lsst.meas.base g551db3dbb4+1757824799
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plugins.py
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1# This file is part of meas_base.
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
22"""Definition of measurement plugins.
23
24This module defines and registers a series of pure-Python measurement plugins
25which have trivial implementations. It also wraps measurement algorithms
26defined in C++ to expose them to the measurement framework.
27"""
28
29import logging
30import numpy as np
31
33import lsst.geom
35import lsst.afw.geom
36
37from ._measBaseLib import (ApertureFluxControl, ApertureFluxTransform,
38 BaseTransform, BlendednessAlgorithm,
39 BlendednessControl, CircularApertureFluxAlgorithm,
40 GaussianFluxAlgorithm, GaussianFluxControl,
41 GaussianFluxTransform, LocalBackgroundAlgorithm,
42 LocalBackgroundControl, LocalBackgroundTransform,
43 MeasurementError,
44 PeakLikelihoodFluxAlgorithm,
45 PeakLikelihoodFluxControl,
46 PeakLikelihoodFluxTransform, PixelFlagsAlgorithm,
47 PixelFlagsControl, PsfFluxAlgorithm, PsfFluxControl,
48 PsfFluxTransform, ScaledApertureFluxAlgorithm,
49 ScaledApertureFluxControl,
50 ScaledApertureFluxTransform, SdssCentroidAlgorithm,
51 SdssCentroidControl, SdssCentroidTransform,
52 SdssShapeAlgorithm, SdssShapeControl,
53 SdssShapeTransform)
54
55from .baseMeasurement import BaseMeasurementPluginConfig
56from .forcedMeasurement import ForcedPlugin, ForcedPluginConfig
57from .pluginRegistry import register
58from .pluginsBase import BasePlugin
59from .sfm import SingleFramePlugin, SingleFramePluginConfig
60from .transforms import SimpleCentroidTransform
61from .wrappers import GenericPlugin, wrapSimpleAlgorithm, wrapTransform
62
63__all__ = (
64 "SingleFrameFPPositionConfig", "SingleFrameFPPositionPlugin",
65 "SingleFrameJacobianConfig", "SingleFrameJacobianPlugin",
66 "VarianceConfig", "SingleFrameVariancePlugin", "ForcedVariancePlugin",
67 "InputCountConfig", "SingleFrameInputCountPlugin", "ForcedInputCountPlugin",
68 "SingleFramePeakCentroidConfig", "SingleFramePeakCentroidPlugin",
69 "SingleFrameSkyCoordConfig", "SingleFrameSkyCoordPlugin",
70 "SingleFrameClassificationSizeExtendednessConfig",
71 "SingleFrameClassificationSizeExtendednessPlugin",
72 "ForcedPeakCentroidConfig", "ForcedPeakCentroidPlugin",
73 "ForcedTransformedCentroidConfig", "ForcedTransformedCentroidPlugin",
74 "ForcedTransformedCentroidFromCoordConfig",
75 "ForcedTransformedCentroidFromCoordPlugin",
76 "ForcedTransformedShapeConfig", "ForcedTransformedShapePlugin",
77 "EvaluateLocalPhotoCalibPlugin", "EvaluateLocalPhotoCalibPluginConfig",
78 "EvaluateLocalWcsPlugin", "EvaluateLocalWcsPluginConfig",
79)
80
81
82wrapSimpleAlgorithm(PsfFluxAlgorithm, Control=PsfFluxControl,
83 TransformClass=PsfFluxTransform, executionOrder=BasePlugin.FLUX_ORDER,
84 shouldApCorr=True, hasLogName=True)
85wrapSimpleAlgorithm(PeakLikelihoodFluxAlgorithm, Control=PeakLikelihoodFluxControl,
86 TransformClass=PeakLikelihoodFluxTransform, executionOrder=BasePlugin.FLUX_ORDER)
87wrapSimpleAlgorithm(GaussianFluxAlgorithm, Control=GaussianFluxControl,
88 TransformClass=GaussianFluxTransform, executionOrder=BasePlugin.FLUX_ORDER,
89 shouldApCorr=True)
90wrapSimpleAlgorithm(SdssCentroidAlgorithm, Control=SdssCentroidControl,
91 TransformClass=SdssCentroidTransform, executionOrder=BasePlugin.CENTROID_ORDER)
92wrapSimpleAlgorithm(PixelFlagsAlgorithm, Control=PixelFlagsControl,
93 executionOrder=BasePlugin.FLUX_ORDER)
94wrapSimpleAlgorithm(SdssShapeAlgorithm, Control=SdssShapeControl,
95 TransformClass=SdssShapeTransform, executionOrder=BasePlugin.SHAPE_ORDER)
96wrapSimpleAlgorithm(ScaledApertureFluxAlgorithm, Control=ScaledApertureFluxControl,
97 TransformClass=ScaledApertureFluxTransform, executionOrder=BasePlugin.FLUX_ORDER)
98
99wrapSimpleAlgorithm(CircularApertureFluxAlgorithm, needsMetadata=True, Control=ApertureFluxControl,
100 TransformClass=ApertureFluxTransform, executionOrder=BasePlugin.FLUX_ORDER)
101wrapSimpleAlgorithm(BlendednessAlgorithm, Control=BlendednessControl,
102 TransformClass=BaseTransform, executionOrder=BasePlugin.SHAPE_ORDER)
103
104wrapSimpleAlgorithm(LocalBackgroundAlgorithm, Control=LocalBackgroundControl,
105 TransformClass=LocalBackgroundTransform, executionOrder=BasePlugin.FLUX_ORDER)
106
107wrapTransform(PsfFluxTransform)
108wrapTransform(PeakLikelihoodFluxTransform)
109wrapTransform(GaussianFluxTransform)
110wrapTransform(SdssCentroidTransform)
111wrapTransform(SdssShapeTransform)
112wrapTransform(ScaledApertureFluxTransform)
113wrapTransform(ApertureFluxTransform)
114wrapTransform(LocalBackgroundTransform)
115
116log = logging.getLogger(__name__)
117
118
120 """Configuration for the focal plane position measurement algorithm.
