Models
YOLO26 vs. Scaled YOLOv4

YOLO26 vs. Scaled YOLOv4

Both YOLO26 and Scaled YOLOv4 are commonly used in computer vision projects. Below, we compare and contrast YOLO26 and Scaled YOLOv4.

Models

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YOLO26

YOLO26 is a real-time, NMS-free YOLO model optimized for edge deployment, supporting multiple vision tasks across scalable model sizes.
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Scaled YOLOv4

Scaled YOLOv4 is an extension of the YOLOv4 research implemented in the YOLOv5 PyTorch framework.
Model Type
Object Detection
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Object Detection
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Model Features
Item 1 Info
Item 2 Info
Architecture
YOLO
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YOLO
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Annotation Format
Instance Segmentation
Instance Segmentation
Framework
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PyTorch
GitHub Stars
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2k+
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License
AGPL-3.0
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GPL-3.0
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Training Notebook

Compare YOLO26 and Scaled YOLOv4 with Autodistill

Compare YOLO26 vs. Scaled YOLOv4

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.