from keras.models import load_model from keras import backend as K from keras_contrib.layers.normalization.instancenormalization import InstanceNormalization import numpy as np import model_utils import data_utils K.clear_session() # load the already trained model test_model=load_model(r"input/out_gpu/time_256ms_ResNet-CBAM256ms_013_0.9430_0.9751.h5", custom_objects={'InstanceNormalization': InstanceNormalization}) # 64ms, 128ms, 256ms choonse_time_bin="256ms" data_set_dir=r"/workspace/binary_distinguish_GRB_by_DL-main/Binary_Distinguish_GRB_Datasetv1/data/dataset_256ms/" # load and pre-process data (train and validate) (test_x, test_y, test_info)=data_utils.get_test_data(data_set_dir,choonse_time_bin) # use the model to predict test_predict_y=test_model.predict(test_x) predict_class=np.argmax(test_predict_y,axis=1) real_class=np.argmax(test_y,axis=1) # output the: accuracy;precision;recall;f1_score model_utils.printMetrics(real_class, predict_class)