--- license: apache-2.0 pipeline_tag: image-segmentation tags: - model_hub_mixin - pytorch_model_hub_mixin --- # EdgeCrafter: Compact ViTs for Edge Dense Prediction EdgeCrafter is a unified framework for compact Vision Transformers (ViTs) designed for high-performance dense prediction (detection, instance segmentation, and pose estimation) on resource-constrained edge devices. This specific model, **ECSeg-S**, is a lightweight instance segmentation model. - **Paper:** [EdgeCrafter: Compact ViTs for Edge Dense Prediction via Task-Specialized Distillation](https://huggingface.co/papers/2603.18739) - **GitHub Repository:** [Intellindust-AI-Lab/EdgeCrafter](https://github.com/Intellindust-AI-Lab/EdgeCrafter) - **Project Page:** [EdgeCrafter Project Page](https://intellindust-ai-lab.github.io/projects/EdgeCrafter/) ## Model Description ECSeg-S is built using a distilled compact backbone and an edge-friendly encoder-decoder design. It achieves a strong accuracy-efficiency tradeoff, making it suitable for real-time applications on edge hardware. For instance segmentation, it achieves performance comparable to RF-DETR while using significantly fewer parameters. ## Quick Start (Inference) To run inference on a sample image, follow the instructions from the official repository: ### 1. Installation ```bash # Create conda environment conda create -n ec python=3.11 -y conda activate ec # Install dependencies pip install -r requirements.txt ``` ### 2. Run Inference ```bash # Navigate to the detection/segmentation folder cd ecdetseg # Run PyTorch inference # Replace `path/to/your/image.jpg` with an actual image path python tools/inference/torch_inf.py -c configs/ecseg/ecseg_s.yml -r /path/to/ecseg_s.pth -i path/to/your/image.jpg ``` ## Citation If you find EdgeCrafter useful in your research, please consider citing: ```bibtex @article{liu2026edgecrafter, title={EdgeCrafter: Compact ViTs for Edge Dense Prediction via Task-Specialized Distillation}, author={Liu, Longfei and Hou, Yongjie and Li, Yang and Wang, Qirui and Sha, Youyang and Yu, Yongjun and Wang, Yinzhi and Ru, Peizhe and Yu, Xuanlong and Shen, Xi}, journal={arXiv}, year={2026} } ```