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| #!/usr/bin/env python | |
| # coding: utf-8 | |
| #dosyayı py olarak kaydet ve komut satırını kullanarak streamlit run streamlit.py | |
| import streamlit as st | |
| from tensorflow.keras.models import load_model | |
| from PIL import Image | |
| import numpy as np | |
| import cv2 | |
| model=load_model('date_fruit_class_cnn.h5') | |
| def process_image(img): | |
| img=img.resize((224,224)) | |
| img=np.array(img) | |
| img=img/255.0 | |
| img=np.expand_dims(img,axis=0) | |
| return img | |
| st.title('Hurma sınıflandırma') | |
| st.write('Resim sec ve model tahmin etsin') | |
| file=st.file_uploader('Bir resim seç', type= ['jpg','jpeg','png']) | |
| class_names=['Ajwa', 'Medjool','Nabtat Ali', 'Shaishe', 'Sugaey', 'Galaxy', 'Meneifi','Rutab', 'Sokari'] | |
| if file is not None: | |
| img=Image.open(file) | |
| st.image(img,caption='yuklenen resim') | |
| image=process_image(img) | |
| prediction=model.predict(image) | |
| predicted_class=np.argmax(prediction) | |
| st.write('Olasıık Dağılımı') | |
| st.write(prediction) | |
| st.write("Tahmin: ",class_names[predicted_class]) |