Learning Feature Descriptors for Pre- and Intra-operative Point Cloud
Matching for Laparoscopic Liver Registration
- URL: http://arxiv.org/abs/2211.03688v1
- Date: Mon, 7 Nov 2022 16:58:39 GMT
- Title: Learning Feature Descriptors for Pre- and Intra-operative Point Cloud
Matching for Laparoscopic Liver Registration
- Authors: Zixin Yang, Richard Simon, Cristian A.Linte
- Abstract summary: In laparoscopic liver surgery (LLS), pre-operative information can be overlaid onto the intra-operative scene by registering a 3D pre-operative model to the intra-operative partial surface reconstructed from the laparoscopic video.
To assist with this task, we explore the use of learning-based feature descriptors, which, to our best knowledge, have not been explored for use in laparoscopic liver registration.
We present the LiverMatch dataset consisting of 16 preoperative models and their simulated intra-operative 3D surfaces.
We also propose the LiverMatch network designed for this task, which outputs per-point feature descriptors, visibility scores, and
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Purpose: In laparoscopic liver surgery (LLS), pre-operative information can
be overlaid onto the intra-operative scene by registering a 3D pre-operative
model to the intra-operative partial surface reconstructed from the
laparoscopic video. To assist with this task, we explore the use of
learning-based feature descriptors, which, to our best knowledge, have not been
explored for use in laparoscopic liver registration. Furthermore, a dataset to
train and evaluate the use of learning-based descriptors does not exist.
Methods: We present the LiverMatch dataset consisting of 16 preoperative
models and their simulated intra-operative 3D surfaces. We also propose the
LiverMatch network designed for this task, which outputs per-point feature
descriptors, visibility scores, and matched points.
Results: We compare the proposed LiverMatch network with anetwork closest to
LiverMatch, and a histogram-based 3D descriptor on the testing split of the
LiverMatch dataset, which includes two unseen pre-operative models and 1400
intra-operative surfaces. Results suggest that our LiverMatch network can
predict more accurate and dense matches than the other two methods and can be
seamlessly integrated with a RANSAC-ICP-based registration algorithm to achieve
an accurate initial alignment.
Conclusion: The use of learning-based feature descriptors in LLR is
promising, as it can help achieve an accurate initial rigid alignment, which,
in turn, serves as an initialization for subsequent non-rigid registration. We
will release the dataset and code upon acceptance.
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