Masked auto-encoding is a popular and effective self-supervised learning approach to point cloud learning. However, most of the existing methods reconstruct only the masked points and overlook the local geometry information, which is also important to understand the point cloud data. In this work, we make the first attempt, to the best of our knowledge, to consider the local geometry information explicitly into the masked auto-encoding, and propose a novel Masked Surfel Prediction (MaskSurf) method. Specifically, given the input point cloud masked at a high ratio, we learn a transformer-based encoder-decoder network to estimate the underlying masked surfels by simultaneously predicting the surfel positions (i.e., points) and per-surfel orie...
Point clouds are among popular visual representations for immersive media. However, the vast amount ...
Most prior work represents the shapes of point clouds by coordinates. However, it is insufficient to...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Masked autoencoding has achieved great success for self-supervised learning in the image and languag...
Learning representations for point clouds is an important task in 3D computer vision, especially wit...
Self-supervised learning is attracting large attention in point cloud understanding. However, explor...
We propose ADIOS, a masked image model (MIM) framework for self-supervised learning, which simultane...
Point clouds serve as a common type of data representation for general geometric objects and abstrac...
In autonomous driving, the 3D LiDAR (Light Detection and Ranging) point cloud data of the target are...
Point clouds serve as a common type of data representation for general geometric objects and abstrac...
This paper explores improvements to the masked image modeling (MIM) paradigm. The MIM paradigm enabl...
We present a new self-supervised paradigm on point cloud sequence understanding. Inspired by the dis...
Point clouds are among popular visual representations for immersive media. However, the vast amount ...
Most prior work represents the shapes of point clouds by coordinates. However, it is insufficient to...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Transformer-based Self-supervised Representation Learning methods learn generic features from unlabe...
Masked autoencoding has achieved great success for self-supervised learning in the image and languag...
Learning representations for point clouds is an important task in 3D computer vision, especially wit...
Self-supervised learning is attracting large attention in point cloud understanding. However, explor...
We propose ADIOS, a masked image model (MIM) framework for self-supervised learning, which simultane...
Point clouds serve as a common type of data representation for general geometric objects and abstrac...
In autonomous driving, the 3D LiDAR (Light Detection and Ranging) point cloud data of the target are...
Point clouds serve as a common type of data representation for general geometric objects and abstrac...
This paper explores improvements to the masked image modeling (MIM) paradigm. The MIM paradigm enabl...
We present a new self-supervised paradigm on point cloud sequence understanding. Inspired by the dis...
Point clouds are among popular visual representations for immersive media. However, the vast amount ...
Most prior work represents the shapes of point clouds by coordinates. However, it is insufficient to...
In this paper, we present the idea of Self Supervised learning on the shape completion and classific...