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grounding_dino

demo_groundingsam.mp4

Grounding DINO backend integration

This integration will allow you to:

  • Use text prompts for zero-shot detection of objects in images.
  • Specify the detection of any object and get state-of-the-art results without any model fine tuning.
  • Get segmentation predictions from SAM with just text prompts.

See here for more details about the pre-trained Grounding DINO model.

Quickstart

  1. Make sure Docker is installed.

  2. Edit docker-compose.yml to include the following:

    • LABEL_STUDIO_HOST sets the endpoint of the Label Studio host. Must begin with http://
    • LABEL_STUDIO_ACCESS_TOKEN sets the API access token for the Label Studio host. This can be found by logging into Label Studio and going to the Account & Settings page.

    Example:

    • LABEL_STUDIO_HOST=http://123.456.7.8:8080
    • LABEL_STUDIO_ACCESS_TOKEN=c9djf998eii2948ee9hh835nferkj959923
  3. Run docker compose up

  4. Check the IP of your backend using docker ps. You will use this URL when connecting the backend to a Label Studio project. Usually this is http://localhost:9090.

  5. Create a project and edit the labeling config (an example is provided below). When editing the labeling config, make sure to add all rectangle labels under the RectangleLabels tag, and all corresponding brush labels under the BrushLabels tag.

<View>
  <Image name="image" value="$image"/>
  <Style>
    .lsf-main-content.lsf-requesting .prompt::before { content: ' loading...'; color: #808080; }
  </Style>
  <View className="prompt">
  <TextArea name="prompt" toName="image" editable="true" rows="2" maxSubmissions="1" showSubmitButton="true"/>
  </View>
  <RectangleLabels name="label" toName="image">
    <Label value="cats" background="yellow"/>
    <Label value="house" background="blue"/>
  </RectangleLabels>
  <BrushLabels name="label2" toName="image">
    <Label value="cats" background="yellow"/>
    <Label value="house" background="blue"/>
  </BrushLabels>
</View>
  1. From the Model page in the project settings, connect the model.
  2. Go to an image task in your project. Enable Auto-annotation (found at the bottom of the labeling interface). Then enter in the prompt box and press Add. After this, you should receive your predictions. See the video above for a demo.

Using GPU

For the best user experience, it is recommended to use a GPU. To do this, you can update the docker-compose.yml file including the following lines:

environment:
  - NVIDIA_VISIBLE_DEVICES=all
deploy:
  resources:
    reservations:
      devices:
        - driver: nvidia
          count: 1
          capabilities: [gpu]

Using GroundingSAM

Combine the Segment Anything Model with your text input to automatically generate mask predictions!

To do this, set USE_SAM=true before running.

Warning: Using GroundingSAM without a GPU may result in slow performance and is not recommended. If you must use a CPU-only machine, and experience slow performance or don't see any predictions on the labeling screen, consider one of the following:

  • Increase memory allocated to the Docker container (e.g. memory: 16G in docker-compose.yml)
  • Increase the prediction timeout on Label Studio instance with the ML_TIMEOUT_PREDICT=100 environment variable.
  • Use "MobileSAM" as a lightweight alternative to "SAM".

If you want to use a more efficient version of SAM, set USE_MOBILE_SAM=true.

Batching inputs

batching_dino_example.mp4

Note: This is an experimental feature.

  1. Clone the Label Studio feature branch that includes the experimental batching functionality.

    git clone -b feature/dino-support https://github.com/HumanSignal/label-studio.git

  2. Run this branch with docker compose up

  3. Do steps 2-5 from the quickstart section, now using access code and host IP info of the newly cloned Label Studio branch. GroundingSAM is supported.

  4. Go to the Data Manager in your project and select the tasks you would like to annotate.

  5. Select Actions > Add Text Prompt for GroundingDINO.

  6. Enter the prompt you would like to retrieve predictions for and click Submit.

Note: If your prompt is different from the label values you have assigned, you can use the underscore to give the correct label values to your prompt outputs. For example, if you wanted to select all brown cats but still give them the label value "cats" from your labeling config, your prompt would be "brown cat_cats".

Other environment variables

Adjust BOX_THRESHOLD and TEXT_THRESHOLD values in the Dockerfile to a number between 0 to 1 if experimenting. Defaults are set in dino.py. For more information about these values, click here.

If you want to use SAM models saved from either directories, you can use the MOBILESAM_CHECKPOINT and SAM_CHECKPOINT as shown in the Dockerfile.