diff --git a/experiments/toy_exp/configs.py b/experiments/toy_exp/configs.py index 36d6ee7..2e8c5bf 100644 --- a/experiments/toy_exp/configs.py +++ b/experiments/toy_exp/configs.py @@ -1,344 +1,344 @@ #!/usr/bin/env python # Copyright 2018 Division of Medical Image Computing, German Cancer Research Center (DKFZ). # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== import sys import os sys.path.append(os.path.dirname(os.path.realpath(__file__))) import numpy as np from default_configs import DefaultConfigs class configs(DefaultConfigs): def __init__(self, server_env=None): ######################### # Preprocessing # ######################### self.root_dir = '/mnt/HDD2TB/Documents/data/mdt_toy' ######################### # I/O # ######################### # one out of [2, 3]. dimension the model operates in. self.dim = 2 # one out of ['mrcnn', 'retina_net', 'retina_unet', 'detection_unet', 'ufrcnn', 'detection_unet']. - self.model = 'retina_unet' + self.model = 'detection_unet' DefaultConfigs.__init__(self, self.model, server_env, self.dim) # int [0 < dataset_size]. select n patients from dataset for prototyping. self.select_prototype_subset = None self.hold_out_test_set = True self.n_train_data = 1000 # choose one of the 3 toy experiments described in https://arxiv.org/pdf/1811.08661.pdf # one of ['donuts_shape', 'donuts_pattern', 'circles_scale']. toy_mode = 'donuts_shape' # path to preprocessed data. self.input_df_name = 'info_df.pickle' self.pp_name = os.path.join(toy_mode, 'train') self.pp_data_path = os.path.join(self.root_dir, self.pp_name) self.pp_test_name = os.path.join(toy_mode, 'test') self.pp_test_data_path = os.path.join(self.root_dir, self.pp_test_name) # settings for deployment in cloud. if server_env: # path to preprocessed data. pp_root_dir = '/path/to/data' self.pp_name = os.path.join(toy_mode, 'train') self.pp_data_path = os.path.join(pp_root_dir, self.pp_name) self.pp_test_name = os.path.join(toy_mode, 'test') self.pp_test_data_path = os.path.join(pp_root_dir, self.pp_test_name) self.select_prototype_subset = None ######################### # Data Loader # ######################### # select modalities from preprocessed data self.channels = [0] self.n_channels = len(self.channels) # patch_size to be used for training. pre_crop_size is the patch_size before data augmentation. self.pre_crop_size_2D = [320, 320] self.patch_size_2D = [320, 320] self.patch_size = self.patch_size_2D if self.dim == 2 else self.patch_size_3D self.pre_crop_size = self.pre_crop_size_2D if self.dim == 2 else self.pre_crop_size_3D # ratio of free sampled batch elements before class balancing is triggered # (>0 to include "empty"/background patches.) self.batch_sample_slack = 0.2 # set 2D network to operate in 3D images. self.merge_2D_to_3D_preds = False # feed +/- n neighbouring slices into channel dimension. set to None for no context. self.n_3D_context = None if self.n_3D_context is not None and self.dim == 2: self.n_channels *= (self.n_3D_context * 2 + 1) ######################### # Architecture # ######################### self.start_filts = 48 if self.dim == 2 else 18 self.end_filts = self.start_filts * 4 if self.dim == 2 else self.start_filts * 2 self.res_architecture = 'resnet50' # 'resnet101' , 'resnet50' self.norm = None # one of None, 'instance_norm', 'batch_norm' self.weight_decay = 0 # one of 'xavier_uniform', 'xavier_normal', or 'kaiming_normal', None (=default = 'kaiming_uniform') self.weight_init = None ######################### # Schedule / Selection # ######################### self.num_epochs = 100 self.num_train_batches = 200 if self.dim == 2 else 200 self.batch_size = 20 if self.dim == 2 else 8 self.do_validation = True # decide whether to validate on entire patient volumes (like testing) or sampled patches (like training) # the former is morge accurate, while the latter is faster (depending on volume size) self.val_mode = 'val_patient' # one of 'val_sampling' , 'val_patient' if self.val_mode == 'val_patient': self.max_val_patients = None # if 'None' iterates over entire val_set once. if self.val_mode == 'val_sampling': self.num_val_batches = 50 ######################### # Testing / Plotting # ######################### # set the top-n-epochs to be saved for temporal averaging in testing. self.save_n_models = 5 self.test_n_epochs = 5 # set a minimum epoch number for saving in case of