Alard-Lupton implementation code¶
This page focuses on key implementation details of the Alard-Lupton (AL) image differencing in the LSST pipeline.
Introduction¶
In image differencing, our goal is to detect variable brightness features between two images by removing their static brightness parts by subtraction. Before performing pixel by pixel subtraction, the images should be transformed to match their PSFs. A suitable transformation is convolution of one of the images by a small image, a convolution kernel. The optimal convolution kernel is called the matching kernel. Given the images \(R\) and \(I\), we want to minimise the following expression in the least squares sense by finding \(K\):
In the AL approach the matching kernel is searched in the form of a linear combination of given basis functions:
As the PSFs are not uniform all over the images, the coefficients \(a_i\) are considered to be functions of image coordinates. In the AL algorithm, first local kernel solutions (spatially not varying values of \(a_i\)-s) are determined around selected sources. Then polynomials are fitted to the local sets of \(a_i\) solutions to obtain the spatially dependent coefficients for the image pair.
Basis functions¶
Solving for the matching kernel starts with the generation of the
basis functions. The number of basis functions and the properties of
the Gaussian bases (e.g. widths in pixels) are determined in
lsst.ip.diffim.makeKernelBasisList.generateAlardLuptonBasisList
.
The full config for this is being set in the module
lsst.ip.diffim.psfMatch
config classes. The decision logic depends
on this configuration and psf fwhm values of the images, some details
are given in the function API documentation.
Implementation of the AL solution¶
In the LSST pipeline, the following main steps can be distinguished:
A subset of detected or external catalog sources are selected on a spatial grid in the image. Kernel candidates (
KernelCandidate
in Figure 8) are created to perform the determination of the local matching kernel around each source. The entry point for the kernel optimization is atlsst.ip.diffim.PsfMatchTask._solve()
in the Python codebase.For each kernel candidate, local (spatially non-varying) coefficients are determined of the basis kernels that minimizes the image difference for the image stamp around this source.
If principal component analysis (PCA) is selected, new (fewer) basis functions are calculated from the local solutions, then the kernel candidates are solved again with the new set of basis functions.
For the whole image, spatially varying coefficients are fitted onto the local coefficient solutions. This is an iterative process rejecting outlying local solutions. The spatial variation is either generic 2nd order polynomials, or Chebyshev polynomials of the first kind (
config.spatialModelType
).
Figure 8 shows the main functional relation among the
implementation classes. These classes are implemented in the C++
codebase. Each arrow represents a functional relationship, pointing
from the subject to its target (object) class. The targets are
created, contained or accessed (used) by the subject classes. Numbers
show the possible multiplicities of the target instances in each
action. This diagram show the functionally most important components
only. It does not detail the abstraction hierarchy of the classes, all
classes shown have more general base classes. There are also
additional enums and classes declared to represent internal statuses
and to select and configure numerical algorithms. Classes for the
statistical analysis of the local and spatial solutions and for
supporting PCA (KernelSumVisitor
, AssessSpatialKernelVisitor
,
KernelPca
, KernelPcaVisitor
) are also not detailed
here. Please refer to the C++ API
documentation for these details.
In the C++ codebase, the solution steps are implemented using the
visitor concept. The visitor classes visit each KernelCandidate
instance, perform their operation on the kernel candidate itself by
changing the state of the visited instance while also updating their
own visitor state with data about the whole visiting process like
the number of good or bad numerical solutions.
BuildSingleKernelVisitor
visits all kernel candidates in each
SpatialCell
and calls their build()
method to solve for
the coefficients of the basis kernels. KernelCandidate
owns the
knowledge of how to initialize KernelSolution
, the solution knows
how to solve itself and how to turn that into an output kernel. The
solution is stored in the KernelCandidate
instance
itself. Following the solution of each kernel candidate with the
initial basis kernels, a principal component analysis (PCA) can be
performed to reduce the number of basis functions for the spatial
solution ( config.usePcaForSpatialKernel
), typically in the case
of the delta-function basis kernels. This needs the calculation of the
PCA basis of the initial local solutions, recalculation of the local
solutions using the new PCA basis kernels and then solving for the
spatial coefficients of the PCA basis. To support PCA,
KernelCandidate
can store one original and one PCA kernel
solution. See the C++ API docs of KernelCandidate.build()
,
KernelPca
and KernelPcaVisitor
for more details.
Following the determination of the kernel solutions for each kernel
candidate, the spatial solution is determined by
BuildSpatialKernelVisitor
. BuildSpatialKernelVisitor
visits
the kernel candidates and collects their local solution and
initializes SpatialKernelSolution
. Then SpatialKernelSolution
solves itself.
Both the local and the whole image spatial solutions are stored as
LinearCombinationKernel
instances. Note, the python API of
LinearCombinationKernel
currently does not support the evaluation
of parameters for an arbitrary x,y position. Workarounds are to get
and evaluate the parameter functions themselves directly or to compute
a kernel image that updates the last parameter values retrievable from
the instance.