YOLOv8

Maintainer: Ultralytics

Total Score

57

Last updated 6/13/2024

PropertyValue
Model LinkView on HuggingFace
API SpecView on HuggingFace
Github LinkNo Github link provided
Paper LinkNo paper link provided

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Model overview

YOLOv8 is a state-of-the-art (SOTA) object detection model developed by Ultralytics. It builds upon the success of previous YOLO versions, introducing new features and improvements to boost performance and flexibility. YOLOv8 is designed to be fast, accurate, and easy to use, making it an excellent choice for a wide range of computer vision tasks, including object detection, instance segmentation, image classification, and pose estimation.

The model has been fine-tuned on diverse datasets and has demonstrated impressive capabilities across various domains. For example, the stockmarket-pattern-detection-yolov8 model is specifically tailored for detecting stock market patterns in live trading video data, while the stockmarket-future-prediction model focuses on predicting future stock market trends. Additionally, the yolos-tiny and yolos-small models demonstrate the versatility of the YOLOS architecture, which utilizes Vision Transformers (ViT) for object detection.

Model inputs and outputs

YOLOv8 is a versatile model that can accept a variety of input formats, including images, videos, and real-time video streams. The model's primary output is the detection of objects within the input, including their bounding boxes, class labels, and confidence scores.

Inputs

  • Images: The model can process single images or batches of images.
  • Videos: The model can process video frames in real-time, enabling applications such as live object detection and tracking.
  • Real-time video streams: The model can integrate with live video feeds, enabling immediate object detection and analysis.

Outputs

  • Bounding boxes: The model predicts the location of detected objects within the input using bounding box coordinates.
  • Class labels: The model classifies the detected objects and provides the corresponding class labels.
  • Confidence scores: The model outputs a confidence score for each detection, indicating the model's certainty about the prediction.

Capabilities

YOLOv8 is a versatile model that can be applied to a wide range of computer vision tasks. Its key capabilities include:

  • Object detection: The model can identify and locate multiple objects within an image or video frame, providing bounding box coordinates, class labels, and confidence scores.
  • Instance segmentation: In addition to object detection, YOLOv8 can also perform instance segmentation, which involves precisely outlining the boundaries of each detected object.
  • Image classification: The model can classify entire images into predefined categories, such as different types of animals or scenes.
  • Pose estimation: YOLOv8 can detect and estimate the poses of people or other subjects within an image or video, identifying the key joints and limbs.

What can I use it for?

YOLOv8 is a powerful tool that can be leveraged in a variety of real-world applications. Some potential use cases include:

  • Retail and e-commerce: The model can be used for automated product detection and inventory management in retail environments, as well as for recommendation systems based on customer browsing and purchasing behavior.
  • Autonomous vehicles: YOLOv8 can be integrated into self-driving car systems, enabling real-time object detection and collision avoidance.
  • Surveillance and security: The model can be used for intelligent video analytics, such as people counting, suspicious activity detection, and license plate recognition.
  • Healthcare: YOLOv8 can be applied to medical imaging tasks, such as identifying tumors or other abnormalities in X-rays or CT scans.
  • Agriculture: The model can be used for precision farming applications, such as detecting weeds, pests, or diseased crops in aerial or ground-based imagery.

Things to try

One interesting aspect of YOLOv8 is its ability to adapt to a wide range of domains and tasks beyond the traditional object detection use case. For example, the stockmarket-pattern-detection-yolov8 and stockmarket-future-prediction models demonstrate how the core YOLOv8 architecture can be fine-tuned to tackle specialized problems in the financial domain.

Another area to explore is the use of different YOLOv8 model sizes, such as the yolos-tiny and yolos-small variants. These smaller models may be more suitable for deployment on resource-constrained devices or in real-time applications that require low latency.

Ultimately, the versatility and performance of YOLOv8 make it an attractive choice for a wide range of computer vision projects, from edge computing to large-scale enterprise deployments.



This summary was produced with help from an AI and may contain inaccuracies - check out the links to read the original source documents!

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