# -*- coding: utf-8 -*- # Default values are set internally, if the corresponding parameter is not found in the configuration file. # [Optional but highly suggested] The name will be used for naming folders to save the results in. # Default: "testSession" sessionName = "currentSession" # [Required] The main folder that the output will be placed. folderForOutput = "../output/" # [Optional] Path to a saved model, to load parameters from in the beginning of the session. If one is also specified using the command line, the latter will be used. cnnModelFilePath = "../saved_models/DM_defaults.DM_train_VISCERAL16_Fold1.final.2019-10-01.07.46.19.932616.model.ckpt" # +++++++++++ Input +++++++++++ # [Required] A list that should contain as many entries as the channels of the input image (eg multi-modal MRI). The entries should be paths to files. Those files should be listing the paths to the corresponding channels for each test-case. (see example files). channels = ["./testChannels_CT.cfg"] # [Required] The path to a file, which should list names to give to the results for each testing case. (see example file). namesForPredictionsPerCase = "./testNamesOfPredictions.cfg" # [Optional] The path to a file, which should list paths to the Region-Of-Interest masks for each testing case. # If ROI masks are provided, inference will only be performed in within it (faster). If not specified, inference will be performed in whole volume. roiMasks = "./testRoiMasks.cfg" # [Optional] The path to a file which should list paths to the Ground Truth labels of each testing case. If provided, DSC metrics will be reported. Otherwise comment out this entry. # gtLabels = "./testGtLabels_retmel.cfg" # [Optional] Batch size. Default: 10 batchsize = 1 # +++++++++++Predictions+++++++++++ # [Optional] Specify whether to save segmentation map. Default: True saveSegmentation = True # [Optional] Specify a list with as many entries as the task's classes. True/False to save/not the probability map for the corresponding class. Default: [True,True...for all classes] saveProbMapsForEachClass = [False, False, False, False, False, False, False, False, False, False, False, False, False, False, False, False, False, False, False] # overlap=1 is lots of overlap (no step, gets stuck), overlap=0 is no overlap overlap = 0.0 # +++++++++++Feature Maps+++++++++++ # [Optionals] Specify whether to save the feature maps in separate files and/or all together in a 4D image. Default: False for both cases. #saveIndividualFms = True #saveAllFmsIn4DimImage = False # [Optionals] A model may have too many feature maps, and some may not be needed. For this, we allow specifying which FMs to save. # Specify for each type of pathway (normal/subsampled/FC), a list with as many sublists as the layers of the pathway. # Each sublist (one for each layer), should have 2 numbers. These are the minimum (inclusive) and maximum (exclusive) indices of the Feature Maps that we wish to save from the layer. # The preset example saves the Feature Maps from index 0 (first FM) to 150 of the last hidden FC layer, before the classification layer. # Default: [] for all. #minMaxIndicesOfFmsToSaveFromEachLayerOfNormalPathway = [] #minMaxIndicesOfFmsToSaveFromEachLayerOfSubsampledPathway = [[],[],[],[],[],[],[],[]] #minMaxIndicesOfFmsToSaveFromEachLayerOfFullyConnectedPathway = [[],[0,150],[]] # ==========Generic============= # [Optional] Pad images to fully convolve. Default: True padInputImagesBool = True