xdem.coreg.DirectionalBias#
- class xdem.coreg.DirectionalBias(angle=0, fit_or_bin='bin_and_fit', fit_func='nfreq_sumsin', fit_optimizer=<function curve_fit>, bin_sizes=100, bin_statistic=<function nanmedian>, bin_apply_method='linear', subsample=1.0)[source]#
Bias correction for directional biases, for example along- or across-track of satellite angle.
The binning and/or fitting correction parameters are stored in the self.meta[“outputs”][“fitorbin”].
- __init__(angle=0, fit_or_bin='bin_and_fit', fit_func='nfreq_sumsin', fit_optimizer=<function curve_fit>, bin_sizes=100, bin_statistic=<function nanmedian>, bin_apply_method='linear', subsample=1.0)[source]#
Instantiate a directional bias correction.
- Parameters:
angle (
float
) – Angle in which to perform the directional correction (degrees) with 0° corresponding to X axis direction and increasing clockwise.fit_or_bin (
Union
[Literal
['bin_and_fit'
],Literal
['fit'
],Literal
['bin'
]]) – Whether to fit or bin, or both. Use “fit” to correct by optimizing a function or “bin” to correct with a statistic of central tendency in defined bins, or “bin_and_fit” to perform a fit on the binned statistics.fit_func (
Union
[Callable
[...
,ndarray
[Any
,dtype
[floating
[Any
]]]],Literal
['norder_polynomial'
],Literal
['nfreq_sumsin'
]]) – Function to fit to the bias with variables later passed in .fit().fit_optimizer (
Callable
[...
,tuple
[ndarray
[Any
,dtype
[floating
[Any
]]],Any
]]) – Optimizer to minimize the function.bin_sizes (
int
|dict
[str
,Union
[int
,Iterable
[float
]]]) – Size (if integer) or edges (if iterable) for binning variables later passed in .fit().bin_statistic (
Callable
[[ndarray
[Any
,dtype
[floating
[Any
]]]],floating
[Any
]]) – Statistic of central tendency (e.g., mean) to apply during the binning.bin_apply_method (
Union
[Literal
['linear'
],Literal
['per_bin'
]]) – Method to correct with the binned statistics, either “linear” to interpolate linearly between bins, or “per_bin” to apply the statistic for each bin.subsample (
float
|int
) – Subsample the input for speed-up. <1 is parsed as a fraction. >1 is a pixel count.
Methods
__init__
([angle, fit_or_bin, fit_func, ...])Instantiate a directional bias correction.
apply
(elev[, bias_vars, resample, ...])Apply the estimated transform to a DEM.
copy
()Return an identical copy of the class.
error
(reference_elev, to_be_aligned_elev[, ...])Calculate the error of a coregistration approach.
fit
(reference_elev, to_be_aligned_elev[, ...])Estimate the coregistration transform on the given DEMs.
fit_and_apply
(reference_elev, to_be_aligned_elev)Estimate and apply the coregistration to a pair of elevation data.
info
([as_str])Summarize information about this coregistration.
residuals
(reference_elev, to_be_aligned_elev)Calculate the residual offsets (the difference) between two DEMs after applying the transformation.
Attributes
is_affine
Check if the transform be explained by a 3D affine transform.
is_translation
meta
Metadata dictionary of the coregistration.