Package usage and technical notes

This page is a collection of usage and code related notes about the image differencing implementation. We do not summarise the Alard-Lupton (AL) [AL_1998] and Zackay, Ofek, Gal-Yam (ZOGY) [ZOGY2016] papers themselves here.

Usage notes

Supported input data

ImageDifferenceTask supports two types of data products as templates, coadds and calexps, which can be subtracted from calexp science exposures only. Other combinations of inputs are not supported. The input mode is selected by the getTemplate configurable field. The getTemplate subtask is a properly retargetable top level pexConfig.ConfigurableField with two supported target subtasks: GetCoaddAsTemplate and GetCalexpAsTemplate.

Enabling processing steps

There is a sequence of pre-subtraction and post-subtraction processing steps included in ImageDifferenceTask around the actual subtraction operation of the images. Including the subtraction operation itself, these steps can be enabled or disabled by top level do<ACTION> configuration options. These top-level configuration options are summarised in Figure 4 and Figure 5 (flowchart source and standalone pdf version ). Some of these top level configuration options are also passed on to invoked subtasks and influence their functionality. They may not be specified for the subtasks directly.

Subtasks page 1

Figure 4 Top level subtasks and top level configuration options in ImageDifferenceTask.

Following the reading of the template and science images, the task starts with the preprocessing of the science exposure on the top and ends with post processing steps following the subtraction on the bottom. Figure source here.
Subtasks page 2

Figure 5 Top level configuration options in ZogyTask.

Specifying a coadd as template

Using the GetCoaddAsTemplate subtask, we specify one or more science exposures by the --id general data specification option. Tract or patch specification as part of the --id option are silently ignored. The given (coaddName, defaults to “deep”) type coadd is looked up in the same input repository automatically. As of Butler generation 2, if multiple coadd templates are reachable through the repository parent references, one of them is picked automatically.

The subtask detemines the sky corners of a box that fully contains the science exposure with a configurable boundary (templateBorderSize). The subtask selects all patches of the coadd skymap that overlap with the science exposure and cuts them accordingly to assemble the template coadd image. The template coadd image inherits the coadd WCS. It is an error if there is no overlapping region. The --templateId option is silently ignored. The following example specifies one science exposure and implicitly the deep coadd residing in the same repository for image differencing:

imageDifference.py repo/ingested/ --id visit=410915 filter=g
   ccdnum=25

GetCoaddAsTemplate also supports loading DcrModel coadds and produce a color corrected template matching the filter of the science exposure.

Specifying a calexp as template

Using the GetCalexpAsTemplate subtask, we can select two calexp data products for subtraction. The --id option specifies a data reference of one or more science exposures (calexp). The --templateId specifies a data reference for the template (calexp). Fields that are not specified for the template are inherited from the science exposure data reference. The following example subtract visit 410915 ccdnum 25 (template) from 411055 ccdnum 25 (science exposure):

imageDifference.py repo/calibimgs --id visit=411055
   ccdnum=25 --templateId visit=410915

Implementation notes

General

If the two images have the same origin and extent (same WCS) the subtraction is performed pixel by pixel. Otherwise, the template exposure is warped and resampled into the WCS frame of the science exposure.

The AL kernel fitting is entirely implemented in C++, an adaptation of the hotpants C package by Becker, while the ZOGY algorithm is entirely implemented in Pyton based on mostly on the numpy FFT functionality.

Beside the top level configuration options, the AL algorithm has its own set of separate configuration parameters, while the ZOGY algorithm does not have any algorithm specific options.

Alard-Lupton algorithm

The Alard-Lupton numerical fitting for the coefficients (of the composing basis kernel functions) of the image convolution kernel is performed independently on a number of stamp images around selected sources. These independent solutions are called kernel candidates throughout the code. The final kernel solution model for the whole image is a smoothly varying spatial fit of the coefficients as a function of the image pixel coordinates.

If convolveTemplate==False the science exposure is convolved and then the template is subtracted from the science image.

The performance of the AL algorithm was studied in details in the [Becker_LDM-227] report. This study forms the basis of the AL algorithm default values; the degree of the polynomial multiplicator of the Gaussian kernel basis functions (degGauss), the degree of the polynomial that is fitted to the spatial variaton of the solution coefficients accross the image (spatialKernelOrder) and the default detection thresholds (5.5 sigma). As a legacy of this study, the Winter2013ImageDifferenceTask is still available in imageDifference.py though it is unclear which test data repository it requires.

Due to noise in the template image, convolving the template introduces correlation in the noise in the template image. The AL algorithm was improved by an additional afterburner decorrelation to remove the noise correlation in the image difference. The implemented decorrelation method and its mathematical formulae of the decorrelation kernel is summarised and studied in [Reiss_DMTN-021].

Zackay-Ofek-Gal-Yam algorithm

[ZOGY2016] is free from the assumption that the template is noise free or specially selected by any other means. We simply deal with two images with different PSFs and noise characteristics (sigma). In the basic version of the algorithm, the random noise in the pixels are assumed to be background dominated i.e. uncorrelated between pixels and independent of the pixel values. Also we assume that the noise has zero expectation value i.e. the expectation value of the random noise is already removed. ZOGY shows that if these assumptions hold, the difference image noise is also independent and identically distributed over its pixels (white) by construction, there is no need to decorrelate the noise in the difference image.

Following the variance addition rule of the difference of uncorrelated random variables, exactly the same steps are repeated on the exposure variance planes as on the data planes, only the subtraction step is replaced by addition.

The nan values are removed from the science and template images before Fourier transformations and replaced by the image mean values. On the immage difference, the mask plane UNMASKEDNAN is set for pixels where originally any of the two inputs or the difference result is nan.

Pre-convolution is not implemented in the ZOGY algorithm. In case of the ZOGY algorithm, the doPreConvolve==True config option selects the detection likelihood image to be returned instead of the difference image. Under the assumptions of the algorithm, this image carries the likelihood ratio test statistic values similarly to the usual match filter-convolved image and can be used for threshold source detections. The S detection likelihood (or score) image (eq. 12 in [ZOGY2016]) and its corrected variance S_var (the denominator of eq. 25 [ZOGY2016]) are calculated and returned, following the simple correction steps presented in the paper Section 3.3. This signal correction is introduced to account for the source noise (bright sources) and also for other systematic noise sources. The iterative approach of section 3.5 is not implemented.

References

[AL_1998]Alard, C.; Lupton, Robert H. A Method for Optimal Image Subtraction
[Reiss_DMTN-021]Reiss J. David, Lupton, Robert H. DMTN-021: Implementation of Image Difference Decorrelation
[ZOGY2016](1, 2, 3, 4) Zackay B., Ofek E. O., Gal-Yam A., Proper Image Subtraction—Optimal Transient Detection, Photometry, and Hypothesis Testing, 2016, ApJ, 830, 27
[Becker_LDM-227]Becker A. et al. LDM-227 Report on Late Winter2013 Production: Image Differencing