from keras.models import load_model from PIL import Image, ImageOps import numpy as np # Load the model model = load_model('keras_model.h5') # Create the array of the right shape to feed into the keras model # The 'length' or number of images you can put into the array is # determined by the first position in the shape tuple, in this case 1. data = np.ndarray(shape=(1, 224, 224, 3), dtype=np.float32) # Replace this with the path to your image image = Image.open('') #resize the image to a 224x224 with the same strategy as in TM2: #resizing the image to be at least 224x224 and then cropping from the center size = (224, 224) image = ImageOps.fit(image, size, Image.ANTIALIAS) #turn the image into a numpy array image_array = np.asarray(image) # Normalize the image normalized_image_array = (image_array.astype(np.float32) / 127.0) - 1 # Load the image into the array data[0] = normalized_image_array # run the inference prediction = model.predict(data) print(prediction)