121 """
122
123
124@register("base_FPPosition")
126 """Algorithm to calculate the position of a centroid on the focal plane.
127
128 Parameters
129 ----------
130 config : `SingleFrameFPPositionConfig`
131 Plugin configuration.
132 name : `str`
133 Plugin name.
134 schema : `lsst.afw.table.Schema`
135 The schema for the measurement output catalog. New fields will be
136 added to hold measurements produced by this plugin.
137 metadata : `lsst.daf.base.PropertySet`
138 Plugin metadata that will be attached to the output catalog
139 """
140
141 ConfigClass = SingleFrameFPPositionConfig
142
143 @classmethod
145 return cls.SHAPE_ORDER
146
147 def __init__(self, config, name, schema, metadata):
148 SingleFramePlugin.__init__(self, config, name, schema, metadata)
149 self.focalValue = lsst.afw.table.Point2DKey.addFields(schema, name, "Position on the focal plane",
150 "mm")
151 self.focalFlag = schema.addField(name + "_flag", type="Flag", doc="Set to True for any fatal failure")
152 self.detectorFlag = schema.addField(name + "_missingDetector_flag", type="Flag",
153 doc="Set to True if detector object is missing")
154
155 def measure(self, measRecord, exposure):
156 det = exposure.getDetector()
157 if not det:
158 measRecord.set(self.detectorFlag, True)
159 fp = lsst.geom.Point2D(np.nan, np.nan)
160 else:
161 center = measRecord.getCentroid()
162 fp = det.transform(center, lsst.afw.cameraGeom.PIXELS, lsst.afw.cameraGeom.FOCAL_PLANE)
163 measRecord.set(self.focalValue, fp)
164
165 def fail(self, measRecord, error=None):
166 measRecord.set(self.focalFlag, True)
167
168
170 """Configuration for the Jacobian calculation plugin.
171 """
172
173 pixelScale = lsst.pex.config.Field(dtype=float, default=0.5, doc="Nominal pixel size (arcsec)")
174
175
176@register("base_Jacobian")
178 """Compute the Jacobian and its ratio with a nominal pixel area.
179
180 This enables one to compare relative, rather than absolute, pixel areas.
181
182 Parameters
183 ----------
184 config : `SingleFrameJacobianConfig`
185 Plugin configuration.
186 name : `str`
187 Plugin name.
188 schema : `lsst.afw.table.Schema`
189 The schema for the measurement output catalog. New fields will be
190 added to hold measurements produced by this plugin.
191 metadata : `lsst.daf.base.PropertySet`
192 Plugin metadata that will be attached to the output catalog
193 """
194
195 ConfigClass = SingleFrameJacobianConfig
196
197 @classmethod
199 return cls.SHAPE_ORDER
200
201 def __init__(self, config, name, schema, metadata):
202 SingleFramePlugin.__init__(self, config, name, schema, metadata)
203 self.jacValue = schema.addField(name + '_value', type="D", doc="Jacobian correction")
204 self.jacFlag = schema.addField(name + '_flag', type="Flag", doc="Set to 1 for any fatal failure")
205 # Calculate one over the area of a nominal reference pixel, where area
206 # is in arcsec^2.
207 self.scale = pow(self.config.pixelScale, -2)
208
209 def measure(self, measRecord, exposure):
210 center = measRecord.getCentroid()
211 # Compute the area of a pixel at a source record's centroid, and take
212 # the ratio of that with the defined reference pixel area.
213 result = np.abs(self.scale*exposure.getWcs().linearizePixelToSky(
214 center,
215 lsst.geom.arcseconds).getLinear().computeDeterminant())
216 measRecord.set(self.jacValue, result)
217
218 def fail(self, measRecord, error=None):
219 measRecord.set(self.jacFlag, True)
220
221
223 """Configuration for the variance calculation plugin.
224 """
225 scale = lsst.pex.config.Field(dtype=float, default=5.0, optional=True,
226 doc="Scale factor to apply to shape for aperture")
227 mask = lsst.pex.config.ListField(doc="Mask planes to ignore", dtype=str,
228 default=["DETECTED", "DETECTED_NEGATIVE", "BAD", "SAT"])
229
230
232 """Compute the median variance corresponding to a footprint.
233
234 The aim here is to measure the background variance, rather than that of
235 the object itself. In order to achieve this, the variance is calculated
236 over an area scaled up from the shape of the input footprint.
237
238 Parameters
239 ----------
240 config : `VarianceConfig`
241 Plugin configuration.
242 name : `str`
243 Plugin name.
244 schema : `lsst.afw.table.Schema`
245 The schema for the measurement output catalog. New fields will be
246 added to hold measurements produced by this plugin.
