import gradio as gr import numpy as np import pandas as pd import cv2 import os import matplotlib.pyplot as plt import tensorflow as tf import keras import matplotlib def dice_loss(y_true, y_pred): smooth = 1. y_true_f = K.flatten(y_true) y_pred_f = K.flatten(y_pred) intersection = y_true_f * y_pred_f score = (2. * K.sum(intersection) + smooth) / (K.sum(y_true_f) + K.sum(y_pred_f) + smooth) return 1. - score from keras.models import load_model model = load_model('model91.h5',custom_objects={'dice_loss':dice_loss}) def convert_sketch(img): img = cv2.resize(img,(178,218)) img = img.astype(np.float32)/255. y_pred = model.predict(img.reshape(1,218,178,3)) return(y_pred[0]) custom_text = "hello" gr.Interface(fn=convert_sketch,inputs="image",outputs="image",title="Sketch To Image Converter",description="Warning: Upload the sketches of 178*218 pixels to get accurate results.").launch()