DL_project / app.py
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from gradio import Interface, Image, Label
import tensorflow as tf
# Load your TensorFlow model
model = tf.keras.models.load_model("bird_species_classification_model.h5")
# Define your class names if needed
class_names = ['ABBOTTS BABBLER', 'ABBOTTS BOOBY', 'ABYSSINIAN GROUND HORNBILL', 'AFRICAN CROWNED CRANE', 'AFRICAN EMERALD CUCKOO', 'AFRICAN FIREFINCH', 'AFRICAN OYSTER CATCHER', 'AFRICAN PIED HORNBILL', 'AFRICAN PYGMY GOOSE', 'ALBATROSS', 'ALBERTS TOWHEE', 'ALEXANDRINE PARAKEET', 'ALPINE CHOUGH', 'ALTAMIRA YELLOWTHROAT', 'AMERICAN AVOCET', 'AMERICAN BITTERN', 'AMERICAN COOT', 'AMERICAN FLAMINGO', 'AMERICAN GOLDFINCH', 'AMERICAN KESTREL']
# Function to make predictions
def classify_image(image):
# Preprocess the image
img = tf.image.resize(image, (224, 224))
img = tf.expand_dims(img, 0) # Add batch dimension
# Make prediction
prediction = model.predict(img)
predicted_class = class_names[prediction.argmax()]
return predicted_class
# Gradio interface
image = Image() # Remove the `shape` argument
label = Label()
# Create interface
interface = Interface(classify_image, image, label,
title="Bird Species Classification",
description="Upload an image of a bird to classify its species.").launch()