:label: Recognize Anything Model

August 1, 2024 · View on GitHub

This project aims to develop a series of open-source and strong fundamental image recognition models.

Training Dataset Tag List Web Demo Open in Colab Open in Bohrium

  • Recognize Anything Plus Model (RAM++) [Paper]

    RAM++ is the next generation of RAM, which can recognize any category with high accuracy, including both predefined common categories and diverse open-set categories.

  • Recognize Anything Model (RAM) [Paper][Demo]

    RAM is an image tagging model, which can recognize any common category with high accuracy.

    RAM is accepted at CVPR 2024 Multimodal Foundation Models Workshop.

  • Tag2Text (ICLR 2024) [Paper] [Demo]

    Tag2Text is a vision-language model guided by tagging, which can support tagging and comprehensive captioning simultaneously.

    Tag2Text is accepted at ICLR 2024! See you in Vienna!

:bulb: Highlight

Superior Image Recognition Capability

RAM++ outperforms existing SOTA image fundamental recognition models on common tag categories, uncommon tag categories, and human-object interaction phrases.

Comparison of zero-shot image recognition performance.

Strong Visual Semantic Analysis

We have combined Tag2Text and RAM with localization models (Grounding-DINO and SAM) and developed a strong visual semantic analysis pipeline in the Grounded-SAM project.

:sunrise: Model Zoo

RAM++

RAM++ is the next generation of RAM, which can recognize any category with high accuracy, including both predefined common categories and diverse open-set categories.

  • For Common Predefined Categoies. RAM++ exhibits exceptional image tagging capabilities with powerful zero-shot generalization, which maintains the same capabilities as RAM.
  • For Diverse Open-set Categoires. RAM++ achieves notably enhancements beyond CLIP and RAM.

(Green color means fully supervised learning and others means zero-shot performance.)

RAM++ demonstrate a significant improvement in open-set category recognition.

RAM

RAM is a strong image tagging model, which can recognize any common category with high accuracy.

  • Strong and general. RAM exhibits exceptional image tagging capabilities with powerful zero-shot generalization;
    • RAM showcases impressive zero-shot performance, significantly outperforming CLIP and BLIP.
    • RAM even surpasses the fully supervised manners (ML-Decoder).
    • RAM exhibits competitive performance with the Google tagging API.
  • Reproducible and affordable. RAM requires Low reproduction cost with open-source and annotation-free dataset;
  • Flexible and versatile. RAM offers remarkable flexibility, catering to various application scenarios.

(Green color means fully supervised learning and Blue color means zero-shot performance.)

RAM significantly improves the tagging ability based on the Tag2text framework.

  • Accuracy. RAM utilizes a data engine to generate additional annotations and clean incorrect ones, higher accuracy compared to Tag2Text.
  • Scope. RAM upgrades the number of fixed tags from 3,400+ to 6,400+ (synonymous reduction to 4,500+ different semantic tags), covering more valuable categories. Moreover, RAM is equipped with open-set capability, feasible to recognize tags not seen during training
Tag2text

Tag2Text is an efficient and controllable vision-language model with tagging guidance.

  • Tagging. Tag2Text recognizes 3,400+ commonly human-used categories without manual annotations.
  • Captioning. Tag2Text integrates tags information into text generation as the guiding elements, resulting in more controllable and comprehensive descriptions.
  • Retrieval. Tag2Text provides tags as additional visible alignment indicators for image-text retrieval.

Tag2Text generate more comprehensive captions with tagging guidance.

Tag2Text provides tags as additional visible alignment indicators.

:open_book: Training Datasets

Image Texts and Tags

These annotation files come from the Tag2Text and RAM. Tag2Text automatically extracts image tags from image-text pairs. RAM further augments both tags and texts via an automatic data engine.

DataSetSizeImagesTextsTags
COCO168 MB113K680K3.2M
VG55 MB100K923K2.7M
SBU234 MB849K1.7M7.6M
CC3M766 MB2.8M5.6M28.2M
CC3M-val3.5 MB12K26K132K

CC12M to be released in the next update.

