NDData¶
Overview¶
NDData
is based on numpy.ndarray
-like data
with
additional meta attributes:
meta
for general metadataunit
represents the physical unit of the datauncertainty
for the uncertainty of the datamask
indicates invalid points in the datawcs
represents the relationship between the data grid and world coordinatespsf
holds an image representation of the point spread function (PSF)
Each of these attributes can be set during initialization or directly on the
instance. Only the data
cannot be directly set after creating the instance.
Data¶
The data is the base of NDData
and is required to be
numpy.ndarray
-like. It is the only property that is required to create an
instance and it cannot be directly set on the instance.
Example¶
To create an instance:
>>> import numpy as np
>>> from astropy.nddata import NDData
>>> array = np.array([[0, 1, 0], [1, 0, 1], [0, 1, 0]])
>>> ndd = NDData(array)
>>> ndd
NDData([[0, 1, 0],
[1, 0, 1],
[0, 1, 0]])
And access by the data
attribute:
>>> ndd.data
array([[0, 1, 0],
[1, 0, 1],
[0, 1, 0]])
As already mentioned, it is not possible to set the data directly. So
ndd.data = np.arange(9)
will raise an exception. But the data can be
modified in place:
>>> ndd.data[1,1] = 100
>>> ndd.data
array([[ 0, 1, 0],
[ 1, 100, 1],
[ 0, 1, 0]])
Data During Initialization¶
During initialization it is possible to provide data that is not a
numpy.ndarray
but convertible to one.
Examples¶
To provide data that is convertible to a numpy.ndarray
, you can pass a list
containing numerical values:
>>> alist = [1, 2, 3, 4]
>>> ndd = NDData(alist)
>>> ndd.data # data will be a numpy-array:
array([1, 2, 3, 4])
A nested list
or tuple
is possible, but if these contain non-numerical
values the conversion might fail.
Besides input that is convertible to such an array, you can also use the
data
parameter to pass implicit additional information. For example, if the
data is another NDData
object it implicitly uses its
properties:
>>> ndd = NDData(ndd, unit = 'm')
>>> ndd2 = NDData(ndd)
>>> ndd2.data # It has the same data as ndd
array([1, 2, 3, 4])
>>> ndd2.unit # but it also has the same unit as ndd
Unit("m")
Another possibility is to use a Quantity
as a data
parameter:
>>> import astropy.units as u
>>> quantity = np.ones(3) * u.cm # this will create a Quantity
>>> ndd3 = NDData(quantity)
>>> ndd3.data
array([1., 1., 1.])
>>> ndd3.unit
Unit("cm")
Or a numpy.ma.MaskedArray
:
>>> masked_array = np.ma.array([5,10,15], mask=[False, True, False])
>>> ndd4 = NDData(masked_array)
>>> ndd4.data
array([ 5, 10, 15])
>>> ndd4.mask
array([False, True, False]...)
If such an implicitly passed property conflicts with an explicit parameter, the explicit parameter will be used and an info message will be issued:
>>> quantity = np.ones(3) * u.cm
>>> ndd6 = NDData(quantity, unit='m')
INFO: overwriting Quantity's current unit with specified unit. [astropy.nddata.nddata]
>>> ndd6.data
array([1., 1., 1.])
>>> ndd6.unit
Unit("m")
The unit of the Quantity
is being ignored and the unit is set
to the explicitly passed one.
It might be possible to pass other classes as a data
parameter as long as
they have the properties shape
, dtype
, __getitem__
, and
__array__
.
The purpose of this mechanism is to allow considerable flexibility in the
objects used to store the data while providing a useful default (numpy
array).
Mask¶
The mask
is being used to indicate if data points are valid or invalid.
NDData
does not restrict this mask in any way but it is
expected to follow the numpy.ma.MaskedArray
convention in that the mask:
Returns
True
for data points that are considered invalid.Returns
False
for those points that are valid.
Examples¶
One possibility is to create a mask by using numpy
’s comparison operators:
>>> array = np.array([0, 1, 4, 0, 2])
>>> mask = array == 0 # Mask points containing 0
>>> mask
array([ True, False, False, True, False]...)
>>> other_mask = array > 1 # Mask points with a value greater than 1
>>> other_mask
array([False, False, True, False, True]...)
And initialize the NDData
instance using the mask
parameter:
>>> ndd = NDData(array, mask=mask)
>>> ndd.mask
array([ True, False, False, True, False]...)
Or by replacing the mask:
>>> ndd.mask = other_mask
>>> ndd.mask
array([False, False, True, False, True]...)
There is no requirement that the mask actually be a numpy
array; for
example, a function which evaluates a mask value as needed is acceptable as
long as it follows the convention that True
indicates a value that should
be ignored.
Unit¶
The unit
represents the unit of the data values. It is required to be
Unit
-like or a string that can be converted to such a
Unit
:
>>> import astropy.units as u
>>> ndd = NDData([1, 2, 3, 4], unit="meter") # using a string
>>> ndd.unit
Unit("m")
- ..note::
Setting the
unit
on an instance is not possible.
