Comments (4)
Ok, so the problem is in the following line:
ultralytics/ultralytics/engine/results.py
Line 405 in f0b7c51
I tried to imitate the same:
import ultralytics
boxes = ultralytics.engine.results.Boxes(torch.empty((0, 6), device='cuda:0'), (480, 640))
data = boxes or None # oriented bounding boxes is None
Result:
data is None
Out[30]: True
What the F...? 🤣🤣🤣🤣
So, python says that ultralytics boxes or None
turns out in None? What? 🤣🤣
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PR is opened:
#13024
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I close this issue, cause PR was merged
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@hdnh2006 thanks for updating us and for your contribution to the YOLOv8 community! If you have any more issues or further contributions, feel free to reach out. Happy coding! 🚀
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