LSSTApplications  16.0-10-g0ee56ad+5,16.0-11-ga33d1f2+5,16.0-12-g3ef5c14+3,16.0-12-g71e5ef5+18,16.0-12-gbdf3636+3,16.0-13-g118c103+3,16.0-13-g8f68b0a+3,16.0-15-gbf5c1cb+4,16.0-16-gfd17674+3,16.0-17-g7c01f5c+3,16.0-18-g0a50484+1,16.0-20-ga20f992+8,16.0-21-g0e05fd4+6,16.0-21-g15e2d33+4,16.0-22-g62d8060+4,16.0-22-g847a80f+4,16.0-25-gf00d9b8+1,16.0-28-g3990c221+4,16.0-3-gf928089+3,16.0-32-g88a4f23+5,16.0-34-gd7987ad+3,16.0-37-gc7333cb+2,16.0-4-g10fc685+2,16.0-4-g18f3627+26,16.0-4-g5f3a788+26,16.0-5-gaf5c3d7+4,16.0-5-gcc1f4bb+1,16.0-6-g3b92700+4,16.0-6-g4412fcd+3,16.0-6-g7235603+4,16.0-69-g2562ce1b+2,16.0-8-g14ebd58+4,16.0-8-g2df868b+1,16.0-8-g4cec79c+6,16.0-8-gadf6c7a+1,16.0-8-gfc7ad86,16.0-82-g59ec2a54a+1,16.0-9-g5400cdc+2,16.0-9-ge6233d7+5,master-g2880f2d8cf+3,v17.0.rc1
LSSTDataManagementBasePackage
cleanBadPoints.py
Go to the documentation of this file.
1 #
2 # LSST Data Management System
3 # Copyright 2008, 2009, 2010 LSST Corporation.
4 #
5 # This product includes software developed by the
6 # LSST Project (http://www.lsst.org/).
7 #
8 # This program is free software: you can redistribute it and/or modify
9 # it under the terms of the GNU General Public License as published by
10 # the Free Software Foundation, either version 3 of the License, or
11 # (at your option) any later version.
12 #
13 # This program is distributed in the hope that it will be useful,
14 # but WITHOUT ANY WARRANTY; without even the implied warranty of
15 # MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
16 # GNU General Public License for more details.
17 #
18 # You should have received a copy of the LSST License Statement and
19 # the GNU General Public License along with this program. If not,
20 # see <http://www.lsstcorp.org/LegalNotices/>.
21 #
22 
23 __all__ = ["clean"]
24 
25 
26 import numpy as np
27 
28 from lsst.meas.astrom.sip import LeastSqFitter1dPoly
29 
30 
31 def clean(srcMatch, wcs, order=3, nsigma=3):
32  """Remove bad points from srcMatch
33 
34  Input:
35  srcMatch : list of det::SourceMatch
36  order: Order of polynomial to use in robust fitting
37  nsigma: Sources more than this far away from the robust best fit
38  polynomial are removed
39 
40  Return:
41  list of det::SourceMatch of the good data points
42  """
43 
44  N = len(srcMatch)
45  catX = np.zeros(N)
46  # catY = np.zeros(N)
47  for i in range(N):
48  x, y = wcs.skyToPixel(srcMatch[i].first.getCoord())
49  catX[i] = x
50  # catY[i] = y
51 
52  # TODO -- why does this only use X?
53 
54  x = np.array([s.second.getX() for s in srcMatch])
55  dx = x - catX
56  sigma = np.zeros_like(dx) + 0.1
57 
58  idx = indicesOfGoodPoints(x, dx, sigma, order=order, nsigma=nsigma)
59 
60  clean = []
61  for i in idx:
62  clean.append(srcMatch[i])
63  return clean
64 
65 
66 def indicesOfGoodPoints(x, y, s, order=1, nsigma=3, maxiter=100):
67  """Return a list of indices in the range [0, len(x)]
68  of points that lie less than nsigma away from the robust
69  best fit polynomial
70  """
71 
72  # Indices of elements of x sorted in order of increasing value
73  idx = x.argsort()
74  newidx = []
75  for niter in range(maxiter):
76  rx = chooseRx(x, idx, order)
77  ry = chooseRy(y, idx, order)
78  rs = np.ones((len(rx)))
79 
80  lsf = LeastSqFitter1dPoly(list(rx), list(ry), list(rs), order)
81  fit = [lsf.valueAt(value) for value in rx]
82  f = [lsf.valueAt(value) for value in x]
83 
84  sigma = (y-f).std()
85  if sigma == 0:
86  # all remaining points are good; short circuit
87  return newidx if newidx else idx
88  deviance = np.fabs((y - f) / sigma)
89  newidx = np.flatnonzero(deviance < nsigma)
90 
91  if False:
92  import matplotlib.pyplot as plt
93  plt.plot(x, y, 'ks')
94  plt.plot(rx, ry, 'b-')
95  plt.plot(rx, ry, 'bs')
96  plt.plot(rx, fit, 'ms')
97  plt.plot(rx, fit, 'm-')
98  # plt.plot(x[newidx], y[newidx], 'rs')
99  plt.show()
100 
101  # If we haven't culled any points we're finished cleaning
102  if len(newidx) == len(idx):
103  break
104 
105  # We get here because we either a) stopped finding bad points
106  # or b) ran out of iterations. Either way, we just return our
107  # list of indices of good points.
108  return newidx
109 
110 
111 def chooseRx(x, idx, order):
112  """Create order+1 values of the ordinate based on the median of groups of elements of x"""
113  rSize = len(idx)/float(order+1) # Note, a floating point number
114  rx = np.zeros((order+1))
115 
116  for i in range(order+1):
117  rng = list(range(int(rSize*i), int(rSize*(i+1))))
118  rx[i] = np.mean(x[idx[rng]])
119  return rx
120 
121 
122 def chooseRy(y, idx, order):
123  """Create order+1 values of the ordinate based on the median of groups of elements of y"""
124  rSize = len(idx)/float(order+1) # Note, a floating point number
125  ry = np.zeros((order+1))
126 
127  for i in range(order+1):
128  rng = list(range(int(rSize*i), int(rSize*(i+1))))
129  ry[i] = np.median(y[idx[rng]])
130  return ry
def indicesOfGoodPoints(x, y, s, order=1, nsigma=3, maxiter=100)
STL namespace.
def clean(srcMatch, wcs, order=3, nsigma=3)
daf::base::PropertyList * list
Definition: fits.cc:833