--- library_name: transformers pipeline_tag: text-to-image license: other --- # InstanceControl: Sa2va-Instance-4B (Stage 1) This repository contains the `Sa2va-Instance-4B` checkpoint, which serves as **Stage 1** (Instance Parsing Model) for **InstanceControl**, presented in the paper [InstanceControl: Controllable Complex Image Generation without Instance Labeling](https://huggingface.co/papers/2606.31924). * **Project Page:** [InstanceControl Homepage](https://instancecontrol.github.io/InstanceControl/) * **GitHub Repository:** [InstanceControl GitHub](https://github.com/liuxiaoyu1104/InstanceControl) * **Paper:** [arXiv:2606.31924](https://huggingface.co/papers/2606.31924) ## Model Description InstanceControl is a multi-instance controllable generation method that eliminates the need for manual instance labeling. It uses a Vision-Language Model (VLM)—specifically this `Sa2va-Instance-4B` model—to automatically parse instance descriptions from text prompts and predict instance masks based on visual conditions (such as Canny edges, depth, or HED). ## Usage For detailed instructions on setup, environment installation, and running the inference pipeline, please refer to the [official GitHub repository](https://github.com/liuxiaoyu1104/InstanceControl). ### Predict Instance Masks (Stage 1) You can run the model to predict instance masks using the following command: ```bash python stage1_Sa2VA/projects/llava_sam2/evaluation/gcg_eval_our_folders.py \ --model_path /path/to/Sa2va-Instance-4B \ --image_dir ./example/canny \ --json_dir ./example/json \ --save_dir ./results/json_pred_canny ``` ## Citation If you find this project useful, please cite the authors' work: ```bibtex @article{liu2026instancecontrol, title={InstanceControl: Controllable Complex Image Generation without Instance Labeling}, author={Xiaoyu Liu and Huan Wang and Fan Li and Zhixin Wang and Jiaqi Xu and Ming Liu and Wangmeng Zuo}, journal={arXiv preprint arXiv:2606.31924}, year={2026} } ```