In this paper, we present a deep learning model that exploits the power of self-supervision to perform 3D point cloud completion, estimating the missing part and a context region around it. Local and global information are encoded in a combined embedding. A denoising pretext task provides the network with the needed local cues, decoupled from the high-level semantics and naturally shared over multiple classes. On the other hand, contrastive learning maximizes the agreement between variants of the same shape with different missing portions, thus producing a representation which captures the global appearance of the shape. The combined embedding inherits category-agnostic properties from the chosen pretext tasks. Differently from existing app...
th the rise of deep neural networks a number of approaches for learning over 3D data have gained pop...
Point cloud completion task aims to predict the missing part of incomplete point clouds and generate...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
The goal of this paper is 3D shape completion: given an incomplete instance of a known category, hal...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Unpaired 3D object completion aims to predict a complete 3D shape from an incomplete input without k...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Point cloud processing and 3D shape understanding are challenging tasks for which deep learning tech...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
Recently, unstructured 3D point clouds have been widely used in remote sensing application. However,...
th the rise of deep neural networks a number of approaches for learning over 3D data have gained pop...
Point cloud completion task aims to predict the missing part of incomplete point clouds and generate...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
The goal of this paper is 3D shape completion: given an incomplete instance of a known category, hal...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Unpaired 3D object completion aims to predict a complete 3D shape from an incomplete input without k...
Depth images can be easily acquired using depth cameras. However, these images only contain partial ...
Point cloud processing and 3D shape understanding are challenging tasks for which deep learning tech...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
Recently, unstructured 3D point clouds have been widely used in remote sensing application. However,...
th the rise of deep neural networks a number of approaches for learning over 3D data have gained pop...
Point cloud completion task aims to predict the missing part of incomplete point clouds and generate...
With the rise of deep neural networks a number of approaches for learning over 3D data have gained p...