Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MinkUNeXt: Point Cloud-based Large-scale Place Recognition using 3D Sparse Convolutions

About

This paper presents MinkUNeXt, an effective and efficient architecture for place-recognition from point clouds entirely based on the new 3D MinkNeXt Block, a residual block composed of 3D sparse convolutions that follows the philosophy established by recent Transformers but purely using simple 3D convolutions. Feature extraction is performed at different scales by a U-Net encoder-decoder network and the feature aggregation of those features into a single descriptor is carried out by a Generalized Mean Pooling (GeM). The proposed architecture demonstrates that it is possible to surpass the current state-of-the-art by only relying on conventional 3D sparse convolutions without making use of more complex and sophisticated proposals such as Transformers, Attention-Layers or Deformable Convolutions. A thorough assessment of the proposal has been carried out using the Oxford RobotCar and the In-house datasets. As a result, MinkUNeXt proves to outperform other methods in the state-of-the-art.

J.J. Cabrera, A. Santo, A. Gil, C. Viegas, L. Pay\'a• 2024

Related benchmarks

TaskDatasetResultRank
LiDAR Place RecognitionTEMPO-VINE VELO
Recall@1%30.49
7
LiDAR Place RecognitionBLT
Recall@1%58.12
7
LiDAR Place RecognitionTEMPO-VINE Livox
Recall@1%23.08
7
Showing 3 of 3 rows

Other info

Follow for update