exercise2 / app.py
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Update app.py
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import gradio as gr
import tensorflow as tf
import numpy as np
from PIL import Image
model_path = "Pokemon_transfer_learning.keras"
model = tf.keras.models.load_model(model_path)
# Define the core prediction function
def predict_pokemon(image):
# Preprocess image
print(type(image))
image = Image.fromarray(image.astype('uint8')) # Convert numpy array to PIL image
image = image.resize((150, 150)) #resize the image to 28x28 and converts it to gray scale
image = np.array(image)
image = np.expand_dims(image, axis=0) # same as image[None, ...]
# Predict
prediction = model.predict(image)
# Because the output layer was dense(0) without an activation function, we need to apply sigmoid to get the probability
# we could also change the output layer to dense(1, activation='sigmoid')
prediction = np.round(prediction, 2)
# Separate the probabilities for each class
p_abra = prediction[0][0] # Probability for class 'abra'
p_beedrill = prediction[0][1] # Probability for class 'beedrill'
p_sandshrew = prediction[0][2] # Probability for class 'sandshrew'
return {'abra': p_abra, 'beedrill': p_beedrill, 'sandshrew': p_sandshrew}
# Create the Gradio interface
input_image = gr.Image()
iface = gr.Interface(
fn=predict_pokemon,
inputs=input_image,
outputs=gr.Label(),
examples=["images/abra1.png", "images/abra2.jpg", "images/abra3.png", "images/beedrill1.png", "images/beedrill2.png", "images/beedrill3.jpg", "images/sandshrew1.png", "images/sandshrew2.jpg", "images/sandshrew3.png"],
description="A simple mlp classification model for image classification using the mnist dataset.")
iface.launch(share=True)