--- title: Foveated Diffusion Demo emoji: 👁️ colorFrom: gray colorTo: blue sdk: gradio sdk_version: 6.14.0 app_file: app.py pinned: false license: apache-2.0 suggested_hardware: l40sx1 hf_oauth: false # Spaces' default startup timeout (30 min) isn't enough for FLUX.2 + LoRAs to # download on first boot. Bump to 1 h so cold starts don't fail. startup_duration_timeout: 5h tags: - lora - diffusion - foveated-rendering - text-to-image - flux github: https://github.com/bchao1/foveated_diffusion --- # Foveated Diffusion — live demo Live demo of [**Foveated Diffusion: Efficient Spatially Adaptive Image and Video Generation**](https://bchao1.github.io/foveated-diffusion/). Place a circular foveal region you want rendered at high resolution, pick a LoRA adapter, and run a 50-step inference pass through the foveated FLUX.2 pipeline. - Project page: https://bchao1.github.io/foveated-diffusion/ - Paper: https://arxiv.org/abs/2603.23491 - Code: https://github.com/bchao1/foveated_diffusion - Model weights: https://huggingface.co/bchao1/foveated_diffusion ## How to use 1. Type a prompt and pick a seed. 2. Choose a LoRA from the dropdown: - `no_fov` — finetuned baseline, no foveation conditioning (always full-HR). - `random` — foveation conditioning at random gaze locations. - `saliency` — saliency-driven foveation masks. 3. Set the foveal circle: center `cx, cy ∈ [-0.5, 0.5]` (0 = image center) and radius `r` (relative to half the image diagonal). With `no_fov` the controls are disabled — the whole image is rendered HR. 4. The **Tokenization mask** preview shows exactly which 32×32-px blocks will be rendered at HR (white) vs LR (gray) before you commit. 5. Click **Generate**. The denoising progress bar reports steps `k / 50`. ## Fixed pipeline settings | Setting | Value | |---|---| | Resolution | 1024 × 1024 | | Steps | 50 | | CFG | 4.0 | | Decode mode | `merge` | | Prediction type | `clean` | | LR downsample factor | 2 | | Soft foveation blend | on | ## Hardware FLUX.2-klein-base-4B + LoRA in `bfloat16` needs ~30 GB of VRAM. We recommend running this Space on an **L40S** (`l40sx1`) or larger GPU tier. The CPU-Basic free tier cannot host the model. ## Citation ```bibtex @misc{chao2026foveateddiffusion, title={Foveated Diffusion: Efficient Spatially Adaptive Image and Video Generation}, author={Brian Chao and Lior Yariv and Howard Xiao and Gordon Wetzstein}, year={2026}, eprint={2603.23491}, archivePrefix={arXiv}, primaryClass={cs.CV}, url={https://arxiv.org/abs/2603.23491}, } ```