import streamlit as st from tensorflow.keras.models import load_model from PIL import Image import numpy as np model = load_model('src/flower.h5') def process_image(img): img = img.resize((64, 64)) img = np.array(img) img = img / 255.0 img = np.expand_dims(img, axis=0) return img st.title("Flower Image Recognition") st.write("Upload a flower image and the model will predict the type.") file = st.file_uploader('Select an image', type=['jpg', 'jpeg', 'png']) if file is not None: img = Image.open(file) st.image(img, caption='Uploaded Image') image = process_image(img) prediction = model.predict(image) predicted_class = np.argmax(prediction) class_names = ['Dandelion', 'Daisy', 'Sunflower', 'Tulip', 'Rose'] st.write(f"Prediction: {class_names[predicted_class]}")