CfhtIsrTask¶
- 
class lsst.obs.cfht.cfhtIsrTask.CfhtIsrTask(**kwargs)¶
- Bases: - lsst.ip.isr.isrTask.IsrTask- Attributes Summary - canMultiprocess- Methods Summary - adaptArgsAndRun(inputData, inputDataIds, …)- Run task algorithm on in-memory data. - applyOverrides(config)- A hook to allow a task to change the values of its config after the camera-specific overrides are loaded but before any command-line overrides are applied. - convertIntToFloat(exposure)- Convert exposure image from uint16 to float. - darkCorrection(exposure, darkExposure[, invert])- !Apply dark correction in place. - debugView(exposure, stepname)- Utility function to examine ISR exposure at different stages. - doLinearize(detector)- !Check if linearization is needed for the detector cameraGeom. - emptyMetadata()- Empty (clear) the metadata for this Task and all sub-Tasks. - ensureExposure(inputExp, camera, detectorNum)- Ensure that the data returned by Butler is a fully constructed exposure. - flatContext(exp, flat[, dark])- Context manager that applies and removes flats and darks, if the task is configured to apply them. - flatCorrection(exposure, flatExposure[, invert])- !Apply flat correction in place. - getAllSchemaCatalogs()- Get schema catalogs for all tasks in the hierarchy, combining the results into a single dict. - getDatasetTypes(config, configClass)- Return dataset type descriptors defined in task configuration. - getFullMetadata()- Get metadata for all tasks. - getFullName()- Get the task name as a hierarchical name including parent task names. - getInitInputDatasetTypes(config)- Return dataset type descriptors that can be used to retrieve the - initInputsconstructor argument.- getInitOutputDatasetTypes(config)- Return dataset type descriptors that can be used to write the objects returned by - getOutputDatasets.- getInitOutputDatasets()- Return persistable outputs that are available immediately after the task has been constructed. - getInputDatasetTypes(config)- Return input dataset type descriptors for this task. - getIsrExposure(dataRef, datasetType[, immediate])- !Retrieve a calibration dataset for removing instrument signature. - getName()- Get the name of the task. - getOutputDatasetTypes(config)- Return output dataset type descriptors for this task. - getResourceConfig()- Return resource configuration for this task. - getSchemaCatalogs()- Get the schemas generated by this task. - getTaskDict()- Get a dictionary of all tasks as a shallow copy. - makeDatasetType(dsConfig)- makeField(doc)- Make a - lsst.pex.config.ConfigurableFieldfor this task.- makeSubtask(name, **keyArgs)- Create a subtask as a new instance as the - nameattribute of this task.- maskAmplifier(ccdExposure, amp, defects)- Identify bad amplifiers, saturated and suspect pixels. - maskAndInterpDefect(ccdExposure, defectBaseList)- !Mask defects using mask plane “BAD” and interpolate over them, in place. - maskAndInterpNan(exposure)- !Mask NaNs using mask plane “UNMASKEDNAN” and interpolate over them, in place. - measureBackground(exposure[, IsrQaConfig])- Measure the image background in subgrids, for quality control purposes. - overscanCorrection(ccdExposure, amp)- Apply overscan correction in place. - parseAndRun([args, config, log, doReturnResults])- Parse an argument list and run the command. - readIsrData(dataRef, rawExposure)- !Retrieve necessary frames for instrument signature removal. - roughZeroPoint(exposure)- Set an approximate magnitude zero point for the exposure. - run(ccdExposure[, bias, linearizer, dark, …])- Perform instrument signature removal on an exposure - runDataRef(sensorRef)- Perform instrument signature removal on a ButlerDataRef of a Sensor. - runQuantum(quantum, butler)- Execute PipelineTask algorithm on single quantum of data. - saturationDetection(exposure, amp)- !Detect saturated pixels and mask them using mask plane config.saturatedMaskName, in place. - saturationInterpolation(ccdExposure)- !Interpolate over saturated pixels, in place. - saveStruct(struct, outputDataRefs, butler)- Save data in butler. - setValidPolygonIntersect(ccdExposure, fpPolygon)- !Set the valid polygon as the intersection of fpPolygon and the ccd corners. - suspectDetection(exposure, amp)- !Detect suspect pixels and mask them using mask plane config.suspectMaskName, in place. - timer(name[, logLevel])- Context manager to log performance data for an arbitrary block of code. - updateVariance(ampExposure, amp[, overscanImage])- Set the variance plane using the amplifier gain and read noise - writeConfig(butler[, clobber, doBackup])- Write the configuration used for processing the data, or check that an existing one is equal to the new one if present. - writeMetadata(dataRef)- Write the metadata produced from processing the data. - writePackageVersions(butler[, clobber, …])- Compare and write package versions. - writeSchemas(butler[, clobber, doBackup])- Write the schemas returned by - lsst.pipe.base.Task.getAllSchemaCatalogs.- Attributes Documentation - 
canMultiprocess= True¶
 - Methods Documentation - 
adaptArgsAndRun(inputData, inputDataIds, outputDataIds, butler)¶
- Run task algorithm on in-memory data. - This method is called by - runQuantumto operate on input in-memory data and produce coressponding output in-memory data. It receives arguments which are dictionaries with input data and input/output DataIds. Many simple tasks do not need to know DataIds so default implementation of this method calls- runmethod passing input data objects as keyword arguments. Most simple tasks will implement- runmethod, more complex tasks that need to know about output DataIds will override this method instead.- All three arguments to this method are dictionaries with keys equal to the name of the configuration fields for dataset type. If dataset type is configured with - scalarfiels set to- Truethen it is expected that only one dataset appears on input or output for that dataset type and dictionary value will be a single data object or DataId. Otherwise if- scalaris- False(default) then value will be a list (even if only one item is in the list).- The method returns - Structinstance with attributes matching the configuration fields for output dataset types. Values stored in returned struct are single object if- scalaris- Trueor list of objects otherwise. If tasks produces more than one object for some dataset type then data objects returned in- structmust match in count and order corresponding DataIds in- outputDataIds.- Parameters: - inputData : dict
- Dictionary whose keys are the names of the configuration fields describing input dataset types and values are Python-domain data objects (or lists of objects) retrieved from data butler. 
- inputDataIds : dict
- Dictionary whose keys are the names of the configuration fields describing input dataset types and values are DataIds (or lists of DataIds) that task consumes for corresponding dataset type. DataIds are guaranteed to match data objects in - inputData
- outputDataIds : dict
- Dictionary whose keys are the names of the configuration fields describing output dataset types and values are DataIds (or lists of DataIds) that task is to produce for corresponding dataset type. 
 - Returns: - struct : Struct
- Standard convention is that this method should return - Structinstance containing all output data. Struct attribute names should correspond to the names of the configuration fields describing task output dataset types. If something different is returned then- saveStructmethod has to be re-implemented accordingly.
 
