This rebin function resamples a 1D or 2D histogram to new bins.
In the 1D case, we have an array x1
of bin edges (m+1
entries), and
counts in each one are recorded in array y1
(m
entries). Instead of
keeping the data in the x1
bins, we have another set of bins that we want
the data sorted into. This new set of bins is represented by x2
(with
n+1
entries). The rebin function redistributes the counts in y1
into a
new array y2
(n
entries).
To do this rebinning, some assumption about the distribution of the counts within each channel is necessary. This script offers the choice between a uniform distribution or a spline fit with specified order.
The function works with array-like objects as determined by Numpy.
Uncertainties in y1
can be propagated through rebin if y1
is a uarray
from the Python uncertainties module.
Knoll[1] describes this in Chapter 18.IV.B titled "Spectrum Alignment." He calls this process rebinning, relocating, or spectrum alignment.
- [1] Glenn Knoll, Radiation Detection and Measurement, third edition,
- Wiley, 2000.