Uncertainties¶
The uncertainty
represents an arbitrary representation of the error of the
data values. To indicate which kind of uncertainty representation is used, the
uncertainty
should have an uncertainty_type
property. If no such
property is found it will be wrapped inside a
UnknownUncertainty
.
The uncertainty_type
should follow the StdDevUncertainty
convention in that it returns a short string like "std"
for an uncertainty
given in standard deviation. Other examples are
VarianceUncertainty
and InverseVariance
.
Examples¶
Like the other properties the uncertainty
can be set during
initialization:
>>> from astropy.nddata import StdDevUncertainty, InverseVariance
>>> array = np.array([10, 7, 12, 22])
>>> uncert = StdDevUncertainty(np.sqrt(array))
>>> ndd = NDData(array, uncertainty=uncert)
>>> ndd.uncertainty
StdDevUncertainty([3.16227766, 2.64575131, 3.46410162, 4.69041576])
Or on the instance directly:
>>> other_uncert = StdDevUncertainty([2,2,2,2])
>>> ndd.uncertainty = other_uncert
>>> ndd.uncertainty
StdDevUncertainty([2, 2, 2, 2])
But it will print an info message if there is no uncertainty_type
:
>>> ndd.uncertainty = np.array([5, 1, 2, 10])
INFO: uncertainty should have attribute uncertainty_type. [astropy.nddata.nddata]
>>> ndd.uncertainty
UnknownUncertainty([ 5, 1, 2, 10])
It is also possible to convert between uncertainty types:
>>> uncert.represent_as(InverseVariance)
InverseVariance([0.1 , 0.14285714, 0.08333333, 0.04545455])
WCS¶
The wcs
should contain a mapping from the gridded data to world
coordinates. There are no restrictions placed on the property currently but it
may be restricted to an WCS
object or a more generalized WCS
object in the future.
Note
Like the unit the wcs
cannot be set on an instance.
Metadata¶
The meta
property contains all further meta information that does not fit
any other property.
Examples¶
If the meta
property is given it must be dict
-like:
>>> ndd = NDData([1,2,3], meta={'observer': 'myself'})
>>> ndd.meta
{'observer': 'myself'}
dict
-like means it must be a mapping from some keys to some values. This
also includes Header
objects:
>>> from astropy.io import fits
>>> header = fits.Header()
>>> header['observer'] = 'Edwin Hubble'
>>> ndd = NDData(np.zeros([10, 10]), meta=header)
>>> ndd.meta['observer']
'Edwin Hubble'
If the meta
property is not provided or explicitly set to None
, it will
default to an empty collections.OrderedDict
:
>>> ndd.meta = None
>>> ndd.meta
OrderedDict()
>>> ndd = NDData([1,2,3])
>>> ndd.meta
OrderedDict()
The meta
object therefore supports adding or updating these values:
>>> ndd.meta['exposure_time'] = 340.
>>> ndd.meta['filter'] = 'J'
Elements of the metadata dictionary can be set to any valid Python object:
>>> ndd.meta['history'] = ['calibrated', 'aligned', 'flat-fielded']
Initialization with Copy¶
The default way to create an NDData
instance is to try saving
the parameters as references to the original rather than as copy. Sometimes
this is not possible because the internal mechanics do not allow for this.
Examples¶
If the data
is a list
then during initialization this is copied
while converting to a ndarray
. But it is also possible to enforce
copies during initialization by setting the copy
parameter to True
:
>>> array = np.array([1, 2, 3, 4])
>>> ndd = NDData(array)
>>> ndd.data[2] = 10
>>> array[2] # Original array has changed
10
>>> ndd2 = NDData(array, copy=True)
>>> ndd2.data[2] = 3
>>> array[2] # Original array hasn't changed.
10
Note
In some cases setting copy=True
will copy the data
twice. Known
cases are if the data
is a list
or tuple
.
Converting NDData to Other Classes¶
There is limited support to convert a NDData
instance to
other classes. In the process some properties might be lost.
>>> data = np.array([1, 2, 3, 4])
>>> mask = np.array([True, False, False, True])
>>> unit = 'm'
>>> ndd = NDData(data, mask=mask, unit=unit)
numpy.ndarray
¶
Converting the data
to an array:
>>> array = np.asarray(ndd.data)
>>> array
array([1, 2, 3, 4])
Though using np.asarray
is not required, in most cases it will ensure that
the result is always a numpy.ndarray
numpy.ma.MaskedArray
¶
Converting the data
and mask
to a MaskedArray:
>>> masked_array = np.ma.array(ndd.data, mask=ndd.mask)
>>> masked_array
masked_array(data=[--, 2, 3, --],
mask=[ True, False, False, True],
fill_value=999999)
Quantity
¶
Converting the data
and unit
to a Quantity:
>>> quantity = u.Quantity(ndd.data, unit=ndd.unit)
>>> quantity
<Quantity [1., 2., 3., 4.] m>
Note
Ideally, you would construct masked quantities, but these are not properly supported: many operations on them fail.