instabilities in the first phase of training. self.min_save_thresh = 0 if self.dim == 2 else 0 self.report_score_level = ['patient', 'rois'] # choose list from 'patient', 'rois' self.class_dict = {1: 'benign', 2: 'malignant'} # 0 is background. self.patient_class_of_interest = 2 # patient metrics are only plotted for one class. self.ap_match_ious = [0.1] # list of ious to be evaluated for ap-scoring. self.model_selection_criteria = ['benign_ap', 'malignant_ap'] # criteria to average over for saving epochs. self.min_det_thresh = 0.1 # minimum confidence value to select predictions for evaluation. # threshold for clustering predictions together (wcs = weighted cluster scoring). # needs to be >= the expected overlap of predictions coming from one model (typically NMS threshold). # if too high, preds of the same object are separate clusters. self.wcs_iou = 1e-5 self.plot_prediction_histograms = True self.plot_stat_curves = False ######################### # Data Augmentation # ######################### self.da_kwargs={ 'do_elastic_deform': True, 'alpha':(0., 1500.), 'sigma':(30., 50.), 'do_rotation':True, 'angle_x': (0., 2 * np.pi), 'angle_y': (0., 0), 'angle_z': (0., 0), 'do_scale': True, 'scale':(0.8, 1.1), 'random_crop':False, 'rand_crop_dist': (self.patch_size[0] / 2. - 3, self.patch_size[1] / 2. - 3), 'border_mode_data': 'constant', 'border_cval_data': 0, 'order_data': 1 } if self.dim == 3: self.da_kwargs['do_elastic_deform'] = False self.da_kwargs['angle_x'] = (0, 0.0) self.da_kwargs['angle_y'] = (0, 0.0) #must be 0!! self.da_kwargs['angle_z'] = (0., 2 * np.pi) ######################### # Add model specifics # ######################### {'detection_unet': self.add_det_unet_configs, 'mrcnn': self.add_mrcnn_configs, 'ufrcnn': self.add_mrcnn_configs, 'ufrcnn_surrounding': self.add_mrcnn_configs, 'retina_net': self.add_mrcnn_configs, 'retina_unet': self.add_mrcnn_configs, 'prob_detector': self.add_mrcnn_configs, }[self.model]() def add_det_unet_configs(self): self.learning_rate = [1e-4] * self.num_epochs # aggregation from pixel perdiction to object scores (connected component). One of ['max', 'median'] self.aggregation_operation = 'max' # max number of roi candidates to identify per image (slice in 2D, volume in 3D) self.n_roi_candidates = 3 if self.dim == 2 else 8 # loss mode: either weighted cross entropy ('wce'), batch-wise dice loss ('dice), or the sum of both ('dice_wce') self.seg_loss_mode = 'dice_wce' # if <1, false positive predictions in foreground are penalized less. self.fp_dice_weight = 1 if self.dim == 2 else 1 self.wce_weights = [1, 1, 1] self.detection_min_confidence = self.min_det_thresh # if 'True', loss distinguishes all classes, else only foreground vs. background (class agnostic). self.class_specific_seg_flag = True self.num_seg_classes = 3 if self.class_specific_seg_flag else 2 self.head_classes = self.num_seg_classes def add_mrcnn_configs(self): # learning rate is a list with one entry per epoch. self.learning_rate = [1e-4] * self.num_epochs # disable mask head loss. (e.g. if no pixelwise annotations available) self.frcnn_mode = False # disable the re-sampling of mask proposals to original size for speed-up. # since evaluation is detection-driven (box-matching) and not instance segmentation-driven (iou-matching), # mask-outputs are optional. self.return_masks_in_val = True self.return_masks_in_test = False # set number of proposal boxes to plot after each epoch. self.n_plot_rpn_props = 5 if self.dim == 2 else 30 # number of classes for head networks: n_foreground_classes + 1 (background) self.head_classes = 3 # seg_classes hier refers to the first stage classifier (RPN) self.num_seg_classes = 2 # foreground vs. background # feature map strides per pyramid level are inferred from architecture. self.backbone_strides = {'xy': [4, 8, 16, 32], 'z': [1, 2, 4, 8]} # anchor scales are chosen according to expected object sizes in data set. Default uses only one anchor scale # per pyramid level. (outer list are pyramid levels (corresponding to BACKBONE_STRIDES), inner list are scales per level.) self.rpn_anchor_scales = {'xy': [[8], [16], [32], [64]], 'z': [[2], [4], [8], [16]]} # choose which pyramid levels to extract features from: P2: 0, P3: 1, P4: 2, P5: 3. self.pyramid_levels = [0, 1, 2, 3] # number of feature maps in rpn. typically lowered in 3D to save gpu-memory. self.n_rpn_features = 512 if self.dim == 2 else 128 # anchor ratios and strides per position in feature maps. self.rpn_anchor_ratios = [0.5, 1, 2] self.rpn_anchor_stride = 1 # Threshold for first stage (RPN) non-maximum suppression (NMS): LOWER == HARDER SELECTION self.rpn_nms_threshold = 0.7 if self.dim == 2 else 0.7 # loss sampling settings. self.rpn_train_anchors_per_image = 2 #per batch element self.train_rois_per_image = 2 #per batch element self.roi_positive_ratio = 0.5 self.anchor_matching_iou = 0.7 # factor of top-k candidates to draw from per negative sample (stochastic-hard-example-mining). # poolsize to draw top-k candidates from will be shem_poolsize * n_negative_samples. self.shem_poolsize = 10 self.pool_size = (7, 7) if self.dim == 2 else (7, 7, 3) self.mask_pool_size = (14, 14) if self.dim == 2 else (14, 14, 5) self.mask_shape = (28, 28) if self.dim == 2 else (28, 28, 10) self.rpn_bbox_std_dev = np.array([0.1, 0.1, 0.1, 0.2, 0.2, 0.2]) self.bbox_std_dev = np.array([0.1, 0.1, 0.1, 0.2, 0.2, 0.2]) self.window = np.array([0, 0, self.patch_size[0], self.patch_size[1]]) self.scale = np.array([self.patch_size[0], self.patch_size[1], self.patch_size[0], self.patch_size[1]]) if self.dim == 2: self.rpn_bbox_std_dev = self.rpn_bbox_std_dev[:4] self.bbox_std_dev = self.bbox_std_dev[:4] self.window = self.window[:4] self.scale = self.scale[:4] # pre-selection in proposal-layer (stage 1) for NMS-speedup. applied per batch element. self.pre_nms_limit = 3000 if self.dim == 2 else 6000 # n_proposals to be selected after NMS per batch element. too high numbers blow up memory if "detect_while_training" is True, # since proposals of the entire batch are forwarded through second stage in as one "batch". self.roi_chunk_size = 800 if self.dim == 2 else 600 self.post_nms_rois_training = 500 if self.dim == 2 else 75 self.post_nms_rois_inference = 500 # Final selection of detections (refine_detections) self.model_max_instances_per_batch_element = 10 if self.dim == 2 else 30 # per batch element and class. self.detection_nms_threshold = 1e-5 # needs to be > 0, otherwise all predictions are one cluster. self.model_min_confidence = 0.1 if self.dim == 2: self.backbone_shapes = np.array( [[int(np.ceil(self.patch_size[0] / stride)), int(np.ceil(self.patch_size[1] / stride))] for stride in self.backbone_strides['xy']]) else: self.backbone_shapes = np.array( [[int(np.ceil(self.patch_size[0] / stride)), int(np.ceil(self.patch_size[1] / stride)), int(np.ceil(self.patch_size[2] / stride_z))] for stride, stride_z in zip(self.backbone_strides['xy'], self.backbone_strides['z'] )]) if self.model == 'ufrcnn': self.operate_stride1 = True self.class_specific_seg_flag = True self.num_seg_classes = 3 if self.class_specific_seg_flag else 2 self.frcnn_mode = True if self.model == 'retina_net' or self.model == 'retina_unet' or self.model == 'prob_detector': # implement extra anchor-scales according to retina-net publication. self.rpn_anchor_scales['xy'] = [[ii[0], ii[0] * (2 ** (1 / 3)), ii[0] * (2 ** (2 / 3))] for ii in self.rpn_anchor_scales['xy']] self.rpn_anchor_scales['z'] = [[ii[0], ii[0] * (2 ** (1 / 3)), ii[0] * (2 ** (2 / 3))] for ii in self.rpn_anchor_scales['z']] self.n_anchors_per_pos = len(self.rpn_anchor_ratios) * 3 self.n_rpn_features = 256 if self.dim == 2 else 64 # pre-selection of detections for NMS-speedup. per entire batch. self.pre_nms_limit = 10000 if self.dim == 2 else 50000 # anchor matching iou is lower than in Mask R-CNN according to https://arxiv.org/abs/1708.02002 self.anchor_matching_iou = 0.5 # if 'True', seg loss distinguishes all classes, else only foreground vs. background (class agnostic). self.num_seg_classes = 3 if self.class_specific_seg_flag else 2 if self.model == 'retina_unet': self.operate_stride1 = True diff --git a/requirements.txt b/requirements.txt index b4457a6..eded0cd 100644 --- a/requirements.txt +++ b/requirements.txt @@ -1,27 +1,27 @@ -batchgenerators==0.19.5 +batchgenerators==0.19.3 cffi==1.11.5 cycler==0.10.0 decorator==4.4.1 future==0.18.2 imageio==2.6.1 kiwisolver==1.1.0 linecache2==1.0.0 matplotlib==3.1.2 networkx==2.4 numpy==1.15.3 pandas==0.23.4 Pillow==6.2.1 pycparser==2.19 pyparsing==2.4.5 python-dateutil==2.8.1 pytz==2019.3 PyWavelets==1.1.1 scikit-image==0.16.2 scikit-learn==0.20.0 scipy==1.3.3 six==1.13.0 sklearn==0.0 threadpoolctl==1.1.0 torch==0.4.1 traceback2==1.4.0 unittest2==1.1.0