247 metadata : `lsst.daf.base.PropertySet`
248 Plugin metadata that will be attached to the output catalog
249 """
250
251 ConfigClass = VarianceConfig
252
253 FAILURE_BAD_CENTROID = 1
254 """Denotes failures due to bad centroiding (`int`).
255 """
256
257 FAILURE_EMPTY_FOOTPRINT = 2
258 """Denotes failures due to a lack of usable pixels (`int`).
259 """
260
261 @classmethod
263 return BasePlugin.FLUX_ORDER
264
265 def __init__(self, config, name, schema, metadata):
266 GenericPlugin.__init__(self, config, name, schema, metadata)
267 self.varValue = schema.addField(name + '_value', type="D", doc="Variance at object position")
268 self.emptyFootprintFlag = schema.addField(name + '_flag_emptyFootprint', type="Flag",
269 doc="Set to True when the footprint has no usable pixels")
270
271 # Alias the badCentroid flag to that which is defined for the target
272 # of the centroid slot. We do not simply rely on the alias because
273 # that could be changed post-measurement.
274 schema.getAliasMap().set(name + '_flag_badCentroid', schema.getAliasMap().apply("slot_Centroid_flag"))
275
276 def measure(self, measRecord, exposure, center):
277 # Create an aperture and grow it by scale value defined in config to
278 # ensure there are enough pixels around the object to get decent
279 # statistics
280 if not np.all(np.isfinite(measRecord.getCentroid())):
281 raise MeasurementError("Bad centroid and/or shape", self.FAILURE_BAD_CENTROID)
282 aperture = lsst.afw.geom.Ellipse(measRecord.getShape(), measRecord.getCentroid())
283 aperture.scale(self.config.scale)
284 ellipse = lsst.afw.geom.SpanSet.fromShape(aperture)
285 foot = lsst.afw.detection.Footprint(ellipse)
286 foot.clipTo(exposure.getBBox(lsst.afw.image.PARENT))
287 # Filter out any pixels which have mask bits set corresponding to the
288 # planes to be excluded (defined in config.mask)
289 maskedImage = exposure.getMaskedImage()
290 pixels = lsst.afw.detection.makeHeavyFootprint(foot, maskedImage)
291 maskBits = maskedImage.getMask().getPlaneBitMask(self.config.mask)
292 logicalMask = np.logical_not(pixels.getMaskArray() & maskBits)
293 # Compute the median variance value for each pixel not excluded by the
294 # mask and write the record. Numpy median is used here instead of
295 # afw.math makeStatistics because of an issue with data types being
296 # passed into the C++ layer (DM-2379).
297 if np.any(logicalMask):
298 medVar = np.median(pixels.getVarianceArray()[logicalMask])
299 measRecord.set(self.varValue, medVar)
300 else:
301 raise MeasurementError("Footprint empty, or all pixels are masked, can't compute median",
303
304 def fail(self, measRecord, error=None):
305 # Check that we have an error object and that it is of type
306 # MeasurementError
307 if isinstance(error, MeasurementError):
308 assert error.getFlagBit() in (self.FAILURE_BAD_CENTROID, self.FAILURE_EMPTY_FOOTPRINT)
309 # FAILURE_BAD_CENTROID handled by alias to centroid record.
310 if error.getFlagBit() == self.FAILURE_EMPTY_FOOTPRINT:
311 measRecord.set(self.emptyFootprintFlag, True)
312 measRecord.set(self.varValue, np.nan)
313 GenericPlugin.fail(self, measRecord, error)
314
315
316SingleFrameVariancePlugin = VariancePlugin.makeSingleFramePlugin("base_Variance")
317"""Single-frame version of `VariancePlugin`.
318"""
319
320ForcedVariancePlugin = VariancePlugin.makeForcedPlugin("base_Variance")
321"""Forced version of `VariancePlugin`.
322"""
323
324
326 """Configuration for the input image counting plugin.
327 """
328
329
330class InputCountPlugin(GenericPlugin):
331 """Count the number of input images which contributed to a source.
332
333 Parameters
334 ----------
335 config : `InputCountConfig`
336 Plugin configuration.
337 name : `str`
338 Plugin name.
339 schema : `lsst.afw.table.Schema`
340 The schema for the measurement output catalog. New fields will be
341 added to hold measurements produced by this plugin.
342 metadata : `lsst.daf.base.PropertySet`
343 Plugin metadata that will be attached to the output catalog
344
345 Notes
346 -----
347 Information is derived from the image's `~lsst.afw.image.CoaddInputs`.
348 Note these limitation:
349
350 - This records the number of images which contributed to the pixel in the
351 center of the source footprint, rather than to any or all pixels in the
352 source.
353 - Clipping in the coadd is not taken into account.
354 """
355
356 ConfigClass = InputCountConfig
357
358 FAILURE_BAD_CENTROID = 1
359 """Denotes failures due to bad centroiding (`int`).
360 """
361
362 FAILURE_NO_INPUTS = 2
363 """Denotes failures due to the image not having coadd inputs. (`int`)
364 """
365
366 @classmethod
368 return BasePlugin.SHAPE_ORDER
369
370 def __init__(self, config, name, schema, metadata):
371 GenericPlugin.__init__(self, config, name, schema, metadata)
372 self.numberKey = schema.addField(name + '_value', type="I",
373 doc="Number of images contributing at center, not including any"
374 "clipping")
375 self.noInputsFlag = schema.addField(name + '_flag_noInputs', type="Flag",
376 doc="No coadd inputs available")
377 # Alias the badCentroid flag to that which is defined for the target of
378 # the centroid slot. We do not simply rely on the alias because that
379 # could be changed post-measurement.
