bundles / scipy 1.17.1 / scipy / ndimage / _filters / generic_filter
function
scipy.ndimage._filters:generic_filter
source: /scipy/ndimage/_filters.py :2273
Signature
def generic_filter ( input , function , size = None , footprint = None , output = None , mode = reflect , cval = 0.0 , origin = 0 , extra_arguments = () , extra_keywords = None , * , axes = None ) Summary
Calculate a multidimensional filter using the given function.
Extended Summary
At each element the provided function is called. The input values within the filter footprint at that element are passed to the function as a 1-D array of double values.
Parameters
input: array_likeThe input array.
function: {callable, scipy.LowLevelCallable}Function to apply at each element.
size: scalar or tuple, optionalSee footprint, below. Ignored if footprint is given.
footprint: array, optionalEither
sizeorfootprintmust be defined.sizegives the shape that is taken from the input array, at every element position, to define the input to the filter function.footprintis a boolean array that specifies (implicitly) a shape, but also which of the elements within this shape will get passed to the filter function. Thussize=(n,m)is equivalent tofootprint=np.ones((n,m)). We adjustsizeto the number of dimensions of the input array, so that, if the input array is shape (10,10,10), andsizeis 2, then the actual size used is (2,2,2). Whenfootprintis given,sizeis ignored.output: array or dtype, optionalThe array in which to place the output, or the dtype of the returned array. By default an array of the same dtype as input will be created.
mode: {'reflect', 'constant', 'nearest', 'mirror', 'wrap'}, optionalThe
modeparameter determines how the input array is extended beyond its boundaries. Default is 'reflect'. Behavior for each valid value is as follows:'reflect' (
d c b a | a b c d | d c b a)The input is extended by reflecting about the edge of the last pixel. This mode is also sometimes referred to as half-sample symmetric.
'constant' (
k k k k | a b c d | k k k k)The input is extended by filling all values beyond the edge with the same constant value, defined by the
cvalparameter.'nearest' (
a a a a | a b c d | d d d d)The input is extended by replicating the last pixel.
'mirror' (
d c b | a b c d | c b a)The input is extended by reflecting about the center of the last pixel. This mode is also sometimes referred to as whole-sample symmetric.
'wrap' (
a b c d | a b c d | a b c d)The input is extended by wrapping around to the opposite edge.
For consistency with the interpolation functions, the following mode names can also be used:
'grid-mirror'
This is a synonym for 'reflect'.
'grid-constant'
This is a synonym for 'constant'.
'grid-wrap'
This is a synonym for 'wrap'.
cval: scalar, optionalValue to fill past edges of input if
modeis 'constant'. Default is 0.0.origin: int or sequence, optionalControls the placement of the filter on the input array's pixels. A value of 0 (the default) centers the filter over the pixel, with positive values shifting the filter to the left, and negative ones to the right. By passing a sequence of origins with length equal to the number of dimensions of the input array, different shifts can be specified along each axis.
extra_arguments: sequence, optionalSequence of extra positional arguments to pass to passed function.
extra_keywords: dict, optionaldict of extra keyword arguments to pass to passed function.
axes: tuple of int or None, optionalIf None,
inputis filtered along all axes. Otherwise,inputis filtered along the specified axes. Whenaxesis specified, any tuples used forsizeororiginmust match the length ofaxes. The ith entry in any of these tuples corresponds to the ith entry inaxes.
Returns
output: ndarrayFiltered array. Has the same shape as
input.
Notes
This function is ideal for use with instances of scipy.LowLevelCallable; for vectorized, pure-Python callables, consider vectorized_filter for improved performance.
Low-level callback functions must have one of the following signatures:
int callback(double *buffer, npy_intp filter_size, double *return_value, void *user_data) int callback(double *buffer, intptr_t filter_size, double *return_value, void *user_data)
The calling function iterates over the elements of the input and output arrays, calling the callback function at each element. The elements within the footprint of the filter at the current element are passed through the buffer parameter, and the number of elements within the footprint through filter_size. The calculated value is returned in return_value. user_data is the data pointer provided to scipy.LowLevelCallable as-is.
The callback function must return an integer error status that is zero if something went wrong and one otherwise. If an error occurs, you should normally set the python error status with an informative message before returning, otherwise a default error message is set by the calling function.
In addition, some other low-level function pointer specifications are accepted, but these are for backward compatibility only and should not be used in new code.
Array API Standard Support
generic_filter has experimental support for Python Array API Standard compatible backends in addition to NumPy. Please consider testing these features by setting an environment variable SCIPY_ARRAY_API=1 and providing CuPy, PyTorch, JAX, or Dask arrays as array arguments. The following combinations of backend and device (or other capability) are supported.
==================== ==================== ==================== Library CPU GPU ==================== ==================== ==================== NumPy ✅ n/a CuPy n/a ✅ PyTorch ✅ ⛔ JAX ⚠️ no JIT ⛔ Dask ⚠️ computes graph n/a ==================== ==================== ====================
See
dev-arrayapifor more information.
Examples
Import the necessary modules and load the example image used for filtering.import numpy as np from scipy import datasets from scipy.ndimage import zoom, generic_filter import matplotlib.pyplot as plt✓
ascent = zoom(datasets.ascent(), 0.5)
⚠maximum_filter_result = generic_filter(ascent, np.amax, [5, 5])
⚠def custom_filter(image): return np.amax(image) - np.amin(image)✓
custom_filter_result = generic_filter(ascent, custom_filter, [5, 5])
⚠fig, axes = plt.subplots(3, 1, figsize=(3, 9)) plt.gray() # show the filtered result in grayscale top, middle, bottom = axes for ax in axes: ax.set_axis_off() # remove coordinate system✓
top.imshow(ascent)
⚠top.set_title("Original image")
✗middle.imshow(maximum_filter_result)
⚠middle.set_title("Maximum filter, Kernel: 5x5")
✗bottom.imshow(custom_filter_result)
⚠bottom.set_title("Custom filter, Kernel: 5x5")
✗fig.tight_layout()
✓See also
- vectorized_filter
similar functionality, but optimized for vectorized callables
Aliases
-
scipy.ndimage.generic_filter