Comments (1)
Hello,
Thanks for reaching out and for your keen observations! 🌟
Indeed, the differences you've noted in the YOLOv9-e and YOLOv9-c configurations between the Ultralytics version and WongKinYiu's official implementation are accurate. In Ultralytics, we occasionally adapt configurations and model architectures to optimize for performance and ease of use in diverse application scenarios, which may explain the absence of certain implementation details like the anchor in the YOLOv9-e and the reversible auxiliary branch in YOLOv9-c.
We appreciate your suggestion about including these details in the Ultralytics documentation. It's feedback like yours that helps us improve and better serve the community. I will relay this to our documentation team for consideration in future updates.
If you have further questions or need more assistance, feel free to ask!
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