In the point cloud analysis task, the existing local feature aggregation descriptors (LFAD) do not fully utilize the neighborhood information of center points. Previous methods only use the distance information to constrain the local aggregation process, which is easy to be affected by abnormal points and cannot adequately fit the original geometry of the point cloud. This paper argues that fine-grained geometric information (FGGI) plays an important role in the aggregation of local features. Based on this, we propose a gradient-based local attention module to address the above problem, which is called Gradient Attention Module (GAM). GAM simplifies the process of extracting the gradient information in the neighborhood to explicit represent...
Directly processing 3D point cloud data becomes dominant in classification and segmentation tasks. P...
Fully exploring the correlation of local features and their spatial distribution in point clouds is ...
Understanding the implication of point cloud is still challenging in the aim of classification or se...
In spite of the good performance of convolutional neural network (CNN) and graph neural network (GNN...
Extracting geometric descriptors in 3D vision is the first step. It plays an important role in 3D re...
Rigid registration of point clouds is a fundamental problem in computer vision with many application...
Point cloud registration is a fundamental task in many applications such as localization, mapping, t...
Point cloud analysis is challenging due to the irregularity and sparsity, making it difficult to cap...
International audienceThis paper presents a new technique for detecting sharp features on point-samp...
The irregularity and disorder of point clouds bring many challenges to point cloud analysis. PointML...
This paper gives an overview over several techniques for detection of features, and in particular sh...
Point cloud processing based on deep learning is developing rapidly. However, previous networks fail...
As a pioneering work that directly applies deep learning methods to raw point cloud data, PointNet h...
Abstract—This paper presents a new technique for detecting sharp features on point-sampled geometry....
Point clouds are becoming one of the most common ways to represent geographical data. The scale of a...
Directly processing 3D point cloud data becomes dominant in classification and segmentation tasks. P...
Fully exploring the correlation of local features and their spatial distribution in point clouds is ...
Understanding the implication of point cloud is still challenging in the aim of classification or se...
In spite of the good performance of convolutional neural network (CNN) and graph neural network (GNN...
Extracting geometric descriptors in 3D vision is the first step. It plays an important role in 3D re...
Rigid registration of point clouds is a fundamental problem in computer vision with many application...
Point cloud registration is a fundamental task in many applications such as localization, mapping, t...
Point cloud analysis is challenging due to the irregularity and sparsity, making it difficult to cap...
International audienceThis paper presents a new technique for detecting sharp features on point-samp...
The irregularity and disorder of point clouds bring many challenges to point cloud analysis. PointML...
This paper gives an overview over several techniques for detection of features, and in particular sh...
Point cloud processing based on deep learning is developing rapidly. However, previous networks fail...
As a pioneering work that directly applies deep learning methods to raw point cloud data, PointNet h...
Abstract—This paper presents a new technique for detecting sharp features on point-sampled geometry....
Point clouds are becoming one of the most common ways to represent geographical data. The scale of a...
Directly processing 3D point cloud data becomes dominant in classification and segmentation tasks. P...
Fully exploring the correlation of local features and their spatial distribution in point clouds is ...
Understanding the implication of point cloud is still challenging in the aim of classification or se...