LSST Applications 27.0.0,g0265f82a02+469cd937ee,g02d81e74bb+21ad69e7e1,g1470d8bcf6+cbe83ee85a,g2079a07aa2+e67c6346a6,g212a7c68fe+04a9158687,g2305ad1205+94392ce272,g295015adf3+81dd352a9d,g2bbee38e9b+469cd937ee,g337abbeb29+469cd937ee,g3939d97d7f+72a9f7b576,g487adcacf7+71499e7cba,g50ff169b8f+5929b3527e,g52b1c1532d+a6fc98d2e7,g591dd9f2cf+df404f777f,g5a732f18d5+be83d3ecdb,g64a986408d+21ad69e7e1,g858d7b2824+21ad69e7e1,g8a8a8dda67+a6fc98d2e7,g99cad8db69+f62e5b0af5,g9ddcbc5298+d4bad12328,ga1e77700b3+9c366c4306,ga8c6da7877+71e4819109,gb0e22166c9+25ba2f69a1,gb6a65358fc+469cd937ee,gbb8dafda3b+69d3c0e320,gc07e1c2157+a98bf949bb,gc120e1dc64+615ec43309,gc28159a63d+469cd937ee,gcf0d15dbbd+72a9f7b576,gdaeeff99f8+a38ce5ea23,ge6526c86ff+3a7c1ac5f1,ge79ae78c31+469cd937ee,gee10cc3b42+a6fc98d2e7,gf1cff7945b+21ad69e7e1,gfbcc870c63+9a11dc8c8f
LSST Data Management Base Package
Loading...
Searching...
No Matches
Public Member Functions | Static Public Attributes | List of all members
lsst.meas.algorithms.noise_covariance.CorrelationMatrix Class Reference

Public Member Functions

tuple[int, int] shape (self)
 
float __call__ (self, int x, int y)
 

Static Public Attributes

np array .ndarray
 

Detailed Description

A class holding correlation coefficients for a set of background pixels.

CorrelationMatrix is a dataclass that is initialized with a numpy ndarray
and provides some convenience methods for accessing the matrix elements.
A CorrelationMatrix instance is callable wth two integer values x and y,
which returns the <I(m,n) I(m+x, n+y) / sqrt( V(m,n) V(m+x,n+y) )>, where
I is the image, V is the variance plane and < > denotes the expectation
operator.

Parameters
----------
array : `numpy.ndarray`
    The matrix of correlation coefficients.

Definition at line 41 of file noise_covariance.py.

Member Function Documentation

◆ __call__()

float lsst.meas.algorithms.noise_covariance.CorrelationMatrix.__call__ ( self,
int x,
int y )

Definition at line 64 of file noise_covariance.py.

64 def __call__(self, x: int, y: int) -> float:
65 return self.array[x, y]
66
67

◆ shape()

tuple[int, int] lsst.meas.algorithms.noise_covariance.CorrelationMatrix.shape ( self)
The shape of the correlation matrix.

Definition at line 60 of file noise_covariance.py.

60 def shape(self) -> tuple[int, int]:
61 """The shape of the correlation matrix."""
62 return self.array.shape
63

Member Data Documentation

◆ array

np lsst.meas.algorithms.noise_covariance.CorrelationMatrix.array .ndarray
static

Definition at line 57 of file noise_covariance.py.


The documentation for this class was generated from the following file: