示例#1
0
 def onProcessStackFinished(self):
     _logger.debug("Stack proccessed")
     self._status = "Stack Fitting finished"
     if self.fixedLenghtOutput:
         self._status = "Writing output files"
         nParameters = len(self._parameters)
         datalist = [None] * (2 * len(self._sigmas.keys()) + 1)
         labels = []
         for i in range(nParameters):
             parameter = self._parameters[i]
             datalist[2 * i] = self._images[parameter]
             datalist[2 * i + 1] = self._sigmas[parameter]
             labels.append(parameter)
             labels.append('s(%s)' % parameter)
         datalist[-1] = self._images['chisq']
         labels.append('chisq')
         filenames = self.getOutputFileNames()
         csvName = filenames['csv']
         edfName = filenames['edf']
         ArraySave.save2DArrayListAsASCII(datalist,
                                          csvName,
                                          labels=labels,
                                          csv=True,
                                          csvseparator=";")
         ArraySave.save2DArrayListAsEDF(datalist,
                                        edfName,
                                        labels=labels,
                                        dtype=numpy.float32)
示例#2
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 def saveStackAsSimplestHDF5(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     view = self._getCroppedView()
     ArraySave.save3DArrayAsHDF5(view, filename,
                                 labels = None, dtype=None, mode='simplest')
示例#3
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 def onProcessStackFinished(self):
     _logger.debug("Stack proccessed")
     self._status = "Stack Fitting finished"
     if self.fixedLenghtOutput:
         self._status = "Writing output files"
         nParameters = len(self._parameters)
         datalist = [None] * (2*len(self._sigmas.keys())+1)
         labels = []
         for i in range(nParameters):
             parameter = self._parameters[i]
             datalist[2*i] = self._images[parameter]
             datalist[2*i + 1] = self._sigmas[parameter]
             labels.append(parameter)
             labels.append('s(%s)' % parameter)
         datalist[-1] = self._images['chisq']
         labels.append('chisq')
         filenames = self.getOutputFileNames()
         csvName = filenames['csv']
         edfName = filenames['edf']
         ArraySave.save2DArrayListAsASCII(datalist,
                                          csvName,
                                          labels=labels,
                                          csv=True,
                                          csvseparator=";")
         ArraySave.save2DArrayListAsEDF(datalist,
                                        edfName,
                                        labels = labels,
                                        dtype=numpy.float32)
示例#4
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    def saveAllSpectra(self):
        fltrs = ['Raw ASCII *.txt',
                 '","-separated CSV *.csv',
                 '";"-separated CSV *.csv',
                 '"tab"-separated CSV *.csv',
                 'OMNIC CSV *.csv']
        message = "Enter file name to be used as root"
        fileList, fileFilter = PyMcaFileDialogs.getFileList(parent=self,
                                                            filetypelist=fltrs,
                                                            message=message,
                                                            currentdir=None,
                                                            mode="SAVE",
                                                            getfilter=True,
                                                            single=True,
                                                            currentfilter=None,
                                                            native=None)
        if not len(fileList):
            return

        fileroot = fileList[0]
        dirname = os.path.dirname(fileroot)
        root, ext = os.path.splitext(os.path.basename(fileroot))
        if ext not in [".txt", ".csv"]:
            root = root + ext
            ext = ""

        # get appropriate extensions and separators
        filterused = fileFilter.split()
        if filterused[0].startswith("Raw"):
            csv = False
            ext = "txt"
            csvseparator = "  "
        elif filterused[0].startswith("OMNIC"):
            # extension is csv but saved as ASCII
            csv = False
            ext = "csv"
            csvseparator = ","        
        else:
            csv = True
            ext = "csv"
            if "," in filterused[0]:
                csvseparator = ","
            elif ";" in filterused[0]:
                csvseparator = ";"
            elif "OMNIC" in filterused[0]:
                csvseparator = ","
            else:
                csvseparator = "\t"

        nSpectra = len(self.spectrumList)
        n = int(numpy.log10(nSpectra)) + 1
        fmt = "_%" + "0%dd" % n + ".%s"
        for index in range(nSpectra):
            legend = self.spectrumNames[index]
            x = self.xValues[index]
            y = self.spectrumList[index]
            filename = os.path.join(dirname, root + fmt % (index, ext))
            ArraySave.saveXY(x, y, filename, ylabel=legend,
                             csv=csv, csvseparator=csvseparator)
示例#5
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 def saveStackAsSimpleHDF5(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     ArraySave.save3DArrayAsHDF5(self._stack.data,
                                 filename,
                                 labels=None,
                                 dtype=None,
                                 mode='simple')
示例#6
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 def saveStackAsNeXusPlus(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     ArraySave.save3DArrayAsHDF5(self._stack.data,
                                 filename,
                                 labels=None,
                                 dtype=None,
                                 mode='nexus+')
示例#7
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 def saveStackAsSimplestHDF5(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     view = self._getCroppedView()
     ArraySave.save3DArrayAsHDF5(view,
                                 filename,
                                 labels=None,
                                 dtype=None,
                                 mode='simplest')
示例#8
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    def saveStackAsNeXus(self,
                         dtype=None,
                         interpretation=None,
                         compression=False):
        mcaIndex = self._stack.info.get('McaIndex', -1)
        if interpretation is None:
            if mcaIndex in [0]:
                interpretation = "image"
            else:
                interpretation = "spectrum"
        if interpretation not in ["spectrum", "image"]:
            raise ValueError("Unknown data interpretation %s" % interpretation)
        filename = self._getOutputHDF5Filename()
        if not len(filename):
            return

        # get only the seen stack portion
        view = self._getCroppedView()

        # the current graph axis is saved
        axes = [None] * len(self._stack.data.shape)
        labels = [None] * len(self._stack.data.shape)
        try:
            xLabel = qt.safe_str(self.mcaWidget.graph.getGraphXLabel())
        except:
            xLabel = None
        try:
            xData, y, legend, info = self.mcaWidget.getActiveCurve()[:4]
        except:
            xData = self._mcaData0.x[0]
            xLabel = 'Channels'
        if interpretation == 'image':
            labels[0] = xLabel
            axes[0] = xData
        else:
            labels[-1] = xLabel
            axes[-1] = xData
        try:
            ArraySave.save3DArrayAsHDF5(view,
                                        filename,
                                        axes=axes,
                                        labels=labels,
                                        dtype=dtype,
                                        mode='nexus',
                                        mcaindex=mcaIndex,
                                        interpretation=interpretation,
                                        compression=compression)
        except:
            msg = qt.QMessageBox(self)
            msg.setIcon(qt.QMessageBox.Critical)
            msg.setWindowTitle("Save error")
            msg.setText("An error has occured while saving the data:")
            msg.setInformativeText(qt.safe_str(sys.exc_info()[1]))
            msg.setDetailedText(traceback.format_exc())
            msg.exec_()
    def _saveSlot(self):
        if self.outputDir is None:
            if self.inputDir is not None:
                self.outputDir = self.inputDir
            else:
                self.outputDir = PyMcaDirs.outputDir
        wdir = self.outputDir
        format_list = ['";"-separated CSV *.csv',
                       '","-separated CSV *.csv',
                       '"tab"-separated CSV *.csv']
        if self.outputFilter is None:
            self.outputFilter = format_list[0]
        outfile, filterused = PyMcaFileDialogs.getFileList(self,
                                        filetypelist=format_list,
                                        mode="SAVE",
                                        message="Output File Selection",
                                        currentdir=wdir,
                                        currentfilter=self.outputFilter,
                                        getfilter=True,
                                        single=True)
        if len(outfile):
            outputFile = qt.safe_str(outfile[0])
        else:
            return
        self.outputFilter = qt.safe_str(filterused)
        filterused = self.outputFilter.split()
        try:
            self.outputDir  = os.path.dirname(outputFile)
            PyMcaDirs.outputDir = os.path.dirname(outputFile)
        except:
            self.outputDir  = "."
        if not outputFile.endswith('.csv'):
            outputFile += '.csv'
        #always overwrite
        if "," in filterused[0]:
            csv = ","
        elif ";" in filterused[0]:
            csv = ";"
        else:
            csv = "\t"

        ddict = self.getTransmissionTable()
        x = ddict["energy"]
        y = ddict["transmission"]

        try:
            ArraySave.saveXY(x, y, outputFile,
                             xlabel="Energy", ylabel="Transmission",
                             csv=True, csvseparator=csv)
        except IOError:
            msg = qt.QMessageBox(self)
            msg.setIcon(qt.QMessageBox.Critical)
            msg.setText("Input Output Error: %s" % (sys.exc_info()[1]))
            msg.exec()
            return
示例#10
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    def saveStackAsNeXus(self, dtype=None, interpretation=None, compression=False):
        mcaIndex = self._stack.info.get('McaIndex', -1)
        if interpretation is None:
            if mcaIndex in [0]:
                interpretation = "image"
            else:
                interpretation = "spectrum"
        if interpretation not in ["spectrum", "image"]:
            raise ValueError("Unknown data interpretation %s" % interpretation)
        filename = self._getOutputHDF5Filename()
        if not len(filename):
            return

        # get only the seen stack portion
        view = self._getCroppedView()

        # the current graph axis is saved
        axes = [None] * len(self._stack.data.shape)
        labels = [None] * len(self._stack.data.shape)
        try:
            xLabel = qt.safe_str(self.mcaWidget.graph.getGraphXLabel())
        except:
            xLabel = None
        try:
            xData, y, legend, info = self.mcaWidget.getActiveCurve()[:4]
        except:
            xData = self._mcaData0.x[0]
            xLabel = 'Channels'
        if interpretation == 'image':
            labels[0] = xLabel
            axes[0] = xData
        else:
            labels[-1] = xLabel
            axes[-1] = xData
        try:
            ArraySave.save3DArrayAsHDF5(view,
                                    filename,
                                    axes=axes,
                                    labels=labels,
                                    dtype=dtype,
                                    mode='nexus',
                                    mcaindex=mcaIndex,
                                    interpretation=interpretation,
                                    compression=compression)
        except:
            msg = qt.QMessageBox(self)
            msg.setIcon(qt.QMessageBox.Critical)
            msg.setWindowTitle("Save error")
            msg.setText("An error has occured while saving the data:")
            msg.setInformativeText(qt.safe_str(sys.exc_info()[1]))
            msg.setDetailedText(traceback.format_exc())
            msg.exec_()
示例#11
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 def finishHDF5File(self, hdf):
     #add final date
     toplevelEntry = hdf["entry_000"]
     toplevelEntry['end_time'] = numpy.string_(
         ArraySave.getDate().encode('utf-8'))
     hdf.flush()
     hdf.close()
示例#12
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    def saveStackAsMonochromaticTiffImages(self, dtype=None):
        if dtype is None:
            dtype = self._stack.data.dtype
        if dtype in [numpy.uint32, numpy.uint64]:
            dtype = numpy.float32
        elif dtype in [numpy.int32, numpy.int64]:
            dtype = numpy.float32

        mcaIndex = self._stack.info.get('McaIndex', -1)

        filename = self._getOutputTiffFilename()
        if not len(filename):
            return

        ArraySave.save3DArrayAsMonochromaticTiff(self._stack.data,
                                    filename,
                                    labels = None,
                                    dtype=dtype,
                                    mcaindex=mcaIndex)
示例#13
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    def saveStackAsMonochromaticTiffImages(self, dtype=None):
        if dtype is None:
            dtype = self._stack.data.dtype
        if dtype in [numpy.uint32, numpy.uint64]:
            dtype = numpy.float32
        elif dtype in [numpy.int32, numpy.int64]:
            dtype = numpy.float32

        mcaIndex = self._stack.info.get('McaIndex', -1)

        filename = self._getOutputTiffFilename()
        if not len(filename):
            return

        ArraySave.save3DArrayAsMonochromaticTiff(self._stack.data,
                                    filename,
                                    labels = None,
                                    dtype=dtype,
                                    mcaindex=mcaIndex)
示例#14
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    def initializeHDF5File(self, fname):
        # for the time being overwriting
        if os.path.exists(fname):
            os.remove(fname)
        hdf = h5py.File(fname, "w")
        entryName = "entry_000"
        nxEntry = hdf.require_group(entryName)
        if "NX_class" not in nxEntry.attrs:
            nxEntry.attrs["NX_class"] = "NXentry".encode("utf-8")
        nxEntry["title"] = numpy.string_("PyMca saved 3D Array".encode("utf-8"))
        nxEntry["start_time"] = numpy.string_(ArraySave.getDate().encode("utf-8"))

        alignmentGroup = nxEntry.require_group("Alignment")
        dataGroup = nxEntry.require_group("Data")
        dataGroup.attrs["NX_class"] = "NXdata".encode("utf-8")
        return hdf
示例#15
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    def initializeHDF5File(self, fname):
        #for the time being overwriting
        if os.path.exists(fname):
            os.remove(fname)
        hdf = h5py.File(fname, 'w')
        entryName = "entry_000"
        nxEntry = hdf.require_group(entryName)
        if 'NX_class' not in nxEntry.attrs:
            nxEntry.attrs['NX_class'] = 'NXentry'.encode('utf-8')
        nxEntry['title'] = numpy.string_("PyMca saved 3D Array".encode('utf-8'))
        nxEntry['start_time'] = numpy.string_(ArraySave.getDate().encode('utf-8'))

        alignmentGroup = nxEntry.require_group('Alignment')
        dataGroup = nxEntry.require_group('Data')
        dataGroup.attrs['NX_class'] = 'NXdata'.encode('utf-8')
        return hdf
示例#16
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        def _handleSaveIcon(self, event):
            """Handle save icon events.

            Get current active image and save it as a file.
            """
            if event['event'] == 'iconClicked' and event['key'] == 'save':
                imageData = self.getActiveImage()
                if imageData is None:
                    qt.QMessageBox.information(self, "No Data",
                                               "No image to be saved")
                    return
                data, legend, info, pixmap = imageData
                imageList = [data]
                labels = ['value']

                # Copied from MaskImageWidget.saveImageList
                filename = self.getOutputFileName()
                if not len(filename):
                    return

                # Add PNG and JPG adapted from PlotWindow.defaultSaveAction
                if 'WIDGET' in self._saveFilter.upper():
                    fformat = self._saveFilter[-3:].upper()
                    pixmap = qt.QPixmap.grabWidget(self._imagePlot)
                    # Use the following instead to grab the image + histograms
                    # pixmap = qt.QPixmap.grabWidget(self)
                    if not pixmap.save(filename, fformat):
                        msg = qt.QMessageBox(self)
                        msg.setIcon(qt.QMessageBox.Critical)
                        msg.setInformativeText(str(sys.exc_info()[1]))
                        msg.setDetailedText(traceback.format_exc())
                        msg.exec_()
                    return

                if filename.lower().endswith(".edf"):
                    ArraySave.save2DArrayListAsEDF(imageList, filename, labels)
                elif filename.lower().endswith(".csv"):
                    if "," in self._saveFilter:
                        csvseparator = ","
                    elif ";" in self._saveFilter:
                        csvseparator = ";"
                    else:
                        csvseparator = "\t"
                    ArraySave.save2DArrayListAsASCII(imageList, filename, labels,
                                                     csv=True,
                                                     csvseparator=csvseparator)
                else:
                    ArraySave.save2DArrayListAsASCII(imageList, filename, labels,
                                                     csv=False)
示例#17
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    def saveImageList(self, filename, imageList, labels,
                      csvseparator=None):
        if not imageList:
            qt.QMessageBox.information(
                    self,
                    "No Data",
                    "Image list is empty.\nNothing to be saved")
            return

        if filename.lower().endswith(".edf"):
            ArraySave.save2DArrayListAsEDF(imageList, filename, labels)
        elif filename.lower().endswith(".tif"):
            ArraySave.save2DArrayListAsMonochromaticTiff(imageList,
                                                         filename,
                                                         labels)
        elif filename.lower().endswith(".csv"):
            assert csvseparator is not None
            ArraySave.save2DArrayListAsASCII(imageList, filename, labels,
                                             csv=True,
                                             csvseparator=csvseparator)
        else:
            ArraySave.save2DArrayListAsASCII(imageList, filename, labels,
                                             csv=False)
示例#18
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    def saveImageList(self, filename, imageList, labels, csvseparator=None):
        if not imageList:
            qt.QMessageBox.information(
                self, "No Data", "Image list is empty.\nNothing to be saved")
            return

        if filename.lower().endswith(".edf"):
            ArraySave.save2DArrayListAsEDF(imageList, filename, labels)
        elif filename.lower().endswith(".tif"):
            ArraySave.save2DArrayListAsMonochromaticTiff(
                imageList, filename, labels)
        elif filename.lower().endswith(".csv"):
            assert csvseparator is not None
            ArraySave.save2DArrayListAsASCII(imageList,
                                             filename,
                                             labels,
                                             csv=True,
                                             csvseparator=csvseparator)
        else:
            ArraySave.save2DArrayListAsASCII(imageList,
                                             filename,
                                             labels,
                                             csv=False)
示例#19
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    def _threadFinished(self):
        result = self.thread.result
        self.thread = None
        if type(result) == type((1, )):
            #if we receive a tuple there was an error
            if len(result):
                if result[0] == "Exception":
                    # somehow this exception is not caught
                    raise Exception(result[1], result[2])  #, result[3])
                    return
        if 'concentrations' in result:
            imageNames = result['names']
            images = numpy.concatenate(
                (result['parameters'], result['concentrations']), axis=0)
        else:
            images = result['parameters']
            imageNames = result['names']
        nImages = images.shape[0]
        self._widget = StackPluginResultsWindow.StackPluginResultsWindow(\
                                        usetab=False)
        self._widget.buildAndConnectImageButtonBox(replace=True, multiple=True)
        qt = StackPluginResultsWindow.qt
        self._widget.sigMaskImageWidgetSignal.connect(self.mySlot)
        self._widget.setStackPluginResults(images, image_names=imageNames)
        self._showWidget()