380 schema.getAliasMap().set(name + '_flag_badCentroid', schema.getAliasMap().apply("slot_Centroid_flag"))
381
382 def measure(self, measRecord, exposure, center):
383 if not (coaddInputs := exposure.getInfo().getCoaddInputs()):
384 raise MeasurementError("No coadd inputs defined.", self.FAILURE_NO_INPUTS)
385 if not np.all(np.isfinite(center)):
386 raise MeasurementError("Source has a bad centroid.", self.FAILURE_BAD_CENTROID)
387
388 count = len(coaddInputs.subset_containing_ccds(center, exposure.wcs))
389 measRecord.set(self.numberKey, count)
390
391 def fail(self, measRecord, error=None):
392 if error is not None:
393 assert error.getFlagBit() in (self.FAILURE_BAD_CENTROID, self.FAILURE_NO_INPUTS)
394 # FAILURE_BAD_CENTROID handled by alias to centroid record.
395 if error.getFlagBit() == self.FAILURE_NO_INPUTS:
396 measRecord.set(self.noInputsFlag, True)
397 GenericPlugin.fail(self, measRecord, error)
398
399
400SingleFrameInputCountPlugin = InputCountPlugin.makeSingleFramePlugin("base_InputCount")
401"""Single-frame version of `InputCoutPlugin`.
402"""
403
404ForcedInputCountPlugin = InputCountPlugin.makeForcedPlugin("base_InputCount")
405"""Forced version of `InputCoutPlugin`.
406"""
407
408
410 """Configuration for the variance calculation plugin.
411 """
412
413
414class EvaluateLocalPhotoCalibPlugin(GenericPlugin):
415 """Evaluate the local value of the Photometric Calibration in the exposure.
416
417 The aim is to store the local calib value within the catalog for later
418 use in the Science Data Model functors.
419 """
420 ConfigClass = EvaluateLocalPhotoCalibPluginConfig
421
422 @classmethod
424 return BasePlugin.FLUX_ORDER
425
426 def __init__(self, config, name, schema, metadata):
427 GenericPlugin.__init__(self, config, name, schema, metadata)
428 self.photoKey = schema.addField(
429 name,
430 type="D",
431 doc="Local approximation of the PhotoCalib calibration factor at "
432 "the location of the src.")
433 self.photoErrKey = schema.addField(
434 "%sErr" % name,
435 type="D",
436 doc="Error on the local approximation of the PhotoCalib "
437 "calibration factor at the location of the src.")
438
439 def measure(self, measRecord, exposure, center):
440 photoCalib = exposure.getPhotoCalib()
441 if photoCalib is None:
442 log.debug(
443 "%s: photoCalib is None. Setting localPhotoCalib to NaN for record %d",
444 self.name,
445 measRecord.getId(),
446 )
447 calib = np.nan
448 calibErr = np.nan
449 measRecord.set(self._failKey, True)
450 else:
451 calib = photoCalib.getLocalCalibration(center)
452 calibErr = photoCalib.getCalibrationErr()
453 measRecord.set(self.photoKey, calib)
454 measRecord.set(self.photoErrKey, calibErr)
455
456
457SingleFrameEvaluateLocalPhotoCalibPlugin = EvaluateLocalPhotoCalibPlugin.makeSingleFramePlugin(
458 "base_LocalPhotoCalib")
459"""Single-frame version of `EvaluatePhotoCalibPlugin`.
460"""
461
462ForcedEvaluateLocalPhotoCalibPlugin = EvaluateLocalPhotoCalibPlugin.makeForcedPlugin(
463 "base_LocalPhotoCalib")
464"""Forced version of `EvaluatePhotoCalibPlugin`.
465"""
466
467
469 """Configuration for the variance calculation plugin.
470 """
471
472
473class EvaluateLocalWcsPlugin(GenericPlugin):
474 """Evaluate the local, linear approximation of the Wcs.
475
476 The aim is to store the local calib value within the catalog for later
477 use in the Science Data Model functors.
478 """
479 ConfigClass = EvaluateLocalWcsPluginConfig
480 _scale = (1.0 * lsst.geom.arcseconds).asDegrees()
481
482 @classmethod
484 return BasePlugin.FLUX_ORDER
485
486 def __init__(self, config, name, schema, metadata):
487 GenericPlugin.__init__(self, config, name, schema, metadata)
488 self.cdMatrix11Key = schema.addField(
489 f"{name}_CDMatrix_1_1",
490 type="D",
491 doc="(1, 1) element of the CDMatrix for the linear approximation "
492 "of the WCS at the src location. Gives units in radians.")
493 self.cdMatrix12Key = schema.addField(
494 f"{name}_CDMatrix_1_2",
495 type="D",
496 doc="(1, 2) element of the CDMatrix for the linear approximation "
497 "of the WCS at the src location. Gives units in radians.")
498 self.cdMatrix21Key = schema.addField(
499 f"{name}_CDMatrix_2_1",
500 type="D",
501 doc="(2, 1) element of the CDMatrix for the linear approximation "
502 "of the WCS at the src location. Gives units in radians.")
