Regarding Performance <training_time >: in Automatic Self_Checkout #1801
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Hi @Abhijeet241093, the |
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Requesting @adrianboguszewski to close this thread, as we can move this thread to the Discussions page. Thank you! |
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Hi @riacheruvu,
Thank you for your attention.
Describe the bug
In function def get_iou, def intersecting_bboxes, run during training, considerably take running time ? I means if yolo model working on detection in that case, weather this function get_iou, & intersecting_bboxes run independently ? Is it slow down yolo model ? performance ?
Can function get_iou, & intersecting_bboxes participate in training time ?
Expected behavior
If function get_iou, & intersecting_bboxes participate in training time ? In that case, Is their way to separate this functions and yolo detection model, so both run independently ? so training become faster while adding new label data in custom dataset next time.
Screenshots
Installation instructions (Please mark the checkbox)
[ Yes ] I followed the installation guide at https://github.com/openvinotoolkit/openvino_notebooks#-installation-guide to install the notebooks.
** Environment information **
Please run
python check_install.py
in the openvino_notebooks directory. If the output is NOT OK for any of the checks, please follow the instructions to fix that. If that does not work, or if you still encounter the issue, please paste the output of check_install.py here.Additional context
Add any other context about the problem here.
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