        # save to output directory
        parameters = self.configurationWidget.getParameters()
        outputDir = parameters["output_dir"]
        if outputDir in [None, ""]:
            if DEBUG:
                print("Nothing to be saved")
                return
        if parameters["file_root"] is None:
            fileRoot = ""
        else:
            fileRoot = parameters["file_root"].replace(" ", "")
        if fileRoot in [None, ""]:
            fileRoot = "images"
        if not os.path.exists(outputDir):
            os.mkdir(outputDir)
        imagesDir = os.path.join(outputDir, "IMAGES")
        if not os.path.exists(imagesDir):
            os.mkdir(imagesDir)
        imageList = [None] * (nImages + len(result['uncertainties']))
        fileImageNames = [None] * (nImages + len(result['uncertainties']))
        j = 0
        for i in range(nImages):
            name = imageNames[i].replace(" ", "-")
            fileImageNames[j] = name
            imageList[j] = images[i]
            j += 1
            if not imageNames[i].startswith("C("):
                # fitted parameter
                fileImageNames[j] = "s(%s)" % name
                imageList[j] = result['uncertainties'][i]
                j += 1
        fileName = os.path.join(imagesDir, fileRoot + ".edf")
        ArraySave.save2DArrayListAsEDF(imageList,
                                       fileName,
                                       labels=fileImageNames)
        fileName = os.path.join(imagesDir, fileRoot + ".csv")
        ArraySave.save2DArrayListAsASCII(imageList,
                                         fileName,
                                         csv=True,
                                         labels=fileImageNames)
        if parameters["tiff"]:
            i = 0
            for i in range(len(fileImageNames)):
                label = fileImageNames[i]
                if label.startswith("s("):
                    continue
                elif label.startswith("C("):
                    mass_fraction = "_" + label[2:-1] + "_mass_fraction"
                else:
                    mass_fraction = "_" + label
                fileName = os.path.join(imagesDir,
                                        fileRoot + mass_fraction + ".tif")
                ArraySave.save2DArrayListAsMonochromaticTiff(
                    [imageList[i]],
                    fileName,
                    labels=[label],
                    dtype=numpy.float32)
示例#20
0
    def loadFileList(self, filelist, fileindex=0, shape=None):
        if type(filelist) == type(''):
            filelist = [filelist]
        self.__keyList = []
        self.sourceName = filelist
        self.__indexedStack = True
        self.sourceType = SOURCE_TYPE
        self.info = {}
        self.nbFiles = len(filelist)

        # read first file
        # get information
        tempInstance = SpecFileDataSource.SpecFileDataSource(filelist[0])
        keylist = tempInstance.getSourceInfo()['KeyList']
        nscans = len(keylist)  # that is the number of scans
        nmca = 0
        numberofdetectors = 0
        for key in keylist:
            info = tempInstance.getKeyInfo(key)
            numberofmca = info['NbMca']
            if numberofmca > 0:
                numberofdetectors = info['NbMcaDet']
            scantype = info["ScanType"]
            if numberofmca:
                nmca += numberofmca
        if numberofdetectors == 0:
            raise ValueError("No MCA found in file %s" % filelist[0])

        if (nscans > 1) and ((nmca // numberofdetectors) == nscans):
            SLOW_METHOD = True
        else:
            SLOW_METHOD = False
        # get last mca of first point
        key = "%s.1.%s" % (keylist[-1], numberofmca)
        dataObject = tempInstance._getMcaData(key)
        self.info.update(dataObject.info)
        arrRet = dataObject.data
        self.onBegin(self.nbFiles * nmca // numberofdetectors)

        self.incrProgressBar = 0
        if info['NbMcaDet'] > 1:
            # Should I generate a map for each mca and not just for the last one as I am doing?
            iterlist = range(info['NbMcaDet'], info['NbMca'] + 1,
                             info['NbMcaDet'])
        else:
            iterlist = [1]
        if SLOW_METHOD and shape is None:
            self.data = numpy.zeros(
                (self.nbFiles, nmca // numberofdetectors, arrRet.shape[0]),
                arrRet.dtype.char)
            nTimes = self.nbFiles * (nmca // numberofdetectors)
            filecounter = 0
            for key in ["McaLiveTime", "McaElapsedTime"]:
                if key in dataObject.info:
                    self.info[key] = numpy.zeros((nTimes, ), numpy.float32)

            # positioners
            key = "MotorNames"
            positioners = None
            if key in dataObject.info:
                positioners = {}
                for mne in dataObject.info[key]:
                    positioners[mne] = numpy.zeros((nTimes, ), numpy.float32)

            nTimes = -1
            for tempFileName in filelist:
                tempInstance = SpecFileDataSource.SpecFileDataSource(
                    tempFileName)
                mca_number = -1
                for keyindex in keylist:
                    info = tempInstance.getKeyInfo(keyindex)
                    numberofmca = info['NbMca']
                    if numberofmca <= 0:
                        continue
                    # the positioners are for all the mca in the scan

                    # only the last mca is read
                    key = "%s.1.%s" % (keyindex, numberofmca)
                    dataObject = tempInstance._getMcaData(key)
                    arrRet = dataObject.data
                    mca_number += 1
                    nTimes += 1
                    for i in iterlist:
                        # mcadata = scan_obj.mca(i)
                        self.data[filecounter, mca_number, :] = arrRet[:]
                        self.incrProgressBar += 1
                        for timeKey in ["McaElapsedTime", "McaLiveTime"]:
                            if timeKey in dataObject.info:
                                self.info[timeKey][nTimes] = \
                                    dataObject.info[timeKey]

