
- srf_amplitudefloat
Norm Param C
- srf_sizefloat
sigma_2
- surround_baselinefloat
Norm Param D
- hrf_1, hrf_2floats, optional
if specified, will be used to create HRF.
Returns¶
- numpy.ndarray
prediction(s) given the model