LLM Tag Descriptions

These tag descriptions files come from the RAM++ by calling GPT api. You can also customize any tag categories by generate_tag_des_llm.py.

Tag DescriptionsTag List
RAM Tag List4,585
OpenImages Uncommon200

:toolbox: Checkpoints

Note : you need to create 'pretrained' folder and download these checkpoints into this folder.

Name Backbone Data Illustration Checkpoint
1 RAM++ (14M) Swin-Large COCO, VG, SBU, CC3M, CC3M-val, CC12M Provide strong image tagging ability for any category. Download link
2 RAM (14M) Swin-Large COCO, VG, SBU, CC3M, CC3M-val, CC12M Provide strong image tagging ability for common category. Download link
3 Tag2Text (14M) Swin-Base COCO, VG, SBU, CC3M, CC3M-val, CC12M Support comprehensive captioning and tagging. Download link

:running: Model Inference

Setting Up

  1. Create and activate a Conda environment:
conda create -n recognize-anything python=3.8 -y
conda activate recognize-anything
  1. Install recognize-anything as a package:
pip install git+https://github.com/xinyu1205/recognize-anything.git
  1. Or, for development, you may build from source:
git clone https://github.com/xinyu1205/recognize-anything.git
cd recognize-anything
pip install -e .

Then the RAM++, RAM, and Tag2Text models can be imported in other projects:

from ram.models import ram_plus, ram, tag2text

RAM++ Inference

Get the English and Chinese outputs of the images:

python inference_ram_plus.py --image images/demo/demo1.jpg --pretrained pretrained/ram_plus_swin_large_14m.pth

The output will look like the following:

Image Tags:  armchair | blanket | lamp | carpet | couch | dog | gray | green | hassock | home | lay | living room | picture frame | pillow | plant | room | wall lamp | sit | wood floor
图像标签:  扶手椅  | 毯子/覆盖层 | 灯  | 地毯  | 沙发 | 狗 | 灰色 | 绿色  | 坐垫/搁脚凳/草丛 | 家/住宅 | 躺  | 客厅  | 相框  | 枕头  | 植物  | 房间  | 壁灯  | 坐/放置/坐落 | 木地板

RAM++ Inference on Unseen Categories (Open-Set)

  1. Get the OpenImages-Uncommon categories of the image:

We have released the LLM tag descriptions of OpenImages-Uncommon categories in openimages_rare_200_llm_tag_descriptions.

python inference_ram_plus_openset.py  --image images/openset_example.jpg \
--pretrained pretrained/ram_plus_swin_large_14m.pth \
--llm_tag_des datasets/openimages_rare_200/openimages_rare_200_llm_tag_descriptions.json

The output will look like the following:

Image Tags: Close-up | Compact car | Go-kart | Horse racing | Sport utility vehicle | Touring car
  1. You can also customize any tag categories for recognition through tag descriptions:

Modify categories, and call GPT api to generate corresponding tag descriptions:

python generate_tag_des_llm.py \
--openai_api_key 'your openai api key' \
--output_file_path datasets/openimages_rare_200/openimages_rare_200_llm_tag_descriptions.json
RAM Inference

Get the English and Chinese outputs of the images:

python inference_ram.py  --image images/demo/demo1.jpg \
--pretrained pretrained/ram_swin_large_14m.pth

The output will look like the following:

Image Tags:  armchair | blanket | lamp | carpet | couch | dog | floor | furniture | gray | green | living room | picture frame | pillow | plant | room | sit | stool | wood floor
图像标签:  扶手椅  | 毯子/覆盖层 | 灯  | 地毯  | 沙发 | 狗 | 地板/地面 | 家具  | 灰色 | 绿色  | 客厅  | 相框  | 枕头  | 植物  | 房间  | 坐/放置/坐落 | 凳子  | 木地板 
RAM Inference on Unseen Categories (Open-Set)