                        if positioners and "MotorNames" in dataObject.info:
                            for mne in positioners:
                                if mne in dataObject.info["MotorNames"]:
                                    mneIdx = \
                                           dataObject.info["MotorNames"].index(mne)
                                    positioners[mne][nTimes] = \
                                             dataObject.info["MotorValues"][mneIdx]
                        self.onProgress(self.incrProgressBar)
                filecounter += 1
            if positioners:
                self.info["positioners"] = positioners
        elif shape is None and (self.nbFiles == 1) and (iterlist == [1]):
            # it can only be here if there is one file
            # it can only be here if there is only one scan
            # it can only be here if there is only one detector
            self.data = numpy.zeros((1, numberofmca, arrRet.shape[0]),
                                    arrRet.dtype.char)
            # when reading fast we do not read the time information
            # therefore we have to remove it from the info
            self._cleanupTimeInfo()
            for tempFileName in filelist:
                tempInstance = specfile.Specfile(tempFileName)
                # it can only be here if there is one scan per file
                # prevent problems if the scan number is different
                # scan = tempInstance.select(keylist[-1])
                scan = tempInstance[-1]
                iterationList = range(scan.nbmca())
                for i in iterationList:
                    # mcadata = scan_obj.mca(i)
                    self.data[0, i, :] = scan.mca(i + 1)[:]
                    self.incrProgressBar += 1
                    self.onProgress(self.incrProgressBar)
                filecounter = 1
        elif shape is None:
            # it can only be here if there is one scan per file
            # when reading fast we do not read the time information
            # therefore we have to remove it from the info
            self._cleanupTimeInfo()
            try:
                self.data = numpy.zeros(
                    (self.nbFiles, numberofmca // numberofdetectors,
                     arrRet.shape[0]), arrRet.dtype.char)
                filecounter = 0
                for tempFileName in filelist:
                    tempInstance = specfile.Specfile(tempFileName)
                    # it can only be here if there is one scan per file
                    # prevent problems if the scan number is different
                    # scan = tempInstance.select(keylist[-1])
                    scan = tempInstance[-1]
                    for i in iterlist:
                        # mcadata = scan_obj.mca(i)
                        self.data[filecounter, 0, :] = scan.mca(i)[:]
                        self.incrProgressBar += 1
                        self.onProgress(self.incrProgressBar)
                    filecounter += 1
            except MemoryError:
                qtflag = False
                if ('PyQt4.QtCore' in sys.modules) or \
                   ('PySide' in sys.modules) or \
                   ('PyMca5.PyMcaGui.PyMcaQt' in sys.modules):
                    qtflag = True
                hdf5done = False
                if HDF5 and qtflag:
                    from PyMca5.PyMcaGui import PyMcaQt as qt
                    from PyMca5.PyMcaIO import ArraySave
                    msg = qt.QMessageBox.information( \
                             None,
                             "Memory error\n",
                             "Do you want to convert your data to HDF5?\n",
                             qt.QMessageBox.Yes,qt.QMessageBox.No)
                    if msg != qt.QMessageBox.No:
                        hdf5file = qt.QFileDialog.getSaveFileName( \
                                      None,
                                      "Please select output file name",
                                      os.path.dirname(filelist[0]),
                                      "HDF5 files *.h5")
                        if not len(hdf5file):
                            raise IOError("Invalid output file")
                        hdf5file = qt.safe_str(hdf5file)
                        if not hdf5file.endswith(".h5"):
                            hdf5file += ".h5"

                        # get the final shape
                        from PyMca5.RGBCorrelatorWidget import ImageShapeDialog
                        stackImageShape = self.nbFiles,\
                                     int(numberofmca/numberofdetectors)
                        dialog = ImageShapeDialog(None, shape=stackImageShape)
                        dialog.setModal(True)
                        ret = dialog.exec()
                        if ret:
                            stackImageShape = dialog.getImageShape()
                            dialog.close()
                            del dialog
                        hdf, self.data = ArraySave.getHDF5FileInstanceAndBuffer( \
                                       hdf5file,
                                       (stackImageShape[0],
                                        stackImageShape[1],
                                        arrRet.shape[0]),
                                       compression=None,
                                       interpretation="spectrum")
                        nRow = 0
                        nCol = 0
                        for tempFileName in filelist:
                            tempInstance = specfile.Specfile(tempFileName)
                            # it can only be here if there is one scan per file
                            # prevent problems if the scan number is different
                            # scan = tempInstance.select(keylist[-1])
                            scan = tempInstance[-1]
                            nRow = int(self.incrProgressBar /
                                       stackImageShape[1])
                            nCol = self.incrProgressBar % stackImageShape[1]
                            for i in iterlist:
                                # mcadata = scan_obj.mca(i)
                                self.data[nRow, nCol, :] = scan.mca(i)[:]
                                self.incrProgressBar += 1
                                self.onProgress(self.incrProgressBar)
                        hdf5done = True
                        hdf.flush()
                    self.onEnd()
                    self.info["SourceType"] = "HDF5Stack1D"
                    self.info["McaIndex"] = 2
                    self.info["FileIndex"] = 0
                    self.info["SourceName"] = [hdf5file]
                    self.info["NumberOfFiles"] = 1
                    self.info["Size"] = 1
                    return
                else:
                    raise
        else:
            # time information not read
            self._cleanupTimeInfo()
            sampling_order = 1
            s0 = shape[0]
            s1 = shape[1]
            MEMORY_ERROR = False
            try:
                self.data = numpy.zeros((shape[0], shape[1], arrRet.shape[0]),
                                        arrRet.dtype.char)
            except MemoryError:
                try:
                    self.data = numpy.zeros(
                        (shape[0], shape[1], arrRet.shape[0]), numpy.float32)
                except MemoryError:
                    MEMORY_ERROR = True
            while MEMORY_ERROR:
                try:
                    for i in range(5):
                        print("\7")
                    sampling_order += 1
                    _logger.warning(
                        "**************************************************")
                    _logger.warning(
                        " Memory error!, attempting %dx%d sub-sampling ",
                        sampling_order, sampling_order)
                    _logger.warning(
                        "**************************************************")
                    s0 = int(shape[0] / sampling_order)
                    s1 = int(shape[1] / sampling_order)
                    #if shape[0] % sampling_order:
                    #    s0 = s0 + 1
                    #if shape[1] % sampling_order:
                    #    s1 = s1 + 1
                    self.data = numpy.zeros((s0, s1, arrRet.shape[0]),
                                            numpy.float32)
                    MEMORY_ERROR = False
                except MemoryError:
                    pass
            filecounter = 0
            for j in range(s0):
                filecounter = (j * sampling_order) * shape[1]
                for k in range(s1):
                    tempFileName = filelist[filecounter]
                    tempInstance = specfile.Specfile(tempFileName)
                    if tempInstance is None:
                        if not os.path.exists(tempFileName):
                            _logger.error("File %s does not exists",
                                          tempFileName)
                            raise IOError("File %s does not exists" %
                                          tempFileName)
                    scan = tempInstance.select(keylist[-1])
                    for i in iterlist:
                        # sum the present mcas
                        self.data[j, k, :] += scan.mca(i)[:]
                        self.incrProgressBar += 1
                        self.onProgress(self.incrProgressBar)
                    filecounter += sampling_order
            self.nbFiles = s0 * s1
        self.onEnd()
        """
        # Scan types
        # ----------
        #SF_EMPTY       = 0        # empty scan
        #SF_SCAN        = 1        # non-empty scan
        #SF_MESH        = 2        # mesh scan
        #SF_MCA         = 4        # single mca
        #SF_NMCA        = 8        # multi mca (more than 1 mca per acq)

        case = None
        if scantype == (SpecFileDataSource.SF_MESH + \
                        SpecFileDataSource.SF_MCA):
            # SINGLE MESH + SINGLE MCA
            # nfiles  = 1
            # nscans  = 1
            # nmca    = 1
            # there is a danger if it can be considered an indexed file ...
            pass

