Noise Injection-based Regularization for Point Cloud Processing
Xiao Zang, Yi Xie, Siyu Liao, Jie Chen, Bo Yuan

TL;DR
This paper introduces noise injection-based regularization techniques for point cloud neural networks, demonstrating significant performance improvements across various models and datasets by systematically analyzing and applying DropFeat, DropPoint, and DropCluster methods.
Contribution
It pioneers systematic investigation of noise injection regularization in point cloud DNNs and proposes three novel techniques with deployment guidelines and empirical validation.
Findings
DropCluster improves accuracy by up to 1.5% on ModelNet40.
DropCluster increases mean IoU by up to 3.7% on S3DIS.
Regularization techniques outperform data augmentation methods.
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 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…
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Taxonomy
MethodsDeep Graph Convolutional Neural Network · eToro Customer Care Number +1-833-534-1729 · Dropout
