Content
Code location
In LCLS software release code of the class RadialBkgd
resides in the package pyimgalgos
.
Auto-generated documentation for class RadialBkgd
Initialization
from pyimgalgos.RadialBkgd import RadialBkgd rb = RadialBkgd(xarr, yarr, mask=None, radedges=None, nradbins=100, phiedges=(0,360), nphibins=32)
See parameters' description in Auto-generated documentation for class RadialBkgd.
Input n-d arrays can be obtained through the Detector (AreaDetector) interface or directly through the class working with geometre:
from PSCalib.GeometryAccess import GeometryAccess geo = GeometryAccess(fname_geo) xarr, yarr, zarr = geo.get_pixel_coords() iX, iY = geo.get_pixel_coord_indexes() mask = geo.get_pixel_mask(mbits=0377) # mask for 2x1 edges, two central columns, and unbound pixels with their neighbours ...
Algorithm
Intention
This algorithm is intended to subtract background from images with quasi-symmetric radial distribution of intensities.
For example, pure water ring background from exp=cxij4716:run=22 for single event:
To evaluate background in data, n-d array of data is split for 2-d bins in polar coordinate frame, total intensity and number of involved pixels are counted for each bin and converted to the average bin intensity.
Then this averaged intensity is per-pixel subtracted form data n-d array.
Description
Input per-pixel coordinates passed in numpy arrays xarr, yarr are used to evaluate per-pixel radius and polar angle:
rad = rb.pixel_rad() phi = rb.pixel_phi()
Binning parameters radedges, nradbins, phiedges, nphibins
are used to initialize 2-d bins using class HBins. Initialization with default binning parameters covers entire detector coordinate space.
Non-default binning, for example like
rb = RadialBkgd(X, Y, mask, nradbins=3, nphibins=8, phiedges=(-20, 240), radedges=(10000,80000))
defines angular pixel coordinates with correct offset relative to minimal angle,
and gives 3 bins in radial direction from 10mm to 80mm and 8 bins in angle from -20 to 240 degree:
rad = rb.pixel_rad() iseq = rb.pixel_iseq()
Pixels masked by the n-d array passed in the parameter mask
are excluded from this algorithm and are not corrected.
Averaged background intensity for default and non-default binning cases (nphibins=8, nradbins=500
):
bkgd = rb.bkgd_nda(nda)
Background subtraction
Background subtracted data for default (nradbins=100, nphibins=32
) and non-default binning cases (nradbins=500, nphibins=1
), and (nradbins=500, nphibins=8, phiedges=(-20, 240)
):
res = rb.subtract_bkgd(nda)
Polarization correction
- For good statistical precision of the background averaging 2-d bins should contain large number of pixels. However large bins produces significant binning artifacts which are seen in resulting image.
- The main reason for angular bins is a variation of intensity with angle due to polarization effect. The beam polarization effect can be eliminated with appropriate correction.
Method for polarization correction factor:
Then, radial background can be estimated for a single (ring-shaped radial bins) or several angular bins:
arr = load_txt(fname_nda) rb = RadialBkgd(X, Y, mask, nradbins=500, nphibins=1) pf = polarization_factor(rb.pixel_rad(), rb.pixel_phi(), 94e3) nda = rb.subtract_bkgd(arr * pf) * mask.flatten()
For exp=cxij4716:run=22 z=94mm
- averaged over all 14636 events calibrated (pedestal, common mode) data
- polarization correction factor
- polarization corrected data
- radial-background subtracted data using single angular bin
- radial-background subtracted data using 8 angular bins
CSPAD "dopping" artifacts
- zoomed-in regions of the last plot
Shows some "doping" as well as "gray scale gradient" artifacts.
References