Detección ML
Modelo Hugging Face Transformer
Nuestra detección ML usa modelos Transformer entrenados en millones de imágenes.
Cómo Funciona
La red neuronal analiza patrones visuales, texturas y artefactos sutiles invisibles al ojo humano pero característicos de la generación por IA. Examina características a nivel de píxel, distribuciones de color y patrones estructurales.
Image Input
Upload any image file
Preprocessing
Resize and normalize
Analysis
Transformer model inference
Result
AI probability score
Technical Specifications
Model Details
- Model ViT-based Classifier
- Source Hugging Face
- Training Data 1M+ images
- Processing CPU-optimized
Detection Capabilities
- Stable Diffusion variants
- Midjourney outputs
- DALL-E generations
- Other diffusion models
Frequently Asked Questions
What is Machine Learning detection for AI images?
ML detection uses trained neural networks (specifically Vision Transformers) to analyze images and identify patterns characteristic of AI-generated content, such as those from Stable Diffusion, DALL-E, or Midjourney.
Why is ML detection weighted at 40%?
ML detection is our most accurate single method, trained on millions of images. It achieves 92-98% accuracy on direct AI outputs, making it the primary signal in our ensemble detection system.
What AI generators can ML detection identify?
Our ML model detects images from Stable Diffusion (all versions), DALL-E 2 & 3, Midjourney, Adobe Firefly, Leonardo.ai, and most diffusion-based generators.
How does the Vision Transformer work?
Vision Transformers (ViT) divide images into patches and learn attention patterns between them. They can identify subtle correlations that differ between AI-generated and real photographs.
Does image compression affect ML detection?
Moderate JPEG compression (quality 60-100) has minimal impact. Heavy compression or multiple re-compressions can reduce accuracy, which is why we use ensemble methods.
What image formats are supported?
We support JPEG, PNG, WebP, BMP, and TIFF formats. All images are preprocessed to 224x224 pixels while preserving aspect ratio for optimal model inference.
How fast is the ML detection?
Our CPU-optimized model processes images in under 500ms. GPU acceleration can reduce this to under 50ms for batch processing.
Can ML detection identify edited photos?
ML detection focuses on fully AI-generated images. For AI-enhanced or partially edited photos, other methods like clone detection work better.
Is the model updated for new AI generators?
Yes, we regularly retrain our models to include outputs from the latest AI image generators. The current model is trained on images from 2024-2026 generators.
What is the false positive rate?
Our ML model has a false positive rate under 2% for standard photographs. Heavily filtered or stylized photos may occasionally trigger false positives, which ensemble methods help mitigate.
Métodos relacionados
Análisis PRNU
Photo Response Non-Uniformity (PRNU) detects unique camera sensor fingerprints from manufacturing imperfections. AI images cannot replicate these authentic sensor signatures.
Análisis de Frecuencia
El análisis del dominio de frecuencia examina la distribución de componentes de alta y baja frecuencia en una imagen. Las imágenes generadas por IA típicamente carecen del ruido natural de alta frecuencia presente en fotografías reales.
Análisis de gradiente
Analyzes edge patterns and texture characteristics using Sobel, Canny, and Laplacian operators. AI images often have unnaturally smooth or uniform gradients.
Patrón de ruido
Las fotografías reales contienen patrones de ruido únicos de los sensores de cámara que varían a través de la imagen. Las imágenes generadas por IA tienen una distribución de ruido anormalmente uniforme.
Análisis de metadatos
Los metadatos de imagen contienen pistas valiosas sobre su origen. Analizamos datos EXIF, firmas de software y otra información incrustada para identificar herramientas de generación de IA.
Huella GAN
Detecta artefactos específicos de GAN como patrones de tablero de ajedrez y bandas de color.
Análisis de textura
Análisis Local Binary Pattern para anomalías de textura en imágenes IA.
Detección Anatómica
Los generadores de imágenes de IA a menudo crean errores anatómicos que los humanos reconocen inmediatamente como incorrectos. Usamos visión por computadora para detectar estos errores reveladores.
Verificación C2PA
C2PA (Coalition for Content Provenance and Authenticity) es un estándar de la industria para rastrear el origen y la historia del contenido digital a través de firmas criptográficas.
Semantic Inconsistency Detection
Detects logical inconsistencies like incorrect shadows, impossible perspectives, distorted reflections, and violations of physical laws that AI often produces.
Human Biometric Analysis
Uses MediaPipe to analyze human anatomy for incorrect finger counts, asymmetric eyes, unnatural skin texture, and other anatomical anomalies common in AI-generated faces.
Lighting Physics Validation
Validates light source consistency, shadow direction physics, specular highlight accuracy, and color temperature uniformity across the image.
Compression Artifact Analysis
Analyzes JPEG compression artifacts to estimate quality levels and detect re-compression patterns that indicate image manipulation or AI generation.
Edge Sharpness Analysis
Analyzes sharpness distribution across the image and validates depth-of-field consistency. AI often produces unnaturally uniform sharpness.
Statistical Pattern Analysis
Analyzes statistical properties including Shannon entropy, histogram patterns, and Benford's Law compliance to detect synthetic image characteristics.
Chromatic Aberration Analysis
Detects the absence of chromatic aberration (color fringing) that real camera lenses produce. AI images lack these optical artifacts.
Micro-Texture Analysis
Analyzes microscopic texture patterns for repetition, uniformity, and unnatural randomness that AI generators often exhibit.
Color Palette Analysis
Analyzes color distribution including saturation levels, color diversity, and white balance consistency. AI images often have oversaturated colors.
Verificar Tu Imagen
Todos los métodos se combinan usando puntuación ponderada para producir un veredicto final con nivel de confianza.
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