Models
YOLOv9 Image Segmentation vs. YOLOv4 PyTorch

YOLOv9 Image Segmentation vs. YOLOv4 PyTorch

Both YOLOv9 Image Segmentation and YOLOv4 PyTorch are commonly used in computer vision projects. Below, we compare and contrast YOLOv9 Image Segmentation and YOLOv4 PyTorch.

Models

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YOLOv4 PyTorch

YOLOv4 has emerged as the best real time object detection model. YOLOv4 carries forward many of the research contributions of the YOLO family of models along with new modeling and data augmentation techniques. This implementation is in PyTorch.
Model Type
Instance Segmentation
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Object Detection
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Model Features
Item 1 Info
Item 2 Info
Architecture
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YOLO
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Frameworks
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PyTorch
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Annotation Format
Instance Segmentation
Instance Segmentation
GitHub Stars
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4.4k+
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License
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Apache-2.0
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Training Notebook

Compare YOLOv9 Image Segmentation and YOLOv4 PyTorch with Autodistill

Compare YOLOv9 Image Segmentation vs. YOLOv4 PyTorch

Provide your own image below to test YOLOv8 and YOLOv9 model checkpoints trained on the Microsoft COCO dataset.

COCO can detect 80 common objects, including cats, cell phones, and cars.