Conversation
…uring ONNX dynamic shape inference
|
Im slightly busy with graduation this week, I will be back to work on this by the weekend |
No problem, thanks for letting me know. Congratulations on your graduation! |
|
Hi @acai66 @IamShubhamGupto , Thank you very much for providing the ONNX examples in both C++ and Python. They look amazing and incredibly useful! Are you still waiting for @IamShubhamGupto to review the merge? I am not sure if you both merged the work you did last month, so I am just checking in to see if I should start reviewing the PR. Once again, thank you @acai66 and @IamShubhamGupto for the ONNX examples. I appreciate your effort to make XFeat deployment much better! |
Thank you for checking in. I am still waiting for @IamShubhamGupto's review. Unfortunately, I haven't received any response from @IamShubhamGupto regarding last month's work, which might be due to the busy graduation season. |
Hey @acai66 @guipotje sorry to keep both of you waiting. I did just graduate and was busy with a few conferences and competitions. As for the development on this branch, I believe you should go ahead and merge this branch. I will be back on contributing to this project some time later. |
|
@acai66 Hi, thank you for your contribution. I found that only |
|
@acai66 Thank you very much! |
|
@acai66 Have you met a problem in |
|
Hey @acai66, thanks for all your work on the ONNX export of XFeat, it's been very handy. @guipotje recently added the Lighterglue addon matcher so I spent some time to make that available for ONNX export on top of your changes, see the branch here: https://github.com/stschake/accelerated_features/tree/feature/lighterglue-onnx The upstream code uses kornia which isn't suitable for ONNX export, so I started with the LightGlue-ONNX implementation and modified it slightly to add things like keypoints normalization directly in the model, in the xfeat tradition. |
|
Thanks guys! Looking forward for onnx version. |
|
excellent work, why is it not merged yet? |
|
Looks good, can it be merged? Are there still any open issues? |

xfeat.onnxxfeat_dualscale.onnxmatching.onnxxfeat_matching.onnxonnx_models.zip
examples
accelerated_features/realtime_demo.py
Line 239 in b2f6b99
xfeat_onnxruntime.py
realtime_demo.py patches