Firstly, custom recognition categories in build_openset_label_embedding, then get the tags of the images:

python inference_ram_openset.py  --image images/openset_example.jpg \
--pretrained pretrained/ram_swin_large_14m.pth

The output will look like the following:

Image Tags: Black-and-white | Go-kart
Tag2Text Inference

Get the tagging and captioning results:

python inference_tag2text.py  --image images/demo/demo1.jpg 
--pretrained pretrained/tag2text_swin_14m.pth
Or get the tagging and sepcifed captioning results (optional):
python inference_tag2text.py  --image images/demo/demo1.jpg 
--pretrained pretrained/tag2text_swin_14m.pth
--specified-tags "cloud,sky"

Batch Inference and Evaluation

We release two datasets OpenImages-common (214 common tag classes) and OpenImages-rare (200 uncommon tag classes). Copy or sym-link test images of OpenImages v6 to datasets/openimages_common_214/imgs/ and datasets/openimages_rare_200/imgs.

To evaluate RAM++ on OpenImages-common:

python batch_inference.py \
  --model-type ram_plus \
  --checkpoint pretrained/ram_plus_swin_large_14m.pth \
  --dataset openimages_common_214 \
  --output-dir outputs/ram_plus

To evaluate RAM++ open-set capability on OpenImages-rare:

python batch_inference.py \
  --model-type ram_plus \
  -- pretrained/ram_plus_swin_large_14m.pth \
  --open-set \
  --dataset openimages_rare_200 \
  --output-dir outputs/ram_plus_openset

To evaluate RAM on OpenImages-common:

python batch_inference.py \
  --model-type ram \
  -- pretrained/ram_swin_large_14m.pth \
  --dataset openimages_common_214 \
  --output-dir outputs/ram

To evaluate RAM open-set capability on OpenImages-rare:

python batch_inference.py \
  --model-type ram \
  -- pretrained/ram_swin_large_14m.pth \
  --open-set \
  --dataset openimages_rare_200 \
  --output-dir outputs/ram_openset

To evaluate Tag2Text on OpenImages-common:

python batch_inference.py \
  --model-type tag2text \
  -- pretrained/tag2text_swin_14m.pth \
  --dataset openimages_common_214 \
  --output-dir outputs/tag2text

Please refer to batch_inference.py for more options. To get P/R in table 3 of RAM paper, pass --threshold=0.86 for RAM and --threshold=0.68 for Tag2Text.

To batch inference custom images, you can set up you own datasets following the given two datasets.

:golfing: Model Training/Finetuning

RAM++

  1. Download RAM training datasets where each json file contains a list. Each item in the list is a dictonary with three key-value pairs: {'image_path': path_of_image, 'caption': text_of_image, 'union_label_id': image tags for tagging which including parsed tags and pseudo tags }.

  2. In ram/configs/pretrain.yaml, set 'train_file' as the paths for the json files.

  3. Prepare pretained Swin-Transformer, and set 'ckpt' in ram/configs/swin.

  4. Download RAM++ frozen tag embedding file "ram_plus_tag_embedding_class_4585_des_51.pth", and set file in "ram/data/frozen_tag_embedding/ram_plus_tag_embedding_class_4585_des_51.pth"

  5. Pre-train the model using 8 A100 GPUs:

python -m torch.distributed.run --nproc_per_node=8 pretrain.py \
  --model-type ram_plus \
  --config ram/configs/pretrain.yaml  \
  --output-dir outputs/ram_plus
  1. Fine-tune the pre-trained checkpoint using 8 A100 GPUs:
python -m torch.distributed.run --nproc_per_node=8 finetune.py \
  --model-type ram_plus \
  --config ram/configs/finetune.yaml  \
  --checkpoint outputs/ram_plus/checkpoint_04.pth \
  --output-dir outputs/ram_plus_ft
RAM
  1. Download RAM training datasets where each json file contains a list. Each item in the list is a dictonary with four key-value pairs: {'image_path': path_of_image, 'caption': text_of_image, 'union_label_id': image tags for tagging which including parsed tags and pseudo tags, 'parse_label_id': image tags parsed from caption }.