503 self.cdMatrix22Key = schema.addField(
504 f"{name}_CDMatrix_2_2",
505 type="D",
506 doc="(2, 2) element of the CDMatrix for the linear approximation "
507 "of the WCS at the src location. Gives units in radians.")
508
509 def measure(self, measRecord, exposure, center):
510 wcs = exposure.getWcs()
511 if wcs is None:
512 log.debug(
513 "%s: WCS is None. Setting localWcs matrix values to NaN for record %d",
514 self.name,
515 measRecord.getId(),
516 )
517 localMatrix = np.array([[np.nan, np.nan], [np.nan, np.nan]])
518 measRecord.set(self._failKey, True)
519 else:
520 localMatrix = self.makeLocalTransformMatrix(wcs, center)
521 measRecord.set(self.cdMatrix11Key, localMatrix[0, 0])
522 measRecord.set(self.cdMatrix12Key, localMatrix[0, 1])
523 measRecord.set(self.cdMatrix21Key, localMatrix[1, 0])
524 measRecord.set(self.cdMatrix22Key, localMatrix[1, 1])
525
526 def makeLocalTransformMatrix(self, wcs, center):
527 """Create a local, linear approximation of the wcs transformation
528 matrix.
529
530 The approximation is created as if the center is at RA=0, DEC=0. All
531 comparing x,y coordinate are relative to the position of center. Matrix
532 is initially calculated with units arcseconds and then converted to
533 radians. This yields higher precision results due to quirks in AST.
534
535 Parameters
536 ----------
537 wcs : `lsst.afw.geom.SkyWcs`
538 Wcs to approximate
539 center : `lsst.geom.Point2D`
540 Point at which to evaluate the LocalWcs.
541
542 Returns
543 -------
544 localMatrix : `numpy.ndarray`
545 Matrix representation the local wcs approximation with units
546 radians.
547 """
548 skyCenter = wcs.pixelToSky(center)
549 localGnomonicWcs = lsst.afw.geom.makeSkyWcs(
550 center, skyCenter, np.diag((self._scale, self._scale)))
551 measurementToLocalGnomonic = wcs.getTransform().then(
552 localGnomonicWcs.getTransform().inverted()
553 )
554 localMatrix = measurementToLocalGnomonic.getJacobian(center)
555 return np.radians(localMatrix / 3600)
556
557
558SingleFrameEvaluateLocalWcsPlugin = EvaluateLocalWcsPlugin.makeSingleFramePlugin("base_LocalWcs")
559"""Single-frame version of `EvaluateLocalWcsPlugin`.
560"""
561
562ForcedEvaluateLocalWcsPlugin = EvaluateLocalWcsPlugin.makeForcedPlugin("base_LocalWcs")
563"""Forced version of `EvaluateLocalWcsPlugin`.
564"""
565
566
568 """Configuration for the single frame peak centroiding algorithm.
569 """
570
571
572@register("base_PeakCentroid")
574 """Record the highest peak in a source footprint as its centroid.
575
576 This is of course a relatively poor measure of the true centroid of the
577 object; this algorithm is provided mostly for testing and debugging.
578
579 Parameters
580 ----------
581 config : `SingleFramePeakCentroidConfig`
582 Plugin configuration.
583 name : `str`
584 Plugin name.
585 schema : `lsst.afw.table.Schema`
586 The schema for the measurement output catalog. New fields will be
587 added to hold measurements produced by this plugin.
588 metadata : `lsst.daf.base.PropertySet`
589 Plugin metadata that will be attached to the output catalog
590 """
591
592 ConfigClass = SingleFramePeakCentroidConfig
593
594 @classmethod
596 return cls.CENTROID_ORDER
597
598 def __init__(self, config, name, schema, metadata):
599 SingleFramePlugin.__init__(self, config, name, schema, metadata)
600 self.keyX = schema.addField(name + "_x", type="D", doc="peak centroid", units="pixel")
601 self.keyY = schema.addField(name + "_y", type="D", doc="peak centroid", units="pixel")
602 self.flag = schema.addField(name + "_flag", type="Flag", doc="Centroiding failed")
603
604 def measure(self, measRecord, exposure):
605 peak = measRecord.getFootprint().getPeaks()[0]
606 measRecord.set(self.keyX, peak.getFx())
607 measRecord.set(self.keyY, peak.getFy())
608
609 def fail(self, measRecord, error=None):
610 measRecord.set(self.flag, True)
611
612 @staticmethod
614 return SimpleCentroidTransform
615
616
618 """Configuration for the sky coordinates algorithm.
619 """
620
621
622@register("base_SkyCoord")
624 """Record the sky position and uncertainties of an object based on its
625 centroid slot and WCS.
626
627 The position is recorded in the ``coord`` field, which is part of the
628 `~lsst.afw.table.SourceCatalog` minimal schema. The associated
629 uncertainty fields propagate the centroid covariance through a Jacobian
630 taken in a local tangent (gnomonic) plane centered on the source.
631
632 Parameters
633 ----------
634 config : `SingleFrameSkyCoordConfig`
635 Plugin configuration.
636 name : `str`
637 Plugin name.
638 schema : `lsst.afw.table.Schema`
639 The schema for the measurement output catalog. New fields will be
640 added to hold measurements produced by this plugin.