- inputData : 
 - 
classmethod applyOverrides(config)¶
- A hook to allow a task to change the values of its config after the camera-specific overrides are loaded but before any command-line overrides are applied. - Parameters: - config : instance of task’s ConfigClass
- Task configuration. 
 - Notes - This is necessary in some cases because the camera-specific overrides may retarget subtasks, wiping out changes made in ConfigClass.setDefaults. See LSST Trac ticket #2282 for more discussion. - Warning - This is called by CmdLineTask.parseAndRun; other ways of constructing a config will not apply these overrides. 
- config : instance of task’s 
 - 
convertIntToFloat(exposure)¶
- Convert exposure image from uint16 to float. - If the exposure does not need to be converted, the input is immediately returned. For exposures that are converted to use floating point pixels, the variance is set to unity and the mask to zero. - Parameters: - exposure : lsst.afw.image.Exposure
- The raw exposure to be converted. 
 - Returns: - newexposure : lsst.afw.image.Exposure
- The input - exposure, converted to floating point pixels.
 - Raises: - RuntimeError
- Raised if the exposure type cannot be converted to float. 
 
- exposure : 
 - 
darkCorrection(exposure, darkExposure, invert=False)¶
- !Apply dark correction in place. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
- darkExposure : lsst.afw.image.Exposure
- Dark exposure of the same size as - exposure.
- invert : Bool, optional
- If True, re-add the dark to an already corrected image. 
 - Raises: - RuntimeError
- Raised if either - exposureor- darkExposuredo not have their dark time defined.
 - See also - lsst.ip.isr.isrFunctions.darkCorrection
- exposure : 
 - 
debugView(exposure, stepname)¶
- Utility function to examine ISR exposure at different stages. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to view. 
- stepname : str
- State of processing to view. 
 
- exposure : 
 - 
doLinearize(detector)¶
- !Check if linearization is needed for the detector cameraGeom. - Checks config.doLinearize and the linearity type of the first amplifier. - Parameters: - detector : lsst.afw.cameraGeom.Detector
- Detector to get linearity type from. 
 - Returns: - doLinearize : Bool
- If True, linearization should be performed. 
 
