gcvit-tf / app.py
awsaf49's picture
file added
3126b1e
raw
history blame
1.09 kB
import tensorflow as tf
import gradio as gr
import gcvit
from gcvit.utils import get_gradcam_model, get_gradcam_prediction
def predict_fn(image, model_name):
"""A predict function that will be invoked by gradio."""
model = getattr(gcvit, model_name)(pretrain=True)
gradcam_model = get_gradcam_model(model)
preds, overlay = get_gradcam_prediction(image, gradcam_model, cmap='jet', alpha=0.4, pred_index=None)
preds = {x[1]:x[2] for x in preds}
return [preds, overlay]
demo = gr.Interface(
fn=predict_fn,
inputs=[
gr.inputs.Image(label="Input Image"),
gr.Radio(['GCViTTiny', 'GCViTSmall', 'GCViTBase'], value='GCViTTiny', label='Model Size')
],
outputs=[
gr.outputs.Label(label="Prediction"),
gr.inputs.Image(label="GradCAM"),
],
title="Global Context Vision Transformer (GCViT) Demo",
description="ImageNet Pretrain.",
examples=[
["example/african_elephant.png"],
["example/chelsea.png"],
["example/german_shepherd.jpg"],
["example/panda.jpg"],
],
)
demo.launch()