Javascript must be enabled to continue!
Noise Injection-based Regularization for Point Cloud Processing
View through CrossRef
Abstract
Noise injection-based regularization, such as Dropout, has been widely used in image domain to improve the performance of deep neural networks (DNNs). However, efficient regularization in the point cloud domain is rarely exploited, and most of the state-of-the-art works focus on the data augmentation-based regularization. In this paper, we, for the first time, perform systematic investigation on noise injection-based regularization for point cloud-domain DNNs. To be specific, we propose a series of regularization techniques, namely DropFeat, DropPoint and DropCluster, to perform noise injection on the point feature maps at the feature level, point level and cluster level, respectively. We also empirically analyze the impacts of different factors, including dropping rate, cluster size and dropping position, to obtain useful insights and general deployment guidelines, which can facilitate the adoption of our approaches across different datasets and DNN architectures.We evaluate our proposed approaches on various DNN models for different point cloud processing tasks. Experimental results show that our approaches enable significant performance improvement. Notably, our DropCluster brings 1.5%, 1.3% and 0.8% higher overall accuracy for PointNet, PointNet++ and DGCNN, respectively, on ModelNet40 shape classification dataset. On ShapeNet part segmentation dataset, DropCluster brings 0.5%, 0.6% and 0.2% mean Intersection-over-union (IoU) increase for PointNet, PointNet++ and DGCNN, respectively. On S3DIS semantic segmentation dataset, DropCluster improves the mean IoU of PointNet, PointNet++ and DGCNN by 3.2%, 2.9% and 3.7%, respectively. Meanwhile, DropCluster also enables the overall accuracy increase for these three popular backbone DNNs by 2.4%, 2.2% and 1.8%, respectively.
Title: Noise Injection-based Regularization for Point Cloud Processing
Description:
Abstract
Noise injection-based regularization, such as Dropout, has been widely used in image domain to improve the performance of deep neural networks (DNNs).
However, efficient regularization in the point cloud domain is rarely exploited, and most of the state-of-the-art works focus on the data augmentation-based regularization.
In this paper, we, for the first time, perform systematic investigation on noise injection-based regularization for point cloud-domain DNNs.
To be specific, we propose a series of regularization techniques, namely DropFeat, DropPoint and DropCluster, to perform noise injection on the point feature maps at the feature level, point level and cluster level, respectively.
We also empirically analyze the impacts of different factors, including dropping rate, cluster size and dropping position, to obtain useful insights and general deployment guidelines, which can facilitate the adoption of our approaches across different datasets and DNN architectures.
We evaluate our proposed approaches on various DNN models for different point cloud processing tasks.
Experimental results show that our approaches enable significant performance improvement.
Notably, our DropCluster brings 1.
5%, 1.
3% and 0.
8% higher overall accuracy for PointNet, PointNet++ and DGCNN, respectively, on ModelNet40 shape classification dataset.
On ShapeNet part segmentation dataset, DropCluster brings 0.
5%, 0.
6% and 0.
2% mean Intersection-over-union (IoU) increase for PointNet, PointNet++ and DGCNN, respectively.
On S3DIS semantic segmentation dataset, DropCluster improves the mean IoU of PointNet, PointNet++ and DGCNN by 3.
2%, 2.
9% and 3.
7%, respectively.
Meanwhile, DropCluster also enables the overall accuracy increase for these three popular backbone DNNs by 2.
4%, 2.
2% and 1.
8%, respectively.
Related Results
A Mixed Regularization Method for Ill-Posed Problems
A Mixed Regularization Method for Ill-Posed Problems
In this paper we propose a mixed regularization method for ill-posed problems. This method combines iterative regularization methods and continuous regularization methods effective...
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
“Cloud Computing – Navigating the Digital Sky” is an extensive guide designed to provide a thorough understanding of cloud computing, an essential technology in today’s digital age...
Environmental History of Oceanic Noise Pollution
Environmental History of Oceanic Noise Pollution
The concept of “ocean noise” precedes the concept of “ocean noise pollution” by about half a century. Those seeking a body of scholarly literature on ocean noise as an environmenta...
Overview of Key Zonal Water Injection Technologies in China
Overview of Key Zonal Water Injection Technologies in China
Abstract
Separated layer water injection is the important technology to realize the oilfield long-term high and stable yield. Through continuous researches and te...
Point Cloud Classification Algorithm Based on the Fusion of the Local Binary Pattern Features and Structural Features of Voxels
Point Cloud Classification Algorithm Based on the Fusion of the Local Binary Pattern Features and Structural Features of Voxels
Point cloud classification is a key technology for point cloud applications and point cloud feature extraction is a key step towards achieving point cloud classification. Although ...
Local Similarity-Driven Refinement for Model-Agnostic Ground-Based Cloud Detection
Local Similarity-Driven Refinement for Model-Agnostic Ground-Based Cloud Detection
Cloud cover estimation is of crucial significance in meteorological observations and short-term/long-term weather forecasting, as it directly affects the accuracy of radiation bala...
Mechanism of suppressing noise intensity of squeezed state enhancement
Mechanism of suppressing noise intensity of squeezed state enhancement
This research focuses on advanced noise suppression technologies for high-precision measurement systems, particularly addressing the limitations of classical noise reducing approac...
MSG-Point-GAN: Multi-Scale Gradient Point GAN for Point Cloud Generation
MSG-Point-GAN: Multi-Scale Gradient Point GAN for Point Cloud Generation
The generative adversarial network (GAN) has recently emerged as a promising generative model. Its application in the image field has been extensive, but there has been little rese...