- detector : 
 - 
emptyMetadata()¶
- Empty (clear) the metadata for this Task and all sub-Tasks. 
 - 
ensureExposure(inputExp, camera, detectorNum)¶
- Ensure that the data returned by Butler is a fully constructed exposure. - ISR requires exposure-level image data for historical reasons, so if we did not recieve that from Butler, construct it from what we have, modifying the input in place. - Parameters: - inputExp : lsst.afw.image.Exposure,lsst.afw.image.DecoratedImageU, or
- lsst.afw.image.ImageF- The input data structure obtained from Butler. 
- camera : lsst.afw.cameraGeom.camera
- The camera associated with the image. Used to find the appropriate detector. 
- detectorNum : int
- The detector this exposure should match. 
 - Returns: - inputExp : lsst.afw.image.Exposure
- The re-constructed exposure, with appropriate detector parameters. 
 - Raises: - TypeError
- Raised if the input data cannot be used to construct an exposure. 
 
- inputExp : 
 - 
flatContext(exp, flat, dark=None)¶
- Context manager that applies and removes flats and darks, if the task is configured to apply them. - Parameters: - exp : lsst.afw.image.Exposure
- Exposure to process. 
- flat : lsst.afw.image.Exposure
- Flat exposure the same size as - exp.
- dark : lsst.afw.image.Exposure, optional
- Dark exposure the same size as - exp.
 - Yields: - exp : lsst.afw.image.Exposure
- The flat and dark corrected exposure. 
 
- exp : 
 - 
flatCorrection(exposure, flatExposure, invert=False)¶
- !Apply flat correction in place. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
- flatExposure : lsst.afw.image.Exposure
- Flat exposure of the same size as - exposure.
- invert : Bool, optional
- If True, unflatten an already flattened image. 
 - See also - lsst.ip.isr.isrFunctions.flatCorrection
- exposure : 
 - 
getAllSchemaCatalogs()¶
- Get schema catalogs for all tasks in the hierarchy, combining the results into a single dict. - Returns: - schemacatalogs : dict
- Keys are butler dataset type, values are a empty catalog (an instance of the appropriate lsst.afw.table Catalog type) for all tasks in the hierarchy, from the top-level task down through all subtasks. 
 - Notes - This method may be called on any task in the hierarchy; it will return the same answer, regardless. - The default implementation should always suffice. If your subtask uses schemas the override - Task.getSchemaCatalogs, not this method.
- schemacatalogs : 
 - 
classmethod getDatasetTypes(config, configClass)¶
- Return dataset type descriptors defined in task configuration. - This method can be used by other methods that need to extract dataset types from task configuration (e.g. - getInputDatasetTypesor sub-class methods).- Parameters: - config : Config
- Configuration for this task. Typically datasets are defined in a task configuration. 
- configClass : type
- Class of the configuration object which defines dataset type. 
 - Returns: - Dictionary where key is the name (arbitrary) of the output dataset
- and value is the `DatasetTypeDescriptor` instance. Default
- implementation uses configuration field name as dictionary key.
- Returns empty dict if configuration has no fields with the specified
- ``configClass``.
 
- config : 
 - 
getFullMetadata()¶
- Get metadata for all tasks. - Returns: - metadata : lsst.daf.base.PropertySet
- The - PropertySetkeys are the full task name. Values are metadata for the top-level task and all subtasks, sub-subtasks, etc..
 - Notes - The returned metadata includes timing information (if - @timer.timeMethodis used) and any metadata set by the task. The name of each item consists of the full task name with- .replaced by- :, followed by- .and the name of the item, e.g.:- topLevelTaskName:subtaskName:subsubtaskName.itemName - using - :in the full task name disambiguates the rare situation that a task has a subtask and a metadata item with the same name.
- metadata : 
 - 
getFullName()¶
- Get the task name as a hierarchical name including parent task names. - Returns: - fullName : str
- The full name consists of the name of the parent task and each subtask separated by periods. For example: - The full name of top-level task “top” is simply “top”.
- The full name of subtask “sub” of top-level task “top” is “top.sub”.
- The full name of subtask “sub2” of subtask “sub” of top-level task “top” is “top.sub.sub2”.
 
