import os import random import numpy as np from tqdm import tqdm import matplotlib.pyplot as plt import tensorflow as tf import tensorflow_addons as tfa from tensorflow import keras from tensorflow.keras import layers from glob import glob from PIL import Image import gradio as gr from huggingface_hub import from_pretrained_keras model = from_pretrained_keras("RobotJelly/GauGAN-Image-generation") def predict(image_file): # print(image_file) # img = Image.open(image_file) # image_file = str(img) print("image_file-->", image_file) image_list = [] segmentation_map = image_file.replace("images", "segmentation_map").replace("jpg", "png") labels = image_file.replace("images", "segmentation_labels").replace("jpg", "bmp") print("labels", labels) image_list = [segmentation_map, image_file, labels] image = tf.image.decode_png(tf.io.read_file(image_list[1]), channels=3) image = tf.cast(image, tf.float32) / 127.5 - 1 segmentation_file = tf.image.decode_png(tf.io.read_file(image_list[0]), channels=3) segmentation_file = tf.cast(segmentation_file, tf.float32)/127.5 - 1 label_file = tf.image.decode_bmp(tf.io.read_file(image_list[2]), channels=0) label_file = tf.squeeze(label_file) image_list = [segmentation_file, image, label_file] crop_size = tf.convert_to_tensor((256, 256)) image_shape = tf.shape(image_list[1])[:2] margins = image_shape - crop_size y1 = tf.random.uniform(shape=(), maxval=margins[0], dtype=tf.int32) x1 = tf.random.uniform(shape=(), maxval=margins[1], dtype=tf.int32) y2 = y1 + crop_size[0] x2 = x1 + crop_size[1] cropped_images = [] for img in image_list: cropped_images.append(img[y1:y2, x1:x2]) final_img_list = [tf.expand_dims(cropped_images[0], axis=0), tf.expand_dims(cropped_images[1], axis=0), tf.expand_dims(tf.one_hot(cropped_images[2], 12), axis=0)] # print(final_img_list[0].shape) # print(final_img_list[1].shape) # print(final_img_list[2].shape) latent_vector = tf.random.normal(shape=(1, 256), mean=0.0, stddev=2.0) # Generate fake images # fake_image = tf.squeeze(model.predict([latent_vector, final_img_list[2]]), axis=0) fake_image = model.predict([latent_vector, final_img_list[2]]) real_images = final_img_list # return tf.squeeze(real_images[1], axis=0), fake_image return [(real_images[0][0]+1)/2, (fake_image[0]+1)/2] # input input = [gr.inputs.Image(type="filepath", label="Ground Truth - Real Image")] facades_data = [] data_dir = 'examples/' for idx, images in enumerate(os.listdir(data_dir)): image = os.path.join(data_dir, images) if os.path.isfile(image) and idx < 6: facades_data.append(image) # output output = [gr.outputs.Image(type="numpy", label="Mask/Segmentation used"), gr.outputs.Image(type="numpy", label="Generated - Conditioned Images")] title = "GauGAN For Conditional Image Generation" description = "Upload an Image or take one from examples to generate realistic images that are conditioned on cue images and segmentation maps" gr.Interface(fn=predict, inputs = input, outputs = output, examples=facades_data, allow_flagging=False, analytics_enabled=False, title=title, description=description, article="
Space By: Kavya Bisht \n Based on this notebook
").launch(enable_queue=True, debug=True)