YOLOV8 on openVino runtime Output shape error #1228
Replies: 2 comments 1 reply
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@official-MKV This issue may help #751 As I understand it:
If anyone has more clarity, detail, or correctness to add, please do. |
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@official-MKV My updated understanding: So for
And these are squared and summed to get the final dimension count ( So a 256px input results in
And these are squared and multiplied to get the final dimension count ( |
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I am building a computer-vision detection model.
I don't have a NVIDIA GPU. I use an intel based graphics card which makes inference on CPU look way better, but still after training a detection model using 'yolov8n.pt' and running the 'best.pt' model on my cpu, it is still terribly slow. I converted the 'best.pt' model to an openvino IR model to run on openvino-runtime( I read some articles that claim it boosts performance when running on intel-based cpu).
My problem is with the output shape of the IR model.
I don't understand the output and how to go about it and it seems to be an output shape particualr to yolov8, other pretrained models don't have this shape. I have tried training using differnt yolov8 models and even tried different datasets but still endup with the same shape that has no meaning to me
[1,6,8400]
. How do I go about this ? What is this shapeBeta Was this translation helpful? Give feedback.
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