import gradio as gr import tensorflow as tf import numpy as np from PIL import Image model_path = "transferlearning_pokemon.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 150x150 image = np.array(image) image = np.expand_dims(image, axis=0) # Expand dimensions to match the model input shape # Predict prediction = model.predict(image) # Print the shape of the prediction to debug print(f"Prediction shape: {prediction.shape}") # Assuming the output is already softmax probabilities probabilities = prediction[0] # Print the probabilities array to debug print(f"Probabilities: {probabilities}") # Assuming your model was trained with these class names class_names = ['charmander', 'eevee', 'pikachuu'] # Replace 'another_pokemon' with your third class name # Create a dictionary of class probabilities result = {class_names[i]: float(probabilities[i]) for i in range(len(class_names))} return result # Create the Gradio interface input_image = gr.Image() iface = gr.Interface( fn=predict_pokemon, inputs=input_image, outputs=gr.Label(), examples=["pokemon_examples/charmander.png", "pokemon_examples/charmander1.jpg", "pokemon_examples/eevee.png", "pokemon_examples/eevee1.jpg", "pokemon_examples/pika.png", "pokemon_examples/pika1.jpg"], description="A simple mlp classification model for image classification using the mnist dataset.") iface.launch()