  2. In ram/configs/pretrain.yaml, set 'train_file' as the paths for the json files.

  3. Prepare pretained Swin-Transformer, and set 'ckpt' in ram/configs/swin.

  4. Download RAM frozen tag embedding file "ram_tag_embedding_class_4585.pth", and set file in "ram/data/frozen_tag_embedding/ram_tag_embedding_class_4585.pth"

  5. Pre-train the model using 8 A100 GPUs:

python -m torch.distributed.run --nproc_per_node=8 pretrain.py \
  --model-type ram \
  --config ram/configs/pretrain.yaml  \
  --output-dir outputs/ram
  1. Fine-tune the pre-trained checkpoint using 8 A100 GPUs:
python -m torch.distributed.run --nproc_per_node=8 finetune.py \
  --model-type ram \
  --config ram/configs/finetune.yaml  \
  --checkpoint outputs/ram/checkpoint_04.pth \
  --output-dir outputs/ram_ft
Tag2Text
  1. Download RAM training datasets where each json file contains a list. Each item in the list is a dictonary with three key-value pairs: {'image_path': path_of_image, 'caption': text_of_image, 'parse_label_id': image tags parsed from caption }.

  2. In ram/configs/pretrain_tag2text.yaml, set 'train_file' as the paths for the json files.

  3. Prepare pretained Swin-Transformer, and set 'ckpt' in ram/configs/swin.

  4. Pre-train the model using 8 A100 GPUs:

python -m torch.distributed.run --nproc_per_node=8 pretrain.py \
  --model-type tag2text \
  --config ram/configs/pretrain_tag2text.yaml  \
  --output-dir outputs/tag2text
  1. Fine-tune the pre-trained checkpoint using 8 A100 GPUs:
python -m torch.distributed.run --nproc_per_node=8 finetune.py \
  --model-type tag2text \
  --config ram/configs/finetune_tag2text.yaml  \
  --checkpoint outputs/tag2text/checkpoint_04.pth \
  --output-dir outputs/tag2text_ft

:black_nib: Citation

If you find our work to be useful for your research, please consider citing.

@article{huang2023open,
  title={Open-Set Image Tagging with Multi-Grained Text Supervision},
  author={Huang, Xinyu and Huang, Yi-Jie and Zhang, Youcai and Tian, Weiwei and Feng, Rui and Zhang, Yuejie and Xie, Yanchun and Li, Yaqian and Zhang, Lei},
  journal={arXiv e-prints},
  pages={arXiv--2310},
  year={2023}
}

@article{zhang2023recognize,
  title={Recognize Anything: A Strong Image Tagging Model},
  author={Zhang, Youcai and Huang, Xinyu and Ma, Jinyu and Li, Zhaoyang and Luo, Zhaochuan and Xie, Yanchun and Qin, Yuzhuo and Luo, Tong and Li, Yaqian and Liu, Shilong and others},
  journal={arXiv preprint arXiv:2306.03514},
  year={2023}
}

@article{huang2023tag2text,
  title={Tag2Text: Guiding Vision-Language Model via Image Tagging},
  author={Huang, Xinyu and Zhang, Youcai and Ma, Jinyu and Tian, Weiwei and Feng, Rui and Zhang, Yuejie and Li, Yaqian and Guo, Yandong and Zhang, Lei},
  journal={arXiv preprint arXiv:2303.05657},
  year={2023}
}

:hearts: Acknowledgements

This work is done with the help of the amazing code base of BLIP, thanks very much!

We want to thank @Cheng Rui @Shilong Liu @Ren Tianhe for their help in marrying RAM/Tag2Text with Grounded-SAM.

We also want to thank Ask-Anything, Prompt-can-anything for combining RAM/Tag2Text, which greatly expands the application boundaries of RAM/Tag2Text.