import tensorflow as tf import gradio as gr json_file=open(r"dark_s.json","r") loaded_model_json=json_file.read() json_file.close() loaded_model= tf.keras.models.model_from_json(loaded_model_json) loaded_model.load_weights("dark_s.h5") json_file=open(r"eyes_d.json","r") loaded_model_json=json_file.read() json_file.close() loaded_model1 = tf.keras.models.model_from_json(loaded_model_json) loaded_model1.load_weights("eyes_d.h5") json_file=open(r"wrinkl.json","r") loaded_model_json=json_file.read() json_file.close() loaded_model2 = tf.keras.models.model_from_json(loaded_model_json) loaded_model2.load_weights("wrinkl.h5") def classifier(Imgarr): l = [] img = Imgarr.reshape(-1, 50, 50, 3) result = loaded_model.predict(img) result = result[0] if result[0] >= result[1]: l.append("dark spots") else: l.append("no dark spots") result = loaded_model1.predict(img) result = result[0] if result[0] >= result[1]: l.append("no puffy eyes") else: l.append("puffy eyes") result = loaded_model2.predict(img) result = result[0] if result[0] >= result[1]: l.append("no wrinkles on face") else: l.append("wrinkles on face") return "The Predictions are " + str(l) interface = gr.Interface(classifier,gr.inputs.Image(shape=(50,50)),outputs = "text", description="Classifier of Aging Signs of Images", title="Aging Signs Classifier", examples=[['42.jpg'],['778.jpg'],['1836.png'],['71.jpg'],['56.jpg']]) interface.launch()