image_to_pixle_params_yoloSAM/ultralytics-main/docs/en/tasks/obb.md

13 KiB

comments description keywords model_name
true Discover how to detect objects with rotation for higher precision using YOLO11 OBB models. Learn, train, validate, and export OBB models effortlessly. Oriented Bounding Boxes, OBB, Object Detection, YOLO11, Ultralytics, DOTAv1, Model Training, Model Export, AI, Machine Learning yolo11n-obb

Oriented Bounding Boxes Object Detection

Oriented object detection goes a step further than standard object detection by introducing an extra angle to locate objects more accurately in an image.

The output of an oriented object detector is a set of rotated bounding boxes that precisely enclose the objects in the image, along with class labels and confidence scores for each box. Oriented bounding boxes are particularly useful when objects appear at various angles, such as in aerial imagery, where traditional axis-aligned bounding boxes may include unnecessary background.

!!! tip

YOLO11 OBB models use the `-obb` suffix, i.e. `yolo11n-obb.pt` and are pretrained on [DOTAv1](https://github.com/ultralytics/ultralytics/blob/main/ultralytics/cfg/datasets/DOTAv1.yaml).



Watch: Object Detection using Ultralytics YOLO Oriented Bounding Boxes (YOLO-OBB)

Visual Samples

Ships Detection using OBB Vehicle Detection using OBB
Ships Detection using OBB Vehicle Detection using OBB

Models

YOLO11 pretrained OBB models are shown here, which are pretrained on the DOTAv1 dataset.

Models download automatically from the latest Ultralytics release on first use.

{% include "macros/yolo-obb-perf.md" %}

  • mAPtest values are for single-model multiscale on DOTAv1 dataset.
    Reproduce by yolo val obb data=DOTAv1.yaml device=0 split=test and submit merged results to DOTA evaluation.
  • Speed averaged over DOTAv1 val images using an Amazon EC2 P4d instance.
    Reproduce by yolo val obb data=DOTAv1.yaml batch=1 device=0|cpu

Train

Train YOLO11n-obb on the DOTA8 dataset for 100 epochs at image size 640. For a full list of available arguments see the Configuration page.

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.yaml")  # build a new model from YAML
    model = YOLO("yolo11n-obb.pt")  # load a pretrained model (recommended for training)
    model = YOLO("yolo11n-obb.yaml").load("yolo11n.pt")  # build from YAML and transfer weights

    # Train the model
    results = model.train(data="dota8.yaml", epochs=100, imgsz=640)
    ```

=== "CLI"

    ```bash
    # Build a new model from YAML and start training from scratch
    yolo obb train data=dota8.yaml model=yolo11n-obb.yaml epochs=100 imgsz=640

    # Start training from a pretrained *.pt model
    yolo obb train data=dota8.yaml model=yolo11n-obb.pt epochs=100 imgsz=640

    # Build a new model from YAML, transfer pretrained weights to it and start training
    yolo obb train data=dota8.yaml model=yolo11n-obb.yaml pretrained=yolo11n-obb.pt epochs=100 imgsz=640
    ```



Watch: How to Train Ultralytics YOLO-OBB (Oriented Bounding Boxes) Models on DOTA Dataset using Ultralytics HUB

Dataset format

OBB dataset format can be found in detail in the Dataset Guide. The YOLO OBB format designates bounding boxes by their four corner points with coordinates normalized between 0 and 1, following this structure:

class_index x1 y1 x2 y2 x3 y3 x4 y4

Internally, YOLO processes losses and outputs in the xywhr format, which represents the bounding box's center point (xy), width, height, and rotation.

Val

Validate trained YOLO11n-obb model accuracy on the DOTA8 dataset. No arguments are needed as the model retains its training data and arguments as model attributes.

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.pt")  # load an official model
    model = YOLO("path/to/best.pt")  # load a custom model

    # Validate the model
    metrics = model.val(data="dota8.yaml")  # no arguments needed, dataset and settings remembered
    metrics.box.map  # map50-95(B)
    metrics.box.map50  # map50(B)
    metrics.box.map75  # map75(B)
    metrics.box.maps  # a list contains map50-95(B) of each category
    ```

=== "CLI"

    ```bash
    yolo obb val model=yolo11n-obb.pt data=dota8.yaml         # val official model
    yolo obb val model=path/to/best.pt data=path/to/data.yaml # val custom model
    ```

Predict

Use a trained YOLO11n-obb model to run predictions on images.