 
- fullName : 
 - 
classmethod getInitInputDatasetTypes(config)¶
- Return dataset type descriptors that can be used to retrieve the - initInputsconstructor argument.- Datasets used in initialization may not be associated with any Dimension (i.e. their data IDs must be empty dictionaries). - Default implementation finds all fields of type - InitInputInputDatasetConfigin configuration (non-recursively) and uses them for constructing- DatasetTypeDescriptorinstances. The names of these fields are used as keys in returned dictionary. Subclasses can override this behavior.- Parameters: - config : Config
- Configuration for this task. Typically datasets are defined in a task configuration. 
 - Returns: - Dictionary where key is the name (arbitrary) of the input dataset
- and value is the `DatasetTypeDescriptor` instance. Default
- implementation uses configuration field name as dictionary key.
- When the task requires no initialization inputs, should return an
- empty dict.
 
- config : 
 - 
classmethod getInitOutputDatasetTypes(config)¶
- Return dataset type descriptors that can be used to write the objects returned by - getOutputDatasets.- Datasets used in initialization may not be associated with any Dimension (i.e. their data IDs must be empty dictionaries). - Default implementation finds all fields of type - InitOutputDatasetConfigin configuration (non-recursively) and uses them for constructing- DatasetTypeDescriptorinstances. The names of these fields are used as keys in returned dictionary. Subclasses can override this behavior.- Parameters: - config : Config
- Configuration for this task. Typically datasets are defined in a task configuration. 
 - Returns: - Dictionary where key is the name (arbitrary) of the output dataset
- and value is the `DatasetTypeDescriptor` instance. Default
- implementation uses configuration field name as dictionary key.
- When the task produces no initialization outputs, should return an
- empty dict.
 
- config : 
 - 
getInitOutputDatasets()¶
- Return persistable outputs that are available immediately after the task has been constructed. - Subclasses that operate on catalogs should override this method to return the schema(s) of the catalog(s) they produce. - It is not necessary to return the PipelineTask’s configuration or other provenance information in order for it to be persisted; that is the responsibility of the execution system. - Returns: - datasets : dict
- Dictionary with keys that match those of the dict returned by - getInitOutputDatasetTypesvalues that can be written by calling- Butler.putwith those DatasetTypes and no data IDs. An empty- dictshould be returned by tasks that produce no initialization outputs.
 
- datasets : 
 - 
classmethod getInputDatasetTypes(config)¶
- Return input dataset type descriptors for this task. - Default implementation finds all fields of type - InputDatasetConfigin configuration (non-recursively) and uses them for constructing- DatasetTypeDescriptorinstances. The names of these fields are used as keys in returned dictionary. Subclasses can override this behavior.- Parameters: - config : Config
- Configuration for this task. Typically datasets are defined in a task configuration. 
 - Returns: - Dictionary where key is the name (arbitrary) of the input dataset
- and value is the `DatasetTypeDescriptor` instance. Default
- implementation uses configuration field name as dictionary key.
 
- config : 
 - 
getIsrExposure(dataRef, datasetType, immediate=True)¶
- !Retrieve a calibration dataset for removing instrument signature. - Parameters: - dataRef : daf.persistence.butlerSubset.ButlerDataRef
- DataRef of the detector data to find calibration datasets for. 
- datasetType : str
- Type of dataset to retrieve (e.g. ‘bias’, ‘flat’, etc). 
- immediate : Bool
- If True, disable butler proxies to enable error handling within this routine. 
 - Returns: - exposure : lsst.afw.image.Exposure
- Requested calibration frame. 
 - Raises: - RuntimeError
- Raised if no matching calibration frame can be found. 
 
- dataRef : 
 - 
classmethod getOutputDatasetTypes(config)¶
- Return output dataset type descriptors for this task. - Default implementation finds all fields of type - OutputDatasetConfigin configuration (non-recursively) and uses them for constructing- DatasetTypeDescriptorinstances. The keys of these fields are used as keys in returned dictionary. Subclasses can override this behavior.- Parameters: - config : Config
- Configuration for this task. Typically datasets are defined in a task configuration. 
 - Returns: - Dictionary where key is the name (arbitrary) of the output dataset
- and value is the `DatasetTypeDescriptor` instance. Default
- implementation uses configuration field name as dictionary key.
 
- config : 
 - 
getResourceConfig()¶
- Return resource configuration for this task. - Returns: - Object of type `~config.ResourceConfig` or ``None`` if resource
- configuration is not defined for this task.
 
