realistic-vision-v51

Maintained By
stablediffusionapi

Realistic Vision v5.1

PropertyValue
LicenseCreativeML OpenRAIL-M
Downloads21,576
Likes31
Authorstablediffusionapi

What is realistic-vision-v51?

Realistic Vision v5.1 is a sophisticated text-to-image generation model designed to create ultra-realistic images with particular strength in portrait and cyberpunk aesthetics. Built on the Stable Diffusion architecture, it offers exceptional detail and photorealistic output with advanced control over image parameters.

Implementation Details

The model is implemented using the StableDiffusionPipeline framework and utilizes Safetensors for efficient model weight storage. It features a comprehensive API integration through ModelsLab, allowing for easy deployment and scalable image generation.

  • Customizable image dimensions (default 512x512)
  • Adjustable inference steps (recommended: 30)
  • Guidance scale fine-tuning (default: 7.5)
  • Optional safety checker and prompt enhancement

Core Capabilities

  • Ultra-realistic portrait generation
  • Advanced cyberpunk aesthetic rendering
  • High-detail environmental and lighting control
  • Photographic quality parameter simulation (aperture, ISO, shutter speed)
  • Multi-lingual prompt support
  • Panorama generation options

Frequently Asked Questions

Q: What makes this model unique?

The model excels in creating ultra-realistic portraits with specific attention to lighting, detail, and photographic qualities. It's particularly adept at handling cyberpunk aesthetics and can simulate professional camera parameters for more authentic results.

Q: What are the recommended use cases?

This model is ideal for creating professional-grade portraits, cyberpunk-themed artwork, and photorealistic images. It's particularly suitable for projects requiring high-detail output with specific lighting and environmental controls.

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