import gradio as gr import numpy as np import matplotlib.pyplot as plt from PIL import Image import tensorflow as tf from tensorflow.keras.preprocessing import image from tensorflow.keras.models import load_model from tensorflow.keras.applications.efficientnet import preprocess_input model = load_model("efficent_netB7.h5") waste_labels = {0: 'Fibres', 1: 'Nanowires', 2: 'Particles', 3: 'Powder'} def classify_image(pil_image): img = image.img_to_array(pil_image) img = tf.image.resize(img, (600, 600)) img = np.expand_dims(img, axis=0) img = preprocess_input(img) prediction = model.predict(img) predicted_class = np.argmax(prediction) predicted_class_name = waste_labels[predicted_class] confidence = prediction[0, np.argmax(prediction)] class_names = list(waste_labels.values()) probabilities = prediction[0] print(class_names) print(probabilities) plt.bar(class_names, probabilities, color='blue') plt.xlabel('Waste Classes') plt.ylabel('Probability') plt.title('Prediction Probabilities') plt.savefig('prediction_plot.png') plt.close() output_text = f"Predicted Class: {predicted_class_name}, Confidence: {confidence:.4f}\n" for class_name, prob in zip(class_names, probabilities): output_text += f"{class_name}: {prob:.4f}\n" return output_text, 'prediction_plot.png' iface = gr.Interface(fn=classify_image, inputs="image", outputs=["text", "image"], examples=["L9_1b95a3808073c0edad3454d1dedf3dcc.jpg","L6_0a171beb21a6f4d6fef31f8ccb400eae.jpg","L2_00a6b5e9806a8b072b98fdeacb3f45b5.jpg","L4_0b02898e9d31954dd5378e0ffbdb9a41.jpg"], title= "SEM IMAGES CLASSIFICATION", description= "Fibres, Nanowires, Particles, Powder SEM görüntülerini sınıflandıran model arayüzü", theme=gr.themes.Monochrome(), live=True) iface.launch()