 - 
getSchemaCatalogs()¶
- Get the schemas generated by this task. - Returns: - schemaCatalogs : dict
- Keys are butler dataset type, values are an empty catalog (an instance of the appropriate - lsst.afw.tableCatalog type) for this task.
 - See also - Task.getAllSchemaCatalogs- Notes - Warning - Subclasses that use schemas must override this method. The default implemenation returns an empty dict. - This method may be called at any time after the Task is constructed, which means that all task schemas should be computed at construction time, not when data is actually processed. This reflects the philosophy that the schema should not depend on the data. - Returning catalogs rather than just schemas allows us to save e.g. slots for SourceCatalog as well. 
- schemaCatalogs : 
 - 
getTaskDict()¶
- Get a dictionary of all tasks as a shallow copy. - Returns: - taskDict : dict
- Dictionary containing full task name: task object for the top-level task and all subtasks, sub-subtasks, etc.. 
 
- taskDict : 
 - 
makeDatasetType(dsConfig)¶
 - 
classmethod makeField(doc)¶
- Make a - lsst.pex.config.ConfigurableFieldfor this task.- Parameters: - doc : str
- Help text for the field. 
 - Returns: - configurableField : lsst.pex.config.ConfigurableField
- A - ConfigurableFieldfor this task.
 - Examples - Provides a convenient way to specify this task is a subtask of another task. - Here is an example of use: - class OtherTaskConfig(lsst.pex.config.Config) aSubtask = ATaskClass.makeField("a brief description of what this task does") 
- doc : 
 - 
makeSubtask(name, **keyArgs)¶
- Create a subtask as a new instance as the - nameattribute of this task.- Parameters: - name : str
- Brief name of the subtask. 
- keyArgs
- Extra keyword arguments used to construct the task. The following arguments are automatically provided and cannot be overridden: - “config”.
- “parentTask”.
 
 - Notes - The subtask must be defined by - Task.config.name, an instance of pex_config ConfigurableField or RegistryField.
- name : 
 - 
maskAmplifier(ccdExposure, amp, defects)¶
- Identify bad amplifiers, saturated and suspect pixels. - Parameters: - ccdExposure : lsst.afw.image.Exposure
- Input exposure to be masked. 
- amp : lsst.afw.table.AmpInfoCatalog
- Catalog of parameters defining the amplifier on this exposure to mask. 
- defects : list
- List of defects. Used to determine if the entire amplifier is bad. 
 - Returns: - badAmp : Bool
- If this is true, the entire amplifier area is covered by defects and unusable. 
 
- ccdExposure : 
 - 
maskAndInterpDefect(ccdExposure, defectBaseList)¶
- !Mask defects using mask plane “BAD” and interpolate over them, in place. - Parameters: - ccdExposure : lsst.afw.image.Exposure
- Exposure to process. 
- defectBaseList : List
- List of defects to mask and interpolate. 
 - Notes - Call this after CCD assembly, since defects may cross amplifier boundaries. 
- ccdExposure : 
 - 
maskAndInterpNan(exposure)¶
- !Mask NaNs using mask plane “UNMASKEDNAN” and interpolate over them, in place. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
 - Notes - We mask and interpolate over all NaNs, including those that are masked with other bits (because those may or may not be interpolated over later, and we want to remove all NaNs). Despite this behaviour, the “UNMASKEDNAN” mask plane is used to preserve the historical name. 
- exposure : 
 - 
measureBackground(exposure, IsrQaConfig=None)¶
- Measure the image background in subgrids, for quality control purposes. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
- IsrQaConfig : lsst.ip.isr.isrQa.IsrQaConfig
- Configuration object containing parameters on which background statistics and subgrids to use. 
 
- exposure : 
 - 
overscanCorrection(ccdExposure, amp)¶
- Apply overscan correction in place. - This method does initial pixel rejection of the overscan region. The overscan can also be optionally segmented to allow for discontinuous overscan responses to be fit separately. The actual overscan subtraction is performed by the - lsst.ip.isr.isrFunctions.overscanCorrectionfunction, which is called here after the amplifier is preprocessed.- Parameters: - ccdExposure : lsst.afw.image.Exposure
- Exposure to have overscan correction performed. 
- amp : lsst.afw.table.AmpInfoCatalog
- The amplifier to consider while correcting the overscan. 
 - Returns: - overscanResults : lsst.pipe.base.Struct
- Result struct with components: - - imageFit: scalar or- lsst.afw.image.Image- Value or fit subtracted from the amplifier image data. - overscanFit: scalar or- lsst.afw.image.Image
- Value or fit subtracted from the overscan image data. 
 