641 metadata : `lsst.daf.base.PropertySet`
642 Plugin metadata that will be attached to the output catalog
643 """
644
645 ConfigClass = SingleFrameSkyCoordConfig
646
647 @classmethod
649 return cls.SHAPE_ORDER
650
651 def __init__(self, config, name, schema, metadata):
652 SingleFramePlugin.__init__(self, config, name, schema, metadata)
653 if "coord_raErr" not in schema:
655
656 def measure(self, measRecord, exposure):
657 # There should be a base class method for handling this exception. Put
658 # this on a later ticket. Also, there should be a python Exception of
659 # the appropriate type for this error
660 if not exposure.hasWcs():
661 raise RuntimeError("Wcs not attached to exposure. Required for " + self.name + " algorithm")
662 measRecord.updateCoord(exposure.getWcs())
663
664 def fail(self, measRecord, error=None):
665 # Override fail() to do nothing in the case of an exception: this is
666 # not ideal, but we don't have a place to put failures because we
667 # don't allocate any fields. Should consider fixing as part of
668 # DM-1011
669 pass
670
671
672class SingleFrameClassificationSizeExtendednessConfig(SingleFramePluginConfig):
673 """Configuration for moments-based star-galaxy classifier."""
674
675 exponent = lsst.pex.config.Field[float](
676 doc="Exponent to raise the PSF size squared (Ixx + Iyy) to, "
677 "in the likelihood normalization",
678 default=0.5,
679 )
680
681
682@register("base_ClassificationSizeExtendedness")
684 """Classify objects by comparing their moments-based trace radius to PSF's.
685
686 The plugin computes chi^2 as ((T_obj - T_psf)/T_psf^exponent)^2, where
687 T_obj is the sum of Ixx and Iyy moments of the object, and T_psf is the
688 sum of Ixx and Iyy moments of the PSF. The exponent is configurable.
689 The measure of being a galaxy is then 1 - exp(-0.5*chi^2).
690
691 Parameters
692 ----------
693 config : `SingleFrameClassificationSizeExtendednessConfig`
694 Plugin configuration.
695 name : `str`
696 Plugin name.
697 schema : `~lsst.afw.table.Schema`
698 The schema for the measurement output catalog. New fields will be
699 added to hold measurements produced by this plugin.
700 metadata : `~lsst.daf.base.PropertySet`
701 Plugin metadata that will be attached to the output catalog.
702
703 Notes
704 -----
705 The ``measure`` method of the plugin requires a value for the ``exposure``
706 argument to maintain consistent API, but it is not used in the measurement.
707 """
708
709 ConfigClass = SingleFrameClassificationSizeExtendednessConfig
710
711 FAILURE_BAD_SHAPE = 1
712 """Denotes failures due to bad shape (`int`).
713 """
714
715 @classmethod
717 return cls.FLUX_ORDER
718
719 def __init__(self, config, name, schema, metadata):
720 SingleFramePlugin.__init__(self, config, name, schema, metadata)
721 self.key = schema.addField(name + "_value",
722 type="D",
723 doc="Measure of being a galaxy based on trace of second order moments",
724 )
725 self.flag = schema.addField(name + "_flag", type="Flag", doc="Moments-based classification failed")
726
727 def measure(self, measRecord, exposure) -> None:
728 # Docstring inherited.
729
730 if measRecord.getShapeFlag():
731 raise MeasurementError(
732 "Shape flag is set. Required for " + self.name + " algorithm",
734 )
735
736 shape = measRecord.getShape()
737 psf_shape = measRecord.getPsfShape()
738
739 ixx = shape.getIxx()
740 iyy = shape.getIyy()
741 ixx_psf = psf_shape.getIxx()
742 iyy_psf = psf_shape.getIyy()
743
744 object_t = ixx + iyy
745 psf_t = ixx_psf + iyy_psf
746
747 chi_sq = ((object_t - psf_t)/(psf_t**self.config.exponent))**2.
748 likelihood = 1. - np.exp(-0.5*chi_sq)
749 measRecord.set(self.key, likelihood)
750
751 def fail(self, measRecord, error=None) -> None:
752 # Docstring inherited.
753 measRecord.set(self.key, np.nan)
754 measRecord.set(self.flag, True)
755
756
758 """Configuration for the forced peak centroid algorithm.
759 """
760
761
762@register("base_PeakCentroid")
764 """Record the highest peak in a source footprint as its centroid.
765
766 This is of course a relatively poor measure of the true centroid of the
767 object; this algorithm is provided mostly for testing and debugging.
768
769 This is similar to `SingleFramePeakCentroidPlugin`, except that transforms
770 the peak coordinate from the original (reference) coordinate system to the
771 coordinate system of the exposure being measured.
772
773 Parameters
774 ----------
775 config : `ForcedPeakCentroidConfig`
776 Plugin configuration.
777 name : `str`
778 Plugin name.
779 schemaMapper : `lsst.afw.table.SchemaMapper`
780 A mapping from reference catalog fields to output
781 catalog fields. Output fields are added to the output schema.
