LSST Applications 29.1.1,g0fba68d861+94d977d4f8,g1fd858c14a+0a42b1a450,g21d47ad084+bae5d1592d,g35bb328faa+fcb1d3bbc8,g36ff55ed5b+4036fd6440,g4e0f332c67+abab7ee1ee,g53246c7159+fcb1d3bbc8,g60b5630c4e+4036fd6440,g67b6fd64d1+31de10a2f7,g72a202582f+7a25662ef1,g78460c75b0+2f9a1b4bcd,g786e29fd12+cf7ec2a62a,g86c591e316+1a75853d69,g8852436030+8220ab3cb6,g88f4e072da+7005418d1d,g89139ef638+31de10a2f7,g8b8da53e10+8f7b08dc1c,g9125e01d80+fcb1d3bbc8,g989de1cb63+31de10a2f7,g9f1445be69+4036fd6440,g9f33ca652e+fcef3ba435,ga9baa6287d+4036fd6440,ga9e4eb89a6+a41a34c2ba,gabe3b4be73+1e0a283bba,gb0b61e0e8e+d456af7c26,gb1101e3267+f17a9d70ea,gb58c049af0+f03b321e39,gb89ab40317+31de10a2f7,gce29eb0867+05ed69485a,gcf25f946ba+8220ab3cb6,gd6cbbdb0b4+11317e7a17,gd9a9a58781+fcb1d3bbc8,gde0f65d7ad+b4f50ea554,ge278dab8ac+50e2446c94,ge410e46f29+31de10a2f7,ge80e9994a3+32bb9bc1c9,gf5e32f922b+fcb1d3bbc8,gf67bdafdda+31de10a2f7
LSST Data Management Base Package
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measure.py
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1# This file is part of scarlet_lite.
2#
3# Developed for the LSST Data Management System.
4# This product includes software developed by the LSST Project
5# (https://www.lsst.org).
6# See the COPYRIGHT file at the top-level directory of this distribution
7# for details of code ownership.
8#
9# This program is free software: you can redistribute it and/or modify
10# it under the terms of the GNU General Public License as published by
11# the Free Software Foundation, either version 3 of the License, or
12# (at your option) any later version.
13#
14# This program is distributed in the hope that it will be useful,
15# but WITHOUT ANY WARRANTY; without even the implied warranty of
16# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
17# GNU General Public License for more details.
18#
19# You should have received a copy of the GNU General Public License
20# along with this program. If not, see <https://www.gnu.org/licenses/>.
21
22from typing import cast
23
24import numpy as np
25
26from .bbox import Box
27from .image import Image
28
29
31 images: Image,
32 variance: Image,
33 psfs: np.ndarray,
34 center: tuple[int, int],
35) -> float:
36 """Calculate the signal to noise for a point source
37
38 This is done by weighting the image with the PSF in each band
39 and dividing by the PSF weighted variance.
40
41 Parameters
42 ----------
43 images:
44 The 3D (bands, y, x) image containing the data.
45 variance:
46 The variance of `images`.
47 psfs:
48 The PSF in each band.
49 center:
50 The center of the signal.
51
52 Returns
53 -------
54 snr:
55 The signal to noise of the source.
56 """
57 py = psfs.shape[1] // 2
58 px = psfs.shape[2] // 2
59 bbox = Box(psfs[0].shape, origin=(-py + center[0], -px + center[1]))
60 overlap = images.bbox & bbox
61 noise = variance[overlap].data
62 img = images[overlap].data
63 _psfs = Image(psfs, bands=images.bands, yx0=cast(tuple[int, int], bbox.origin))[overlap].data
64 numerator = img * _psfs
65 denominator = (_psfs * noise) * _psfs
66 return np.sum(numerator) / np.sqrt(np.sum(denominator))
A class to represent a 2-dimensional array of pixels.
Definition Image.h:51
float calculate_snr(Image images, Image variance, np.ndarray psfs, tuple[int, int] center)
Definition measure.py:35