        elif scantype == (SpecFileDataSource.SF_MESH + \
                        SpecFileDataSource.SF_NMCA):
            # SINGLE MESH + MULTIPLE MCA
            # nfiles  = 1
            # nscans  = 1
            # nmca    > 1
            # there is a danger if it can be considered an indexed file ...
            #for the time being I take last mca
            pass

        elif scantype == (SpecFileDataSource.SF_SCAN+ \
                          SpecFileDataSource.SF_MCA):
            #Assumed scans containing always 1 detector
            pass

        elif scantype == (SpecFileDataSource.SF_MCA):
            #Assumed scans containing always 1 detector
            pass

        elif scantype == (SpecFileDataSource.SF_SCAN+ \
                          SpecFileDataSource.SF_NMCA):
            #Assumed scans containing the same number of detectors
            #for the time being I take last mca
            pass

        elif scantype == (SpecFileDataSource.SF_NMCA):
            #Assumed scans containing the same number of detectors
            #for the time being I take last mca
            pass

        else:
            raise ValueError, "Unhandled scan type = %s" % scantype

        """

        self.__nFiles = self.nbFiles
        self.__nImagesPerFile = 1
        shape = self.data.shape
        for i in range(len(shape)):
            key = 'Dim_%d' % (i + 1, )
            self.info[key] = shape[i]
        self.info["SourceType"] = SOURCE_TYPE
        self.info["SourceName"] = self.sourceName
        self.info["Size"] = self.__nFiles * self.__nImagesPerFile
        self.info["NumberOfFiles"] = self.__nFiles * 1
        self.info["FileIndex"] = fileindex
示例#21
0
 def finishHDF5File(self, hdf):
     #add final date
     toplevelEntry = hdf["entry_000"]
     toplevelEntry['end_time'] = numpy.string_(ArraySave.getDate().encode('utf-8'))
     hdf.flush()
     hdf.close()
示例#22
0
    def _threadFinished(self):
        result = self.thread.result
        self.thread = None
        if type(result) == type((1,)):
            #if we receive a tuple there was an error
            if len(result):
                if result[0] == "Exception":
                    # somehow this exception is not caught
                    raise Exception(result[1], result[2])#, result[3])
                    return
        imageNames = result['names']
        images = result["images"]
        nImages = images.shape[0]
        self._widget = StackPluginResultsWindow.StackPluginResultsWindow(\
                                        usetab=False)
        self._widget.buildAndConnectImageButtonBox(replace=True,
                                                  multiple=True)
        qt = StackPluginResultsWindow.qt
        self._widget.sigMaskImageWidgetSignal.connect(self.mySlot)
        self._widget.setStackPluginResults(images,
                                          image_names=imageNames)
        self._showWidget()

        # save to output directory
        parameters = self.configurationWidget.getParameters()
        outputDir = parameters["output_dir"]
        if outputDir in [None, ""]:
            if DEBUG:
                print("Nothing to be saved")
                return
        if parameters["file_root"] is None:
            fileRoot = ""
        else:
            fileRoot = parameters["file_root"].replace(" ","")
        if fileRoot in [None, ""]:
            fileRoot = "images"
        if not os.path.exists(outputDir):
            os.mkdir(outputDir)
        imagesDir = os.path.join(outputDir, "IMAGES")
        if not os.path.exists(imagesDir):
            os.mkdir(imagesDir)
        imageList = [None] * (nImages)
        fileImageNames = [None] * (nImages)
        j = 0
        for i in range(nImages):
            name = imageNames[i].replace(" ","-")
            fileImageNames[j] = name
            imageList[j] = images[i]
            j += 1
        fileName = os.path.join(imagesDir, fileRoot+".edf")
        ArraySave.save2DArrayListAsEDF(imageList, fileName,
                                       labels=fileImageNames)
        fileName = os.path.join(imagesDir, fileRoot+".csv")
        ArraySave.save2DArrayListAsASCII(imageList, fileName, csv=True,
                                         labels=fileImageNames)
        if parameters["tiff"]:
            i = 0
            for i in range(len(fileImageNames)):
                label = fileImageNames[i]
                mass_fraction  = "_" + label
                fileName = os.path.join(imagesDir,
                                        fileRoot + mass_fraction + ".tif")
                ArraySave.save2DArrayListAsMonochromaticTiff([imageList[i]],
                                        fileName,
                                        labels=[label],
                                        dtype=numpy.float32)
示例#23
0
 def saveStackAsSimplestHDF5(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     ArraySave.save3DArrayAsHDF5(self._stack.data, filename,
                                 labels = None, dtype=None, mode='simplest')
示例#24
0
 def saveStackAsNeXusPlus(self):
     filename = self._getOutputHDF5Filename()
     if not len(filename):
         return
     ArraySave.save3DArrayAsHDF5(self._stack.data, filename,
                                 labels = None, dtype=None, mode='nexus+')
示例#25
0
    def loadFileList(self, filelist, fileindex=0, shape=None):
        if type(filelist) == type(''):
            filelist = [filelist]
        self.__keyList = []
        self.sourceName = filelist
        self.__indexedStack = True
        self.sourceType = SOURCE_TYPE
        self.info = {}
        self.nbFiles=len(filelist)

        #read first file
        #get information
        tempInstance=SpecFileDataSource.SpecFileDataSource(filelist[0])
        keylist = tempInstance.getSourceInfo()['KeyList']
        nscans = len(keylist)        #that is the number of scans
        nmca = 0
        numberofdetectors = 0
        for key in keylist:
            info = tempInstance.getKeyInfo(key)
            numberofmca       = info['NbMca']
            if numberofmca > 0:
                numberofdetectors = info['NbMcaDet']
            scantype          = info["ScanType"]
            if numberofmca:
                nmca += numberofmca
        if numberofdetectors == 0:
            raise ValueError("No MCA found in file %s" % filelist[0])

        if (nscans > 1) and ((nmca/numberofdetectors) == nscans):
            SLOW_METHOD = True
        else:
            SLOW_METHOD = False
        #get last mca of first point
        key = "%s.1.%s" % (keylist[-1], numberofmca)
        dataObject = tempInstance._getMcaData(key)
        self.info.update(dataObject.info)
        arrRet = dataObject.data
        self.onBegin(self.nbFiles*nmca/numberofdetectors)

