def test_main(rec=False, verb=False, throw=True): pet.MessageRedirector() for scheme in ("file", "memory"): pet.AcquisitionData.set_storage_scheme(scheme) original_verb = pet.get_verbosity() pet.set_verbosity(False) # create an acq_model that is explicitly a RayTracingMatrix am = pet.AcquisitionModelUsingRayTracingMatrix() # load sample data data_path = pet.examples_data_path('PET') raw_data_file = pet.existing_filepath(data_path, 'Utahscat600k_ca_seg4.hs') ad = pet.AcquisitionData(raw_data_file) # create sample image image = pet.ImageData() image.initialise(dim=(31, 111, 111), vsize=(2.25, 2.25, 2.25)) # set up Acquisition Model am.set_up(ad, image) # test for adjointnesss if not is_operator_adjoint(am, verbose=verb): raise AssertionError( 'AcquisitionModelUsingRayTracingMatrix is not adjoint') # Reset original verbose-ness pet.set_verbosity(original_verb) return 0, 1
def test_main(rec=False, verb=False, throw=True): # Set STIR verbosity to off original_verb = pet.get_verbosity() pet.set_verbosity(1) time.sleep(0.5) sys.stderr.write("Testing NiftyPET projector...") time.sleep(0.5) # Get image image = get_image() # Get AM try: acq_model = pet.AcquisitionModelUsingNiftyPET() except: return 1, 1 acq_model.set_cuda_verbosity(verb) data_path = examples_data_path('PET') # raw_data_path = pet.existing_filepath(os.path.join(data_path, 'mMR'), 'mMR_template_span11.hs') raw_data_path = os.path.join(data_path, 'mMR') template_acq_data = pet.AcquisitionData( os.path.join(raw_data_path, 'mMR_template_span11.hs')) acq_model.set_up(template_acq_data, image) # Test operator adjointness if verb: print('testing adjointness') if not is_operator_adjoint(acq_model, num_tests=1, verbose=True): raise AssertionError('NiftyPet AcquisitionModel is not adjoint') # Generate test data simulated_acq_data = acq_model.forward(image) simulated_acq_data_w_noise = add_noise(simulated_acq_data, 10) obj_fun = pet.make_Poisson_loglikelihood(template_acq_data) obj_fun.set_acquisition_model(acq_model) recon = pet.OSMAPOSLReconstructor() recon.set_objective_function(obj_fun) recon.set_num_subsets(1) recon.set_num_subiterations(1) recon.set_input(simulated_acq_data_w_noise) if verb: print('setting up, please wait...') initial_estimate = image.get_uniform_copy() recon.set_up(initial_estimate) if verb: print('reconstructing...') recon.set_current_estimate(initial_estimate) recon.process() reconstructed_im = recon.get_output() if not reconstructed_im: raise AssertionError() # Reset original verbose-ness pet.set_verbosity(original_verb) return 0, 1