You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 

5.8 KiB

comments description keywords
true Get an overview of YOLOv3, YOLOv3-Ultralytics and YOLOv3u. Learn about their key features, usage, and supported tasks for object detection. YOLOv3, YOLOv3-Ultralytics, YOLOv3u, Object Detection, Inference, Training, Ultralytics

YOLOv3, YOLOv3-Ultralytics, and YOLOv3u

Overview

This document presents an overview of three closely related object detection models, namely YOLOv3, YOLOv3-Ultralytics, and YOLOv3u.

  1. YOLOv3: This is the third version of the You Only Look Once (YOLO) object detection algorithm. Originally developed by Joseph Redmon, YOLOv3 improved on its predecessors by introducing features such as multiscale predictions and three different sizes of detection kernels.

  2. YOLOv3-Ultralytics: This is Ultralytics' implementation of the YOLOv3 model. It reproduces the original YOLOv3 architecture and offers additional functionalities, such as support for more pre-trained models and easier customization options.

  3. YOLOv3u: This is an updated version of YOLOv3-Ultralytics that incorporates the anchor-free, objectness-free split head used in YOLOv8 models. YOLOv3u maintains the same backbone and neck architecture as YOLOv3 but with the updated detection head from YOLOv8.

Ultralytics YOLOv3

Key Features

  • YOLOv3: Introduced the use of three different scales for detection, leveraging three different sizes of detection kernels: 13x13, 26x26, and 52x52. This significantly improved detection accuracy for objects of different sizes. Additionally, YOLOv3 added features such as multi-label predictions for each bounding box and a better feature extractor network.

  • YOLOv3-Ultralytics: Ultralytics' implementation of YOLOv3 provides the same performance as the original model but comes with added support for more pre-trained models, additional training methods, and easier customization options. This makes it more versatile and user-friendly for practical applications.

  • YOLOv3u: This updated model incorporates the anchor-free, objectness-free split head from YOLOv8. By eliminating the need for pre-defined anchor boxes and objectness scores, this detection head design can improve the model's ability to detect objects of varying sizes and shapes. This makes YOLOv3u more robust and accurate for object detection tasks.

Supported Tasks and Modes

The YOLOv3 series, including YOLOv3, YOLOv3-Ultralytics, and YOLOv3u, are designed specifically for object detection tasks. These models are renowned for their effectiveness in various real-world scenarios, balancing accuracy and speed. Each variant offers unique features and optimizations, making them suitable for a range of applications.

All three models support a comprehensive set of modes, ensuring versatility in various stages of model deployment and development. These modes include Inference, Validation, Training, and Export, providing users with a complete toolkit for effective object detection.

Model Type Tasks Supported Inference Validation Training Export
YOLOv3 Object Detection
YOLOv3-Ultralytics Object Detection
YOLOv3u Object Detection

This table provides an at-a-glance view of the capabilities of each YOLOv3 variant, highlighting their versatility and suitability for various tasks and operational modes in object detection workflows.

Usage Examples

This example provides simple YOLOv3 training and inference examples. For full documentation on these and other modes see the Predict, Train, Val and Export docs pages.

!!! Example

=== "Python"

    PyTorch pretrained `*.pt` models as well as configuration `*.yaml` files can be passed to the `YOLO()` class to create a model instance in python:

    ```python
    from ultralytics import YOLO

    # Load a COCO-pretrained YOLOv3n model
    model = YOLO('yolov3n.pt')

    # Display model information (optional)
    model.info()

    # Train the model on the COCO8 example dataset for 100 epochs
    results = model.train(data='coco8.yaml', epochs=100, imgsz=640)

    # Run inference with the YOLOv3n model on the 'bus.jpg' image
    results = model('path/to/bus.jpg')
    ```

=== "CLI"

    CLI commands are available to directly run the models:

    ```bash
    # Load a COCO-pretrained YOLOv3n model and train it on the COCO8 example dataset for 100 epochs
    yolo train model=yolov3n.pt data=coco8.yaml epochs=100 imgsz=640

    # Load a COCO-pretrained YOLOv3n model and run inference on the 'bus.jpg' image
    yolo predict model=yolov3n.pt source=path/to/bus.jpg
    ```

Citations and Acknowledgements

If you use YOLOv3 in your research, please cite the original YOLO papers and the Ultralytics YOLOv3 repository:

!!! Quote ""

=== "BibTeX"

    ```bibtex
    @article{redmon2018yolov3,
      title={YOLOv3: An Incremental Improvement},
      author={Redmon, Joseph and Farhadi, Ali},
      journal={arXiv preprint arXiv:1804.02767},
      year={2018}
    }
    ```

Thank you to Joseph Redmon and Ali Farhadi for developing the original YOLOv3.