RandomBlur
RandomBlur
Bases: RandomTransform, IntensityTransform
Blur an image using a random-sized Gaussian filter.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
std
|
float | tuple[float, float]
|
Tuple \((a_1, b_1, a_2, b_2, a_3, b_3)\) representing the ranges (in mm) of the standard deviations \((\sigma_1, \sigma_2, \sigma_3)\) of the Gaussian kernels used to blur the image along each axis, where \(\sigma_i \sim \mathcal{U}(a_i, b_i)\). If two values \((a, b)\) are provided, then \(\sigma_i \sim \mathcal{U}(a, b)\). If only one value \(x\) is provided, then \(\sigma_i \sim \mathcal{U}(0, x)\). If three values \((x_1, x_2, x_3)\) are provided, then \(\sigma_i \sim \mathcal{U}(0, x_i)\). |
(0, 2)
|
**kwargs
|
See |
{}
|
__call__(data)
Transform data and return a result of the same type.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
data
|
InputType
|
Instance of |
required |
get_base_args()
Provides easy access to the arguments used to instantiate the base class
(Transform) of any transform.
This method is particularly useful when a new transform can be represented as a variant
of an existing transform (e.g. all random transforms), allowing for seamless instantiation
of the existing transform with the same arguments as the new transform during apply_transform.
Note
The p argument (probability of applying the transform) is excluded to avoid
multiplying the probability of both existing and new transform.
add_base_args(arguments, overwrite_on_existing=False)
Add the init args to existing arguments
validate_keys_sequence(keys, name)
staticmethod
Ensure that the input is not a string but a sequence of strings.
to_hydra_config()
Return a dictionary representation of the transform for Hydra instantiation.
arguments_are_dict()
Check if main arguments are dict.
Return True if the type of all attributes specified in the
args_names have dict type.