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[ECCV 2024] Tokenize Anything via Prompting
Tokenize Anything via Prompting
Ting Pan1,2*, Lulu Tang2*, Xinlong Wang2¶, Shiguang Shan1
We present Tokenize Anything via Prompting, a unified and promptable model capable of simultaneously segmenting, recognizing, and captioning arbitrary regions, with flexible visual prompts (point, box and sketch). The model is trained with exhaustive segmentation masks sourced from SA-1B, coupled with semantic priors from a pre-trained EVA-CLIP with 5 billion parameters.
Installation
Preliminaries
torch
flash-attn
>= 2.3.3 (Install the pre-built wheel distribution from URL)
gradio-image-prompter
(for GradioApp, Install from URL)
Installing Package
Clone this repository to local disk and install:
cd tokenize-anything && pip install .
You can also install from the remote repository:
pip install git+ssh://[email protected]/baaivision/tokenize-anything.git
Quick Start
Development
The TAP models can be used for diverse vision and language tasks.
We adopt a modular design that decouples all components and predictors.
As a best practice, implement your custom predictor and asynchronous pipeline as follows:
from tokenize_anything import model_registry
with <distributed_actor>:
model = model_registry["<model_type>"](checkpoint="<path/to/checkpoint>")
results = <custom_predictor>(model, *args, **kwargs)
server.collect_results()
See builtin examples (web-demo and evaluations) provided in scripts for more details.
Inference
See Inference Guide.
See Concept Guide.
Evaluation
See Evaluation Guide for TAP-L.
See Evaluation Guide for TAP-B.
Models
Model weights
Two versions of the model are available with different image encoders.
Model | Description | Schedule | MD5 | Weights |
---|---|---|---|---|
tap_vit_l | ViT-L TAP v1.1 model | (100% SA-1B, 180k), (VG, 50ep) | c1d41f | 🤗 HF link |
tap_vit_b | ViT-B TAP v1.1 model | (100% SA-1B, 180k), (VG, 50ep) | 707f80 | 🤗 HF link |
tap_vit_l | ViT-L TAP v1.0 model | (50% SA-1B, 90k), (VG, 25ep) | 03f8ec | 🤗 HF link |
tap_vit_b | ViT-B TAP v1.0 model | (50% SA-1B, 90k), (VG, 25ep) | b45cbf | 🤗 HF link |
V1.1 Release Notes
- Use a longer pre-training and fine-tuning schedule (improved segmentation and caption performance).
- Apply weight decay for all bias parameters (avoid FP16 overflow in QK matmul).
- Sample point prompts from predicted mask instead of GT box during VG training.
Concept weights
Note: You can generate these weights following the Concept Guide.
Concept | Description | Weights |
---|---|---|
Merged-2560 | Merged concepts | 🤗 HF link |
LVIS-1203 | LVIS concepts | 🤗 HF link |
COCO-80 | COCO concepts | 🤗 HF link |
License
Apache License 2.0
Citation
@article{pan2023tap,
title={Tokenize Anything via Prompting},
author={Pan, Ting and Tang, Lulu and Wang, Xinlong and Shan, Shiguang},
journal={arXiv preprint arXiv:2312.09128},
year={2023}
}
Acknowledgement
We thank the repositories: SAM, EVA, LLaMA, FlashAttention, Gradio, Detectron2 and CodeWithGPU.