        self.incrProgressBar= 0
        if info['NbMcaDet'] > 1:
            #Should I generate a map for each mca and not just for the last one as I am doing?
            iterlist = range(info['NbMcaDet'],info['NbMca']+1,info['NbMcaDet'])
        else:
            iterlist = [1]
        if SLOW_METHOD and shape is None:
            self.data = numpy.zeros((self.nbFiles,
                                   nmca/numberofdetectors,
                                   arrRet.shape[0]),
                                   arrRet.dtype.char)
            filecounter         = 0
            for tempFileName in filelist:
                tempInstance=SpecFileDataSource.SpecFileDataSource(tempFileName)
                mca_number = -1
                for keyindex in keylist:
                    info = tempInstance.getKeyInfo(keyindex)
                    numberofmca       = info['NbMca']
                    if numberofmca <= 0:
                        continue
                    key = "%s.1.%s" % (keyindex, numberofmca)
                    dataObject = tempInstance._getMcaData(key)
                    arrRet = dataObject.data
                    mca_number += 1
                    for i in iterlist:
                        #mcadata = scan_obj.mca(i)
                        self.data[filecounter,
                                  mca_number,
                                  :] = arrRet[:]
                        self.incrProgressBar += 1
                        self.onProgress(self.incrProgressBar)
                filecounter += 1
        elif shape is None and (self.nbFiles == 1) and (iterlist == [1]):
            #it can only be here if there is one file
            #it can only be here if there is only one scan
            #it can only be here if there is only one detector
            self.data = numpy.zeros((1,
                               numberofmca,
                               arrRet.shape[0]),
                               arrRet.dtype.char)
            for tempFileName in filelist:
                tempInstance=specfile.Specfile(tempFileName)
                #it can only be here if there is one scan per file
                #prevent problems if the scan number is different
                #scan = tempInstance.select(keylist[-1])
                scan = tempInstance[-1]
                iterationList = range(scan.nbmca())
                for i in iterationList:
                    #mcadata = scan_obj.mca(i)
                    self.data[0,
                              i,
                              :] = scan.mca(i+1)[:]
                    self.incrProgressBar += 1
                    self.onProgress(self.incrProgressBar)
                filecounter = 1
        elif shape is None:
            #it can only be here if there is one scan per file
            try:
                self.data = numpy.zeros((self.nbFiles,
                                   numberofmca/numberofdetectors,
                                   arrRet.shape[0]),
                                   arrRet.dtype.char)
                filecounter         = 0
                for tempFileName in filelist:
                    tempInstance=specfile.Specfile(tempFileName)
                    #it can only be here if there is one scan per file
                    #prevent problems if the scan number is different
                    #scan = tempInstance.select(keylist[-1])
                    scan = tempInstance[-1]
                    for i in iterlist:
                        #mcadata = scan_obj.mca(i)
                        self.data[filecounter,
                                  0,
                                  :] = scan.mca(i)[:]
                        self.incrProgressBar += 1
                        self.onProgress(self.incrProgressBar)
                    filecounter += 1
            except MemoryError:
                qtflag = False
                if ('PyQt4.QtCore' in sys.modules) or\
                   ('PySide' in sys.modules) or\
                   ('PyMca5.PyMcaGui.PyMcaQt' in sys.modules):
                    qtflag = True
                hdf5done = False
                if HDF5 and qtflag:
                    from PyMca5.PyMcaGui import PyMcaQt as qt
                    from PyMca5.PyMcaIO import ArraySave
                    msg=qt.QMessageBox.information( None,
                      "Memory error\n",
                      "Do you want to convert your data to HDF5?\n",
                      qt.QMessageBox.Yes,qt.QMessageBox.No)
                    if msg != qt.QMessageBox.No:
                        hdf5file = qt.QFileDialog.getSaveFileName(None,
                                    "Please select output file name",
                                    os.path.dirname(filelist[0]),
                                    "HDF5 files *.h5")
                        if not len(hdf5file):
                            raise IOError("Invalid output file")
                        hdf5file = qt.safe_str(hdf5file)
                        if not hdf5file.endswith(".h5"):
                            hdf5file += ".h5"

                        #get the final shape
                        from PyMca5.RGBCorrelatorWidget import ImageShapeDialog
                        stackImageShape = self.nbFiles,\
                                     int(numberofmca/numberofdetectors)
                        dialog = ImageShapeDialog(None, shape =stackImageShape)
                        dialog.setModal(True)
                        ret = dialog.exec_()
                        if ret:
                            stackImageShape= dialog.getImageShape()
                            dialog.close()
                            del dialog
                        hdf, self.data =  ArraySave.getHDF5FileInstanceAndBuffer(hdf5file,
                                       (stackImageShape[0],
                                        stackImageShape[1],
                                        arrRet.shape[0]),
                                       compression=None,
                                       interpretation="spectrum")
                        nRow = 0
                        nCol = 0
                        for tempFileName in filelist:
                            tempInstance=specfile.Specfile(tempFileName)
                            #it can only be here if there is one scan per file
                            #prevent problems if the scan number is different
                            #scan = tempInstance.select(keylist[-1])
                            scan = tempInstance[-1]
                            nRow = int(self.incrProgressBar/stackImageShape[1])
                            nCol = self.incrProgressBar%stackImageShape[1]
                            for i in iterlist:
                                #mcadata = scan_obj.mca(i)
                                self.data[nRow,
                                          nCol,
                                          :] = scan.mca(i)[:]
                                self.incrProgressBar += 1
                                self.onProgress(self.incrProgressBar)
                        hdf5done = True
                        hdf.flush()
                    self.onEnd()
                    self.info["SourceType"] = "HDF5Stack1D"
                    self.info["McaIndex"] = 2
                    self.info["FileIndex"] = 0
                    self.info["SourceName"] = [hdf5file]
                    self.info["NumberOfFiles"] = 1
                    self.info["Size"]       = 1
                    return
                else:
                    raise
        else:
            sampling_order = 1
            s0 = shape[0]
            s1 = shape[1]
            MEMORY_ERROR = False
            try:
                self.data = numpy.zeros((shape[0],
                                   shape[1],
                                   arrRet.shape[0]),
                                   arrRet.dtype.char)
            except MemoryError:
                try:
                    self.data = numpy.zeros((shape[0],
                                   shape[1],
                                   arrRet.shape[0]),
                                   numpy.float32)
                except MemoryError:
                    MEMORY_ERROR = True
            while MEMORY_ERROR:
                try:
                    for i in range(5):
                        print("\7")
                    sampling_order += 1
                    print("**************************************************")
                    print(" Memory error!, attempting %dx%d sub-sampling " %\
                          (sampling_order, sampling_order))
                    print("**************************************************")
                    s0 = int(shape[0]/sampling_order)
                    s1 = int(shape[1]/sampling_order)
                    #if shape[0] % sampling_order:
                    #    s0 = s0 + 1
                    #if shape[1] % sampling_order:
                    #    s1 = s1 + 1
                    self.data = numpy.zeros((s0, s1,
                                             arrRet.shape[0]),
                                             numpy.float32)
                    MEMORY_ERROR = False
                except MemoryError:
                    pass
            filecounter         = 0
            for j in range(s0):
                filecounter = (j * sampling_order) * shape[1]
                for k in range(s1):
                    tempFileName = filelist[filecounter]
                    tempInstance=specfile.Specfile(tempFileName)
                    if tempInstance is None:
                        if not os.path.exists(tempFileName):
                            print("File %s does not exists"  % tempFileName)
                            raise IOError(\
                                "File %s does not exists"  % tempFileName)
                    scan = tempInstance.select(keylist[-1])
                    for i in iterlist:
                        #sum the present mcas
                        self.data[j,
                                  k,
                                  :] += scan.mca(i)[:]
                        self.incrProgressBar += 1
                        self.onProgress(self.incrProgressBar)
                    filecounter += sampling_order
            self.nbFiles = s0 * s1
        self.onEnd()