- overscanImage:- lsst.afw.image.Image
- Image of the overscan region with the overscan correction applied. This quantity is used to estimate the amplifier read noise empirically. 
 
 
 - Raises: - RuntimeError
- Raised if the - ampdoes not contain raw pixel information.
 - See also - lsst.ip.isr.isrFunctions.overscanCorrection
- ccdExposure : 
 - 
classmethod parseAndRun(args=None, config=None, log=None, doReturnResults=False)¶
- Parse an argument list and run the command. - Parameters: - args : list, optional
- config : lsst.pex.config.Config-type, optional
- Config for task. If - Noneuse- Task.ConfigClass.
- log : lsst.log.Log-type, optional
- Log. If - Noneuse the default log.
- doReturnResults : bool, optional
- If - True, return the results of this task. Default is- False. This is only intended for unit tests and similar use. It can easily exhaust memory (if the task returns enough data and you call it enough times) and it will fail when using multiprocessing if the returned data cannot be pickled.
 - Returns: - struct : lsst.pipe.base.Struct
- Fields are: - argumentParser: the argument parser.
- parsedCmd: the parsed command returned by the argument parser’s- lsst.pipe.base.ArgumentParser.parse_argsmethod.
- taskRunner: the task runner used to run the task (an instance of- Task.RunnerClass).
 
 - Notes - Calling this method with no arguments specified is the standard way to run a command-line task from the command-line. For an example see - pipe_tasks- bin/makeSkyMap.pyor almost any other file in that directory.- If one or more of the dataIds fails then this routine will exit (with a status giving the number of failed dataIds) rather than returning this struct; this behaviour can be overridden by specifying the - --noExitcommand-line option.
- args : 
 - 
readIsrData(dataRef, rawExposure)¶
- !Retrieve necessary frames for instrument signature removal. - Pre-fetching all required ISR data products limits the IO required by the ISR. Any conflict between the calibration data available and that needed for ISR is also detected prior to doing processing, allowing it to fail quickly. - Parameters: - dataRef : daf.persistence.butlerSubset.ButlerDataRef
- Butler reference of the detector data to be processed 
- rawExposure : afw.image.Exposure
- The raw exposure that will later be corrected with the retrieved calibration data; should not be modified in this method. 
 - Returns: - result : lsst.pipe.base.Struct
- Result struct with components (which may be - None): -- bias: bias calibration frame (- afw.image.Exposure) -- linearizer: functor for linearization (- ip.isr.linearize.LinearizeBase) -- crosstalkSources: list of possible crosstalk sources (- list) -- dark: dark calibration frame (- afw.image.Exposure) -- flat: flat calibration frame (- afw.image.Exposure) -- bfKernel: Brighter-Fatter kernel (- numpy.ndarray) -- defects: list of defects (- list) -- fringes:- lsst.pipe.base.Structwith components:- fringes: fringe calibration frame (- afw.image.Exposure)
- seed: random seed derived from the ccdExposureId for random
- number generator (uint32)
 
 - opticsTransmission:- lsst.afw.image.TransmissionCurve
- A - TransmissionCurvethat represents the throughput of the optics, to be evaluated in focal-plane coordinates.
 
- filterTransmission:- lsst.afw.image.TransmissionCurve
- A - TransmissionCurvethat represents the throughput of the filter itself, to be evaluated in focal-plane coordinates.
 
- sensorTransmission:- lsst.afw.image.TransmissionCurve
- A - TransmissionCurvethat represents the throughput of the sensor itself, to be evaluated in post-assembly trimmed detector coordinates.
 
- atmosphereTransmission:- lsst.afw.image.TransmissionCurve
- A - TransmissionCurvethat represents the throughput of the atmosphere, assumed to be spatially constant.
 
 
 
- dataRef : 
 - 
roughZeroPoint(exposure)¶
- Set an approximate magnitude zero point for the exposure. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
 
