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51 lines
2.6 KiB
51 lines
2.6 KiB
--- |
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comments: true |
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description: Learn about the cornerstone computer vision tasks YOLOv8 can perform including detection, segmentation, classification, and pose estimation. Understand their uses in your AI projects. |
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keywords: Ultralytics, YOLOv8, Detection, Segmentation, Classification, Pose Estimation, AI Framework, Computer Vision Tasks |
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--- |
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# Ultralytics YOLOv8 Tasks |
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YOLOv8 is an AI framework that supports multiple computer vision **tasks**. The framework can be used to |
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perform [detection](detect.md), [segmentation](segment.md), [classification](classify.md), |
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and [pose](pose.md) estimation. Each of these tasks has a different objective and use case. |
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<br> |
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<img width="1024" src="https://raw.githubusercontent.com/ultralytics/assets/main/im/banner-tasks.png"> |
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## [Detection](detect.md) |
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Detection is the primary task supported by YOLOv8. It involves detecting objects in an image or video frame and drawing |
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bounding boxes around them. The detected objects are classified into different categories based on their features. |
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YOLOv8 can detect multiple objects in a single image or video frame with high accuracy and speed. |
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[Detection Examples](detect.md){ .md-button .md-button--primary} |
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## [Segmentation](segment.md) |
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Segmentation is a task that involves segmenting an image into different regions based on the content of the image. Each |
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region is assigned a label based on its content. This task is useful in applications such as image segmentation and |
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medical imaging. YOLOv8 uses a variant of the U-Net architecture to perform segmentation. |
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[Segmentation Examples](segment.md){ .md-button .md-button--primary} |
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## [Classification](classify.md) |
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Classification is a task that involves classifying an image into different categories. YOLOv8 can be used to classify |
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images based on their content. It uses a variant of the EfficientNet architecture to perform classification. |
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[Classification Examples](classify.md){ .md-button .md-button--primary} |
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## [Pose](pose.md) |
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Pose/keypoint detection is a task that involves detecting specific points in an image or video frame. These points are |
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referred to as keypoints and are used to track movement or pose estimation. YOLOv8 can detect keypoints in an image or |
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video frame with high accuracy and speed. |
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[Pose Examples](pose.md){ .md-button .md-button--primary} |
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## Conclusion |
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YOLOv8 supports multiple tasks, including detection, segmentation, classification, and keypoints detection. Each of |
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these tasks has different objectives and use cases. By understanding the differences between these tasks, you can choose |
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the appropriate task for your computer vision application.
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