import matplotlib.pyplot as plt import numpy as np import torch from utils import show_images from torch_radon import Radon device = torch.device('cuda') img = np.load("phantom.npy") print(img.shape) image_size = img.shape[0] n_angles = image_size # Instantiate Radon transform. clip_to_circle should be True when using filtered backprojection. angles = np.linspace(0, np.pi, n_angles, endpoint=False) radon = Radon(image_size, angles, clip_to_circle=True) with torch.no_grad(): x = torch.FloatTensor(img).to(device) sinogram = radon.forward(x) filtered_sinogram = radon.filter_sinogram(sinogram) fbp = radon.backprojection(filtered_sinogram) print("FBP Error", torch.norm(x - fbp).item()) # Show results titles = ["Original Image", "Sinogram", "Filtered Sinogram", "Filtered Backprojection"] show_images([x, sinogram, filtered_sinogram, fbp], titles, keep_range=False) plt.show()