- exposure : 
 - 
run(ccdExposure, bias=None, linearizer=None, dark=None, flat=None, defects=None, fringes=None, bfKernel=None, camera=None, **kwds)¶
- Perform instrument signature removal on an exposure - Steps include: - Detect saturation, apply overscan correction, bias, dark and flat - Perform CCD assembly - Interpolate over defects, saturated pixels and all NaNs - Persist the ISR-corrected exposure as “postISRCCD” if config.doWrite is True- Parameters: - ccdExposure : lsst.afw.image.Exposure
- Detector data. 
- bias : lsst.afw.image.exposure
- Exposure of bias frame. 
- linearizer : lsst.ip.isr.LinearizeBasecallable
- Linearizing functor; a subclass of lsst.ip.isr.LinearizeBase. 
- dark : lsst.afw.image.exposure
- Exposure of dark frame. 
- flat : lsst.afw.image.exposure
- Exposure of flatfield. 
- defects : list
- list of detects 
- fringes : lsst.afw.image.exposureorlistoflsst.afw.image.exposure
- exposure of fringe frame or list of fringe exposure 
- bfKernel : None
- kernel used for brighter-fatter correction; currently unsupported 
- camera : lsst.afw.cameraGeom.Camera
- Camera geometry, used by addDistortionModel. 
- **kwds : dict
- additional kwargs forwarded to IsrTask.run. 
 - Returns: - struct : lsst.pipe.base.Structwith fields:
- exposure: the exposure after application of ISR
 
 
- ccdExposure : 
 - 
runDataRef(sensorRef)¶
- Perform instrument signature removal on a ButlerDataRef of a Sensor. - This method contains the - CmdLineTaskinterface to the ISR processing. All IO is handled here, freeing the- run()method to manage only pixel-level calculations. The steps performed are: - Read in necessary detrending/isr/calibration data. - Process raw exposure in- run(). - Persist the ISR-corrected exposure as “postISRCCD” ifconfig.doWrite=True.- Parameters: - sensorRef : daf.persistence.butlerSubset.ButlerDataRef
- DataRef of the detector data to be processed 
 - Returns: - result : lsst.pipe.base.Struct
- Result struct with component: - - exposure:- afw.image.Exposure- The fully ISR corrected exposure. 
 - Raises: - RuntimeError
- Raised if a configuration option is set to True, but the required calibration data does not exist. 
 
- sensorRef : 
 - 
runQuantum(quantum, butler)¶
- Execute PipelineTask algorithm on single quantum of data. - Typical implementation of this method will use inputs from quantum to retrieve Python-domain objects from data butler and call - adaptArgsAndRunmethod on that data. On return from- adaptArgsAndRunthis method will extract data from returned- Structinstance and save that data to butler.- The - Structreturned from- adaptArgsAndRunis expected to contain data attributes with the names equal to the names of the configuration fields defining output dataset types. The values of the data attributes must be data objects corresponding to the DataIds of output dataset types. All data objects will be saved in butler using DataRefs from Quantum’s output dictionary.- This method does not return anything to the caller, on errors corresponding exception is raised. - Parameters: - quantum : Quantum
- Object describing input and output corresponding to this invocation of PipelineTask instance. 
- butler : object
- Data butler instance. 
 - Raises: - `ScalarError` if a dataset type is configured as scalar but receives
- multiple DataIds in `quantum`. Any exceptions that happen in data
- butler or in `adaptArgsAndRun` method.
 
- quantum : 
 - 
saturationDetection(exposure, amp)¶
- !Detect saturated pixels and mask them using mask plane config.saturatedMaskName, in place. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. Only the amplifier DataSec is processed. 
- amp : lsst.afw.table.AmpInfoCatalog
- Amplifier detector data. 
 - See also - lsst.ip.isr.isrFunctions.makeThresholdMask
- exposure : 
 - 
saturationInterpolation(ccdExposure)¶
- !Interpolate over saturated pixels, in place. - This method should be called after - saturationDetection, to ensure that the saturated pixels have been identified in the SAT mask. It should also be called after- assembleCcd, since saturated regions may cross amplifier boundaries.- Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. 
 - See also - lsst.ip.isr.isrTask.saturationDetection,- lsst.ip.isr.isrFunctions.interpolateFromMask
- exposure : 
 - 
saveStruct(struct, outputDataRefs, butler)¶
- Save data in butler. - Convention is that struct returned from - run()method has data field(s) with the same names as the config fields defining output DatasetTypes. Subclasses may override this method to implement different convention for- Structcontent or in case any post-processing of data may be needed.- Parameters: - struct : Struct
- Data produced by the task packed into - Structinstance
- outputDataRefs : dict
- Dictionary whose keys are the names of the configuration fields describing output dataset types and values are lists of DataRefs. DataRefs must match corresponding data objects in - structin number and order.
- butler : object
- Data butler instance. 
 
- struct : 
 - 
setValidPolygonIntersect(ccdExposure, fpPolygon)¶
- !Set the valid polygon as the intersection of fpPolygon and the ccd corners. - Parameters: - ccdExposure : lsst.afw.image.Exposure
- Exposure to process. 
- fpPolygon : lsst.afw.geom.Polygon
- Polygon in focal plane coordinates. 
 