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.pt")  # load an official model
    model = YOLO("path/to/best.pt")  # load a custom model

    # Predict with the model
    results = model("https://ultralytics.com/images/boats.jpg")  # predict on an image

    # Access the results
    for result in results:
        xywhr = result.obb.xywhr  # center-x, center-y, width, height, angle (radians)
        xyxyxyxy = result.obb.xyxyxyxy  # polygon format with 4-points
        names = [result.names[cls.item()] for cls in result.obb.cls.int()]  # class name of each box
        confs = result.obb.conf  # confidence score of each box
    ```

=== "CLI"

    ```bash
    yolo obb predict model=yolo11n-obb.pt source='https://ultralytics.com/images/boats.jpg'  # predict with official model
    yolo obb predict model=path/to/best.pt source='https://ultralytics.com/images/boats.jpg' # predict with custom model
    ```



Watch: How to Detect and Track Storage Tanks using Ultralytics YOLO-OBB | Oriented Bounding Boxes | DOTA

See full predict mode details in the Predict page.

Export

Export a YOLO11n-obb model to a different format like ONNX, CoreML, etc.

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.pt")  # load an official model
    model = YOLO("path/to/best.pt")  # load a custom trained model

    # Export the model
    model.export(format="onnx")
    ```

=== "CLI"

    ```bash
    yolo export model=yolo11n-obb.pt format=onnx  # export official model
    yolo export model=path/to/best.pt format=onnx # export custom trained model
    ```

Available YOLO11-obb export formats are in the table below. You can export to any format using the format argument, i.e. format='onnx' or format='engine'. You can predict or validate directly on exported models, i.e. yolo predict model=yolo11n-obb.onnx. Usage examples are shown for your model after export completes.

{% include "macros/export-table.md" %}

See full export details in the Export page.

Real-World Applications

OBB detection with YOLO11 has numerous practical applications across various industries:

  • Maritime and Port Management: Detecting ships and vessels at various angles for fleet management and monitoring.
  • Urban Planning: Analyzing buildings and infrastructure from aerial imagery.
  • Agriculture: Monitoring crops and agricultural equipment from drone footage.
  • Energy Sector: Inspecting solar panels and wind turbines at different orientations.
  • Transportation: Tracking vehicles on roads and in parking lots from various perspectives.

These applications benefit from OBB's ability to precisely fit objects at any angle, providing more accurate detection than traditional bounding boxes.

FAQ

What are Oriented Bounding Boxes (OBB) and how do they differ from regular bounding boxes?

Oriented Bounding Boxes (OBB) include an additional angle to enhance object localization accuracy in images. Unlike regular bounding boxes, which are axis-aligned rectangles, OBBs can rotate to fit the orientation of the object better. This is particularly useful for applications requiring precise object placement, such as aerial or satellite imagery (Dataset Guide).

How do I train a YOLO11n-obb model using a custom dataset?

To train a YOLO11n-obb model with a custom dataset, follow the example below using Python or CLI:

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a pretrained model
    model = YOLO("yolo11n-obb.pt")

    # Train the model
    results = model.train(data="path/to/custom_dataset.yaml", epochs=100, imgsz=640)
    ```

=== "CLI"

    ```bash
    yolo obb train data=path/to/custom_dataset.yaml model=yolo11n-obb.pt epochs=100 imgsz=640
    ```

For more training arguments, check the Configuration section.

What datasets can I use for training YOLO11-OBB models?

YOLO11-OBB models are pretrained on datasets like DOTAv1 but you can use any dataset formatted for OBB. Detailed information on OBB dataset formats can be found in the Dataset Guide.

How can I export a YOLO11-OBB model to ONNX format?

Exporting a YOLO11-OBB model to ONNX format is straightforward using either Python or CLI:

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.pt")

    # Export the model
    model.export(format="onnx")
    ```

=== "CLI"

    ```bash
    yolo export model=yolo11n-obb.pt format=onnx
    ```

For more export formats and details, refer to the Export page.

How do I validate the accuracy of a YOLO11n-obb model?

To validate a YOLO11n-obb model, you can use Python or CLI commands as shown below:

!!! example

=== "Python"

    ```python
    from ultralytics import YOLO

    # Load a model
    model = YOLO("yolo11n-obb.pt")

    # Validate the model
    metrics = model.val(data="dota8.yaml")
    ```

=== "CLI"

    ```bash
    yolo obb val model=yolo11n-obb.pt data=dota8.yaml
    ```

See full validation details in the Val section.