Learning new representations of 3D point clouds is an active research area in 3D vision, as the order-invariant point cloud structure still presents challenges to the design of neural network architectures. Recent works explored learning either global or local features or both for point clouds, however none of the earlier methods focused on capturing contextual shape information by analysing local orientation distribution of points. In this paper, we leverage on point orientation distributions around a point in order to obtain an expressive local neighborhood representation for point clouds. We achieve this by dividing the spherical neighborhood of a given point into predefined cone volumes, and statistics inside each volume are used as poi...
Point cloud analysis without pose priors is very challenging in real applications, as the orientatio...
With the improvement and proliferation of 3D sensors, price cut and enhancementof computational powe...
We introduce a novel technique for neural point cloud consolidation which learns from only the input...
Effective representation of objects in irregular and unordered point clouds is one of the core chall...
Feature descriptors of point clouds are used in several applications, such as registration and part ...
With advances in deep learning model training strategies, the training of Point cloud classification...
The application of deep learning to 3D point clouds is challenging due to its lack of order. Inspire...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
With the introduction of effective and general deep learning network frameworks, deep learning based...
International audienceIn this paper, we propose PCPNET, a deep-learning based approach for estimatin...
With the proliferation of Lidar sensors and 3D vision cameras, 3D point cloud analysis has attracted...
In spite of the good performance of convolutional neural network (CNN) and graph neural network (GNN...
In order to achieve a better performance for point cloud analysis, many researchers apply deep neura...
The point cloud is a set of data points in a 3D coordinate system with an irregular data format. As ...
Standard spatial convolutions assume input data with a regular neighborhood structure. Existing meth...
Point cloud analysis without pose priors is very challenging in real applications, as the orientatio...
With the improvement and proliferation of 3D sensors, price cut and enhancementof computational powe...
We introduce a novel technique for neural point cloud consolidation which learns from only the input...
Effective representation of objects in irregular and unordered point clouds is one of the core chall...
Feature descriptors of point clouds are used in several applications, such as registration and part ...
With advances in deep learning model training strategies, the training of Point cloud classification...
The application of deep learning to 3D point clouds is challenging due to its lack of order. Inspire...
The recent trend in deep learning methods for 3D point cloud understanding is to propose increasingl...
With the introduction of effective and general deep learning network frameworks, deep learning based...
International audienceIn this paper, we propose PCPNET, a deep-learning based approach for estimatin...
With the proliferation of Lidar sensors and 3D vision cameras, 3D point cloud analysis has attracted...
In spite of the good performance of convolutional neural network (CNN) and graph neural network (GNN...
In order to achieve a better performance for point cloud analysis, many researchers apply deep neura...
The point cloud is a set of data points in a 3D coordinate system with an irregular data format. As ...
Standard spatial convolutions assume input data with a regular neighborhood structure. Existing meth...
Point cloud analysis without pose priors is very challenging in real applications, as the orientatio...
With the improvement and proliferation of 3D sensors, price cut and enhancementof computational powe...
We introduce a novel technique for neural point cloud consolidation which learns from only the input...