Mask Generation
Transformers
Safetensors
falcon_perception
text-generation
falcon
segmentation
vision-language
open-vocabulary
custom_code
Eval Results
Instructions to use tiiuae/Falcon-Perception with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use tiiuae/Falcon-Perception with Transformers:
# Use a pipeline as a high-level helper from transformers import pipeline pipe = pipeline("mask-generation", model="tiiuae/Falcon-Perception", trust_remote_code=True)# Load model directly from transformers import AutoModelForCausalLM model = AutoModelForCausalLM.from_pretrained("tiiuae/Falcon-Perception", trust_remote_code=True, dtype="auto") - Notebooks
- Google Colab
- Kaggle
| pipeline_tag: mask-generation | |
| library_name: transformers | |
| tags: | |
| - falcon | |
| - segmentation | |
| - vision-language | |
| - open-vocabulary | |
| license: apache-2.0 | |
| <img src="main_fig.jpg" width="480" alt="Falcon Perception"/> | |
| ## Falcon Perception | |
| Falcon Perception is a 0.6B parameter early-fusion vision-language model for open-vocabulary grounding and instance segmentation. Given an image and a natural language query, it returns zero, one, or many matching instances with pixel-accurate masks. | |
| The model is built around a simple interface. Image patches and text tokens are processed together in a single Transformer using a hybrid attention mask: image tokens build bidirectional visual context, while text and task tokens decode causally conditioned on the image. For each instance, the model generates a short structured sequence of task tokens in a fixed order, `<|coord|>` then `<|size|>` then `<|seg|>`. The `<|seg|>` token acts as a mask query whose hidden state is projected and dotted with upsampled image features, producing a full-resolution binary mask without autoregressive mask generation. | |
| ### Links | |
| - Code and inference engine: `https://github.com/tiiuae/Falcon-Perception` | |
| - Tech report: arXiv link coming soon | |
| - PBench dataset: `tiiuae/PBench` | |
| - OCR model: `tiiuae/Falcon-OCR` | |
| ## Quickstart | |
| ### Installation | |
| ```bash | |
| pip install "torch>=2.5" transformers pillow einops pycocotools | |
| ``` | |
| This model requires PyTorch 2.5 or newer for FlexAttention. The first call can be slower because `torch.compile` may build optimized kernels. | |
| ### Run open-vocabulary segmentation | |
| ```python | |
| import torch | |
| from PIL import Image | |
| from transformers import AutoModelForCausalLM | |
| model = AutoModelForCausalLM.from_pretrained( | |
| "tiiuae/falcon-perception", | |
| trust_remote_code=True, | |
| device_map={"": "cuda:0"}, | |
| ) | |
| image = Image.open("photo.jpg") | |
| preds = model.generate(image, "cat")[0] | |
| for p in preds: | |
| print(p["xy"], p["hw"]) | |
| ``` | |
| ### Decode masks | |
| ```python | |
| import numpy as np | |
| from pycocotools import mask as mask_utils | |
| for p in preds: | |
| rle = p["mask_rle"] | |
| # pycocotools expects bytes for counts | |
| m = {"size": rle["size"], "counts": rle["counts"].encode("utf-8")} | |
| mask = mask_utils.decode(m).astype(bool) # H x W | |
| print(mask.shape, mask.sum()) | |
| ``` | |
| ## API | |
| ### `model.generate(images, queries, **kwargs)` | |
| | Parameter | Type | Default | Description | | |
| |---|---|---|---| | |
| | `images` | `PIL.Image` or `list` | required | Single image or list of images | | |
| | `queries` | `str` or `list[str]` | required | Query string(s), one per image | | |
| | `max_new_tokens` | `int` | `2048` | Maximum decoding steps | | |
| | `min_dimension` | `int` | `256` | Minimum image side after resize | | |
| | `max_dimension` | `int` | `1024` | Maximum image side after resize | | |
| | `compile` | `bool` | `True` | Run `torch.compile` on first call | | |
| **Returns:** `list[list[dict]]`, one list per image. | |
| Each prediction dict contains: | |
| ```python | |
| { | |
| "xy": {"x": float, "y": float}, # center in normalized coordinates (0 to 1) | |
| "hw": {"h": float, "w": float}, # size in normalized coordinates (0 to 1) | |
| "mask_rle": {"counts": str, "size": [H, W]}, # COCO RLE at original resolution | |
| } | |
| ``` | |
| ## What the model is for | |
| Falcon Perception is designed for dense grounding regimes where the main difficulty is localization under open vocabulary. That includes: | |
| - Natural language driven object selection in images | |
| - Promptable instance segmentation for downstream pipelines | |
| - Crowded scenes where the number of instances is large and variable | |
| It is not intended as a general-purpose vision-language assistant for open-ended reasoning, long-form generation, or multi-step VQA. | |
| ## Model details (high level) | |
| The architecture follows a single-stack early-fusion recipe: | |
| - One dense Transformer backbone processes image patches and text tokens in a shared space from the first layer | |
| - Hybrid attention masking: bidirectional among image tokens, causal for text and task tokens conditioned on the image | |
| - Chain-of-Perception decoding: `<|coord|>` then `<|size|>` then `<|seg|>` per instance | |
| - Specialized heads for coordinates and size, with geometry conditioning via Fourier features | |
| - Parallel mask decoding: each `<|seg|>` token becomes a mask query and produces a full-resolution mask via dot product with upsampled image features | |
| ## Evaluation summary | |
| From the technical report: | |
| - SA-Co (open-vocabulary segmentation): 68.0 Macro F1 compared to 62.3 for SAM 3, with the main remaining gap being presence calibration (Average MCC 0.64 compared to 0.82 for SAM 3) | |
| - PBench: a diagnostic benchmark that breaks down performance by capability (attributes, OCR-guided disambiguation, spatial constraints, relations) and includes a dense long-context crowded split | |
| Full tables, setup details, and ablations are in the report. | |
| ## Limitations | |
| - Presence calibration remains a key limitation for autoregressive dense interfaces. False positives are more likely on hard negatives than in DETR like segmentation models. | |
| - OCR-driven prompts depend on text size and image resolution. Small text and degraded scans are challenging. | |
| - Dense scenes benefit strongly from high resolution inputs. Low resolution can be sufficient to recognize that a concept is present, but insufficient to localize each instance precisely. | |
| ## Citation | |
| If you use Falcon Perception, please cite: | |
| ```bibtex | |
| @article{bevli2026falcon, | |
| title = {Falcon Perception}, | |
| author = {Bevli, Aviraj and Chaybouti, Sofian and Dahou, Yasser and Hacid, Hakim and Huynh, Ngoc Dung and Le Khac, Phuc H. and Narayan, Sanath and Para, Wamiq Reyaz and Singh, Ankit}, | |
| journal = {arXiv preprint arXiv:2603.27365}, | |
| year = {2026}, | |
| url = {https://arxiv.org/abs/2603.27365} | |
| } | |
| ``` |