#!/usr/bin/env python3 # -*- coding: utf-8 -*- """ Created on Tue Jan 13 09:52:28 2026 @author: standarduser """ from gradio_client import Client, handle_file import gradio as gr def predict_from_space(image_path): """Classify image using Space API.""" client = Client("ElBeh/image-fake-detector") try: result = client.predict( image=handle_file(image_path), api_name="/predict" ) # Gradio Label format: {'label': 'Fake', 'confidences': [{'label': 'Fake', 'confidence': 0.88}, ...]} confidences = result['confidences'] # Extract probabilities from confidences list proba_dict = {item['label']: item['confidence'] for item in confidences} proba_real = proba_dict.get('Real', 0.0) proba_fake = proba_dict.get('Fake', 0.0) # Determine prediction prediction = 1 if proba_fake > 0.5 else 0 label = "Fake" if prediction == 1 else "Real" confidence = proba_fake if prediction == 1 else proba_real print(f"\nPrediction: {label}") print(f"Confidence: {confidence:.4f} ({confidence*100:.2f}%)") print(f"Real: {proba_real:.4f} | Fake: {proba_fake:.4f}") return { 'Real': float(proba_real), 'Fake': float(proba_fake) } except Exception as e: print(f"Error: {e}") raise def create_tab_classify_image(tab_label): with gr.TabItem(tab_label): gr.Interface( fn=predict_from_space, inputs=[ gr.Image(type="filepath", label="Upload Image"), ], outputs=gr.Label(num_top_classes=2, label="Prediction"), title="Image Fake Detector", description="Upload an image to classify it as real or fake. The detector(XGBoost) uses several image statistics to classify the image." )