- ccdExposure : 
 - 
suspectDetection(exposure, amp)¶
- !Detect suspect pixels and mask them using mask plane config.suspectMaskName, in place. - Parameters: - exposure : lsst.afw.image.Exposure
- Exposure to process. Only the amplifier DataSec is processed. 
- amp : lsst.afw.table.AmpInfoCatalog
- Amplifier detector data. 
 - See also - lsst.ip.isr.isrFunctions.makeThresholdMask- Notes - Suspect pixels are pixels whose value is greater than amp.getSuspectLevel(). This is intended to indicate pixels that may be affected by unknown systematics; for example if non-linearity corrections above a certain level are unstable then that would be a useful value for suspectLevel. A value of - nanindicates that no such level exists and no pixels are to be masked as suspicious.
- exposure : 
 - 
timer(name, logLevel=10000)¶
- Context manager to log performance data for an arbitrary block of code. - Parameters: - name : str
- Name of code being timed; data will be logged using item name: - Startand- End.
- logLevel
- A - lsst.loglevel constant.
 - See also - timer.logInfo- Examples - Creating a timer context: - with self.timer("someCodeToTime"): pass # code to time 
- name : 
 - 
updateVariance(ampExposure, amp, overscanImage=None)¶
- Set the variance plane using the amplifier gain and read noise - The read noise is calculated from the - overscanImageif the- doEmpiricalReadNoiseoption is set in the configuration; otherwise the value from the amplifier data is used.- Parameters: - ampExposure : lsst.afw.image.Exposure
- Exposure to process. 
- amp : lsst.afw.table.AmpInfoRecordorFakeAmp
- Amplifier detector data. 
- overscanImage : lsst.afw.image.MaskedImage, optional.
- Image of overscan, required only for empirical read noise. 
 - See also - lsst.ip.isr.isrFunctions.updateVariance
- ampExposure : 
 - 
writeConfig(butler, clobber=False, doBackup=True)¶
- Write the configuration used for processing the data, or check that an existing one is equal to the new one if present. - Parameters: - butler : lsst.daf.persistence.Butler
- Data butler used to write the config. The config is written to dataset type - CmdLineTask._getConfigName.
- clobber : bool, optional
- A boolean flag that controls what happens if a config already has been saved: - - True: overwrite or rename the existing config, depending on- doBackup. -- False: raise- TaskErrorif this config does not match the existing config.
- doBackup : bool, optional
- Set to - Trueto backup the config files if clobbering.
 
- butler : 
 - 
writeMetadata(dataRef)¶
- Write the metadata produced from processing the data. - Parameters: - dataRef
- Butler data reference used to write the metadata. The metadata is written to dataset type - CmdLineTask._getMetadataName.
 
 - 
writePackageVersions(butler, clobber=False, doBackup=True, dataset='packages')¶
- Compare and write package versions. - Parameters: - butler : lsst.daf.persistence.Butler
- Data butler used to read/write the package versions. 
- clobber : bool, optional
- A boolean flag that controls what happens if versions already have been saved: - - True: overwrite or rename the existing version info, depending on- doBackup. -- False: raise- TaskErrorif this version info does not match the existing.
- doBackup : bool, optional
- If - Trueand clobbering, old package version files are backed up.
- dataset : str, optional
- Name of dataset to read/write. 
 - Raises: - TaskError
- Raised if there is a version mismatch with current and persisted lists of package versions. 
 - Notes - Note that this operation is subject to a race condition. 
- butler : 
 - 
writeSchemas(butler, clobber=False, doBackup=True)¶
- Write the schemas returned by - lsst.pipe.base.Task.getAllSchemaCatalogs.- Parameters: - butler : lsst.daf.persistence.Butler
- Data butler used to write the schema. Each schema is written to the dataset type specified as the key in the dict returned by - getAllSchemaCatalogs.
- clobber : bool, optional
- A boolean flag that controls what happens if a schema already has been saved: - - True: overwrite or rename the existing schema, depending on- doBackup. -- False: raise- TaskErrorif this schema does not match the existing schema.
- doBackup : bool, optional
- Set to - Trueto backup the schema files if clobbering.
 - Notes - If - clobberis- Falseand an existing schema does not match a current schema, then some schemas may have been saved successfully and others may not, and there is no easy way to tell which is which.
- butler : 
 
-