        """
        # Scan types
        # ----------
        #SF_EMPTY       = 0        # empty scan
        #SF_SCAN        = 1        # non-empty scan
        #SF_MESH        = 2        # mesh scan
        #SF_MCA         = 4        # single mca
        #SF_NMCA        = 8        # multi mca (more than 1 mca per acq)

        case = None
        if scantype == (SpecFileDataSource.SF_MESH + \
                        SpecFileDataSource.SF_MCA):
            # SINGLE MESH + SINGLE MCA
            # nfiles  = 1
            # nscans  = 1
            # nmca    = 1
            # there is a danger if it can be considered an indexed file ...
            pass

        elif scantype == (SpecFileDataSource.SF_MESH + \
                        SpecFileDataSource.SF_NMCA):
            # SINGLE MESH + MULTIPLE MCA
            # nfiles  = 1
            # nscans  = 1
            # nmca    > 1
            # there is a danger if it can be considered an indexed file ...
            #for the time being I take last mca
            pass

        elif scantype == (SpecFileDataSource.SF_SCAN+ \
                          SpecFileDataSource.SF_MCA):
            #Assumed scans containing always 1 detector
            pass

        elif scantype == (SpecFileDataSource.SF_MCA):
            #Assumed scans containing always 1 detector
            pass

        elif scantype == (SpecFileDataSource.SF_SCAN+ \
                          SpecFileDataSource.SF_NMCA):
            #Assumed scans containing the same number of detectors
            #for the time being I take last mca
            pass

        elif scantype == (SpecFileDataSource.SF_NMCA):
            #Assumed scans containing the same number of detectors
            #for the time being I take last mca
            pass

        else:
            raise ValueError, "Unhandled scan type = %s" % scantype

        """

        self.__nFiles         = self.nbFiles
        self.__nImagesPerFile = 1
        shape = self.data.shape
        for i in range(len(shape)):
            key = 'Dim_%d' % (i+1,)
            self.info[key] = shape[i]
        self.info["SourceType"] = SOURCE_TYPE
        self.info["SourceName"] = self.sourceName
        self.info["Size"]       = self.__nFiles * self.__nImagesPerFile
        self.info["NumberOfFiles"] = self.__nFiles * 1
        self.info["FileIndex"] = fileindex
示例#26
0
    def threadFinished(self):
        result = self.thread.result
        self.thread = None
        if type(result) == type((1,)):
            #if we receive a tuple there was an error
            if len(result):
                if result[0] == "Exception":
                    # somehow this exception is not caught
                    raise Exception(result[1], result[2])
                    return
        if 'concentrations' in result:
            imageNames = result['names']
            images = numpy.concatenate((result['parameters'],
                                        result['concentrations']), axis=0)
        else:
            images = result['parameters']
            imageNames = result['names']
        nImages = images.shape[0]
        self._widget = StackPluginResultsWindow.StackPluginResultsWindow(\
                                        usetab=False)
        self._widget.buildAndConnectImageButtonBox()
        qt = StackPluginResultsWindow.qt
        self._widget.sigMaskImageWidgetSignal.connect(self.mySlot)
        self._widget.setStackPluginResults(images,
                                          image_names=imageNames)
        self._showWidget()

        # save to output directory
        parameters = self.configurationWidget.getParameters()
        outputDir = parameters["output_dir"]
        if outputDir in [None, ""]:
            if DEBUG:
                print("Nothing to be saved")
                return
        if parameters["file_root"] is None:
            fileRoot = ""
        else:
            fileRoot = parameters["file_root"].replace(" ","")
        if fileRoot in [None, ""]:
            fileRoot = "images"
        if not os.path.exists(outputDir):
            os.mkdir(outputDir)
        imagesDir = os.path.join(outputDir, "IMAGES")
        if not os.path.exists(imagesDir):
            os.mkdir(imagesDir)
        imageList = [None] * (nImages + len(result['uncertainties']))
        fileImageNames = [None] * (nImages + len(result['uncertainties']))
        j = 0
        for i in range(nImages):
            name = imageNames[i].replace(" ","-")
            fileImageNames[j] = name
            imageList[j] = images[i]
            j += 1
            if not imageNames[i].startswith("C("):
                # fitted parameter
                fileImageNames[j] = "s(%s)" % name
                imageList[j] = result['uncertainties'][i]
                j += 1
        fileName = os.path.join(imagesDir, fileRoot+".edf")
        ArraySave.save2DArrayListAsEDF(imageList, fileName,
                                       labels=fileImageNames)
        fileName = os.path.join(imagesDir, fileRoot+".csv")
        ArraySave.save2DArrayListAsASCII(imageList, fileName, csv=True,
                                         labels=fileImageNames)