aimagelab/MAD
Official PyTorch implementation for "Merging and Splitting Diffusion Paths for Semantically Coherent Panoramas", presenting the Merge-Attend-Diffuse operator (ECCV24)
This tool helps you create ultra-wide, immersive panoramic images from simple text descriptions. You provide a prompt describing the scene you want, and it generates a sprawling image that feels naturally connected and cohesive across its entire width, unlike standard image generators. It's for designers, marketers, or anyone needing highly specific, expansive visuals without complex photo editing.
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Use this if you need to generate unique, semantically coherent panoramic images from text prompts for creative projects, marketing materials, or visual content creation.
Not ideal if you need to generate standard-sized images, edit existing photos, or require precise photorealistic output of real-world scenes.
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Python
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Last pushed
Jul 09, 2025
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