""" ======= Entropy ======= In information theory, information entropy is the log-base-2 of the number of possible outcomes for a message. For an image, local entropy is related to the complexity contained in a given neighborhood, typically defined by a structuring element. The entropy filter can detect subtle variations in the local gray level distribution. In the first example, the image is composed of two surfaces with two slightly different distributions. The image has a uniform random distribution in the range [-15, +15] in the middle of the image and a uniform random distribution in the range [-14, 14] at the image borders, both centered at a gray value of 128. To detect the central square, we compute the local entropy measure using a circular structuring element of a radius big enough to capture the local gray level distribution. The second example shows how to detect texture in the camera image using a smaller structuring element. """ ###################################################################### # Object detection # ================ import matplotlib.pyplot as plt import numpy as np from skimage import data from skimage.util import img_as_ubyte from skimage.filters.rank import entropy from skimage.morphology import disk noise_mask = np.full((128, 128), 28, dtype=np.uint8) noise_mask[32:-32, 32:-32] = 30 noise = (noise_mask * np.random.random(noise_mask.shape) - 0.5 * noise_mask).astype(np.uint8) img = noise + 128 entr_img = entropy(img, disk(10)) fig, (ax0, ax1, ax2) = plt.subplots(nrows=1, ncols=3, figsize=(10, 4)) img0 = ax0.imshow(noise_mask, cmap='gray') ax0.set_title("Object") ax1.imshow(img, cmap='gray') ax1.set_title("Noisy image") ax2.imshow(entr_img, cmap='viridis') ax2.set_title("Local entropy") fig.tight_layout() ###################################################################### # Texture detection # ================= image = img_as_ubyte(data.camera()) fig, (ax0, ax1) = plt.subplots(ncols=2, figsize=(12, 4), sharex=True, sharey=True) img0 = ax0.imshow(image, cmap=plt.cm.gray) ax0.set_title("Image") ax0.axis("off") fig.colorbar(img0, ax=ax0) img1 = ax1.imshow(entropy(image, disk(5)), cmap='gray') ax1.set_title("Entropy") ax1.axis("off") fig.colorbar(img1, ax=ax1) fig.tight_layout() plt.show()