ericbill21/FOCUS
Official codebase for FOCUS: Optimal Control Meets Flow Matching: A Principled Route to Multi-Subject Fidelity
This tool helps creative professionals and marketers generate high-quality images from text descriptions, especially when those descriptions involve multiple subjects or complex scenes. It takes your text prompt as input and produces an image where each element in your prompt is accurately represented, avoiding common issues like elements blending together or disappearing. This is perfect for digital artists, content creators, and marketing teams needing precise visual assets.
Use this if your current text-to-image models struggle to accurately depict multiple distinct subjects or specific details within a single generated image.
Not ideal if you primarily generate single-subject images or don't require high fidelity for complex, multi-entity scenes.
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Last pushed
Nov 18, 2025
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