import gradio as gr import tensorflow as tf import numpy as np import os import tensorflow as tf import numpy as np from keras.models import load_model from tensorflow.keras.utils import load_img # Charger le modèle model = load_model('model_cv.h5') def detect(img): img = np.expand_dims(img, axis=0) img = img/255 prediction = model.predict(img)[0] if prediction[0] <= 0.80: return "Pneumonia Detected!" return "Pneumonia Not Detected!" # result = detect(img) # print(result) os.system("tar -zxvf examples.tar.gz") input = gr.inputs.Image(shape=(100, 100)) examples = ['examples/n1.jpeg', 'examples/n2.jpeg', 'examples/n3.jpeg', 'examples/n4.jpeg', 'examples/n5.jpeg', 'examples/n6.jpeg', 'examples/n7.jpeg', 'examples/n8.jpeg', 'examples/p6.jpeg', 'examples/p7.jpeg', 'examples/p1.jpeg', 'examples/p2.jpeg', 'examples/p3.jpeg', 'examples/p4.jpeg', 'examples/p8.jpeg'] title = "PneumoDetect: Pneumonia Detection from Chest X-Rays" iface = gr.Interface(fn=detect, inputs=input, outputs="text", examples=examples, examples_per_page=20, title=title) iface.launch(inline=False)