Some self-supervised cross-modal learning approaches have recently demonstrated the potential of image signals for enhancing point cloud representation. However, it remains a question on how to directly model cross-modal local and global correspondences in a self-supervised fashion. To solve it, we proposed PointCMC, a novel cross-modal method to model multi-scale correspondences across modalities for self-supervised point cloud representation learning. In particular, PointCMC is composed of: (1) a local-to-local (L2L) module that learns local correspondences through optimized cross-modal local geometric features, (2) a local-to-global (L2G) module that aims to learn the correspondences between local and global features across modalities vi...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
Learning representations of multimodal data that are both informative and robust to missing modaliti...
We present the deep self-correlation (DSC) descriptor for establishing dense correspondences between...
The majority of point cloud registration methods currently rely on extracting features from points. ...
Although recent point cloud analysis achieves impressive progress, the paradigm of representation le...
In this paper we explore the recent topic of point cloud completion, guided by an auxiliary image. W...
Learning representations of multimodal data that are both informative and robust to missing modaliti...
Effectively learning and extracting the feature representations of 3D point clouds is an important y...
We introduce Point-Bind, a 3D multi-modality model aligning point clouds with 2D image, language, au...
Domain adaptation for 3D point cloud has attracted a lot of interest since it can avoid the time-con...
The application of 3D scenes has gradually expanded in recent years. A 3D point cloud is unreliable ...
In this paper, we tackle the challenging problem of point cloud completion from the perspective of f...
Most machine learning applications involve a domain shift between data on which a model has initiall...
We present a novel, end-to-end learnable, multiview 3D point cloud registration algorithm. Registrat...
Current point-cloud detection methods have difficulty detecting the open-vocabulary objects in the r...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
Learning representations of multimodal data that are both informative and robust to missing modaliti...
We present the deep self-correlation (DSC) descriptor for establishing dense correspondences between...
The majority of point cloud registration methods currently rely on extracting features from points. ...
Although recent point cloud analysis achieves impressive progress, the paradigm of representation le...
In this paper we explore the recent topic of point cloud completion, guided by an auxiliary image. W...
Learning representations of multimodal data that are both informative and robust to missing modaliti...
Effectively learning and extracting the feature representations of 3D point clouds is an important y...
We introduce Point-Bind, a 3D multi-modality model aligning point clouds with 2D image, language, au...
Domain adaptation for 3D point cloud has attracted a lot of interest since it can avoid the time-con...
The application of 3D scenes has gradually expanded in recent years. A 3D point cloud is unreliable ...
In this paper, we tackle the challenging problem of point cloud completion from the perspective of f...
Most machine learning applications involve a domain shift between data on which a model has initiall...
We present a novel, end-to-end learnable, multiview 3D point cloud registration algorithm. Registrat...
Current point-cloud detection methods have difficulty detecting the open-vocabulary objects in the r...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
Learning representations of multimodal data that are both informative and robust to missing modaliti...
We present the deep self-correlation (DSC) descriptor for establishing dense correspondences between...