782 metadata : `lsst.daf.base.PropertySet`
783 Plugin metadata that will be attached to the output catalog.
784 """
785
786 ConfigClass = ForcedPeakCentroidConfig
787
788 @classmethod
790 return cls.CENTROID_ORDER
791
792 def __init__(self, config, name, schemaMapper, metadata):
793 ForcedPlugin.__init__(self, config, name, schemaMapper, metadata)
794 schema = schemaMapper.editOutputSchema()
795 self.keyX = schema.addField(name + "_x", type="D", doc="peak centroid", units="pixel")
796 self.keyY = schema.addField(name + "_y", type="D", doc="peak centroid", units="pixel")
797
798 def measure(self, measRecord, exposure, refRecord, refWcs):
799 targetWcs = exposure.getWcs()
800 peak = refRecord.getFootprint().getPeaks()[0]
801 result = lsst.geom.Point2D(peak.getFx(), peak.getFy())
802 result = targetWcs.skyToPixel(refWcs.pixelToSky(result))
803 measRecord.set(self.keyX, result.getX())
804 measRecord.set(self.keyY, result.getY())
805
806 @staticmethod
808 return SimpleCentroidTransform
809
810
812 """Configuration for the forced transformed centroid algorithm.
813 """
814
815
816@register("base_TransformedCentroid")
818 """Record the transformation of the reference catalog centroid.
819
820 The centroid recorded in the reference catalog is tranformed to the
821 measurement coordinate system and stored.
822
823 Parameters
824 ----------
825 config : `ForcedTransformedCentroidConfig`
826 Plugin configuration
827 name : `str`
828 Plugin name
829 schemaMapper : `lsst.afw.table.SchemaMapper`
830 A mapping from reference catalog fields to output
831 catalog fields. Output fields are added to the output schema.
832 metadata : `lsst.daf.base.PropertySet`
833 Plugin metadata that will be attached to the output catalog.
834
835 Notes
836 -----
837 This is used as the slot centroid by default in forced measurement,
838 allowing subsequent measurements to simply refer to the slot value just as
839 they would in single-frame measurement.
840 """
841
842 ConfigClass = ForcedTransformedCentroidConfig
843
844 @classmethod
846 return cls.CENTROID_ORDER
847
848 def __init__(self, config, name, schemaMapper, metadata):
849 ForcedPlugin.__init__(self, config, name, schemaMapper, metadata)
850 schema = schemaMapper.editOutputSchema()
851 # Allocate x and y fields, join these into a single FunctorKey for
852 # ease-of-use.
853 xKey = schema.addField(name + "_x", type="D", doc="transformed reference centroid column",
854 units="pixel")
855 yKey = schema.addField(name + "_y", type="D", doc="transformed reference centroid row",
856 units="pixel")
858 # Because we're taking the reference position as given, we don't bother
859 # transforming its uncertainty and reporting that here, so there are no
860 # sigma or cov fields. We do propagate the flag field, if it exists.
861 if "slot_Centroid_flag" in schemaMapper.getInputSchema():
862 self.flagKey = schema.addField(name + "_flag", type="Flag",
863 doc="whether the reference centroid is marked as bad")
864 else:
865 self.flagKey = None
866
867 def measure(self, measRecord, exposure, refRecord, refWcs):
868 targetWcs = exposure.getWcs()
869 if not refWcs == targetWcs:
870 targetPos = targetWcs.skyToPixel(refWcs.pixelToSky(refRecord.getCentroid()))
871 measRecord.set(self.centroidKey, targetPos)
872 else:
873 measRecord.set(self.centroidKey, refRecord.getCentroid())
874 if self.flagKey is not None:
875 measRecord.set(self.flagKey, refRecord.getCentroidFlag())
876
877
879 """Configuration for the forced transformed coord algorithm.
880 """
881
882
883@register("base_TransformedCentroidFromCoord")
885 """Record the transformation of the reference catalog coord.
886
887 The coord recorded in the reference catalog is tranformed to the
888 measurement coordinate system and stored.
889
890 Parameters
891 ----------
892 config : `ForcedTransformedCentroidFromCoordConfig`
893 Plugin configuration
894 name : `str`
895 Plugin name
896 schemaMapper : `lsst.afw.table.SchemaMapper`
897 A mapping from reference catalog fields to output
898 catalog fields. Output fields are added to the output schema.
899 metadata : `lsst.daf.base.PropertySet`
900 Plugin metadata that will be attached to the output catalog.
901
902 Notes
903 -----
904 This can be used as the slot centroid in forced measurement when only a
905 reference coord exist, allowing subsequent measurements to simply refer to
906 the slot value just as they would in single-frame measurement.
907 """
908
909 ConfigClass = ForcedTransformedCentroidFromCoordConfig
910
911 def measure(self, measRecord, exposure, refRecord, refWcs):
912 targetWcs = exposure.getWcs()
913
914 targetPos = targetWcs.skyToPixel(refRecord.getCoord())
915 measRecord.set(self.centroidKey, targetPos)
916
917 if self.flagKey is not None:
918 measRecord.set(self.flagKey, refRecord.getCentroidFlag())
919
920
922 """Configuration for the forced transformed shape algorithm.
923 """
924
925
926@register("base_TransformedShape")
928 """Record the transformation of the reference catalog shape.
929
930 The shape recorded in the reference catalog is tranformed to the
931 measurement coordinate system and stored.
932
933 Parameters
934 ----------
935 config : `ForcedTransformedShapeConfig`
936 Plugin configuration
937 name : `str`
938 Plugin name
939 schemaMapper : `lsst.afw.table.SchemaMapper`
940 A mapping from reference catalog fields to output
941 catalog fields. Output fields are added to the output schema.
942 metadata : `lsst.daf.base.PropertySet`
943 Plugin metadata that will be attached to the output catalog.
944
945 Notes
946 -----
947 This is used as the slot shape by default in forced measurement, allowing
948 subsequent measurements to simply refer to the slot value just as they
949 would in single-frame measurement.
950 """
951
952 ConfigClass = ForcedTransformedShapeConfig
953
954 @classmethod
956 return cls.SHAPE_ORDER
957
958 def __init__(self, config, name, schemaMapper, metadata):
959 ForcedPlugin.__init__(self, config, name, schemaMapper, metadata)
960 schema = schemaMapper.editOutputSchema()
961 # Allocate xx, yy, xy fields, join these into a single FunctorKey for
962 # ease-of-use.
963 xxKey = schema.addField(name + "_xx", type="D", doc="transformed reference shape x^2 moment",
964 units="pixel^2")
965 yyKey = schema.addField(name + "_yy", type="D", doc="transformed reference shape y^2 moment",
966 units="pixel^2")
967 xyKey = schema.addField(name + "_xy", type="D", doc="transformed reference shape xy moment",
968 units="pixel^2")
969 self.shapeKey = lsst.afw.table.QuadrupoleKey(xxKey, yyKey, xyKey)
970 # Because we're taking the reference position as given, we don't bother
971 # transforming its uncertainty and reporting that here, so there are no
972 # sigma or cov fields. We do propagate the flag field, if it exists.
973 if "slot_Shape_flag" in schemaMapper.getInputSchema():
974 self.flagKey = schema.addField(name + "_flag", type="Flag",
975 doc="whether the reference shape is marked as bad")
976 else:
977 self.flagKey = None
978
979 def measure(self, measRecord, exposure, refRecord, refWcs):
980 targetWcs = exposure.getWcs()
981 if not refWcs == targetWcs:
982 fullTransform = lsst.afw.geom.makeWcsPairTransform(refWcs, targetWcs)
983 localTransform = lsst.afw.geom.linearizeTransform(fullTransform, refRecord.getCentroid())
984 measRecord.set(self.shapeKey, refRecord.getShape().transform(localTransform.getLinear()))
985 else:
986 measRecord.set(self.shapeKey, refRecord.getShape())
987 if self.flagKey is not None:
988 measRecord.set(self.flagKey, refRecord.getShapeFlag())
static std::shared_ptr< geom::SpanSet > fromShape(int r, Stencil s=Stencil::CIRCLE, lsst::geom::Point2I offset=lsst::geom::Point2I())
static ErrorKey addErrorFields(Schema &schema)
Exception to be thrown when a measurement algorithm experiences a known failure mode.
Definition exceptions.h:48
__init__(self, config, name, schema, metadata)
Definition plugins.py:426
measure(self, measRecord, exposure, center)
Definition plugins.py:439
__init__(self, config, name, schema, metadata)
Definition plugins.py:486
measure(self, measRecord, exposure, center)
Definition plugins.py:509
measure(self, measRecord, exposure, refRecord, refWcs)
Definition plugins.py:798
__init__(self, config, name, schemaMapper, metadata)
Definition plugins.py:792
measure(self, measRecord, exposure, refRecord, refWcs)
Definition plugins.py:911
__init__(self, config, name, schemaMapper, metadata)
Definition plugins.py:848
measure(self, measRecord, exposure, refRecord, refWcs)
Definition plugins.py:867
measure(self, measRecord, exposure, refRecord, refWcs)
Definition plugins.py:979
__init__(self, config, name, schemaMapper, metadata)
Definition plugins.py:958
__init__(self, config, name, schema, metadata)
Definition plugins.py:370
fail(self, measRecord, error=None)
Definition plugins.py:391
measure(self, measRecord, exposure, center)
Definition plugins.py:382
__init__(self, config, name, schema, metadata)
Definition plugins.py:147
__init__(self, config, name, schema, metadata)
Definition plugins.py:201
__init__(self, config, name, schema, metadata)
Definition plugins.py:598
__init__(self, config, name, schema, metadata)
Definition plugins.py:651
__init__(self, config, name, schema, metadata)
Definition plugins.py:265
fail(self, measRecord, error=None)
Definition plugins.py:304
measure(self, measRecord, exposure, center)
Definition plugins.py:276
HeavyFootprint< ImagePixelT, MaskPixelT, VariancePixelT > makeHeavyFootprint(Footprint const &foot, lsst::afw::image::MaskedImage< ImagePixelT, MaskPixelT, VariancePixelT > const &img, HeavyFootprintCtrl const *ctrl=nullptr)
std::shared_ptr< SkyWcs > makeSkyWcs(daf::base::PropertySet &metadata, bool strip=false)
std::shared_ptr< TransformPoint2ToPoint2 > makeWcsPairTransform(SkyWcs const &src, SkyWcs const &dst)
lsst::geom::AffineTransform linearizeTransform(TransformPoint2ToPoint2 const &original, lsst::geom::Point2D const &inPoint)
register(name, shouldApCorr=False, apCorrList=())
wrapTransform(transformClass, hasLogName=False)
Definition wrappers.py:473
wrapSimpleAlgorithm(AlgClass, executionOrder, name=None, needsMetadata=False, hasMeasureN=False, hasLogName=False, deprecated=None, **kwds)
Definition wrappers.py:405