Robust Kernel-based Feature Representation for 3D Point Cloud Analysis via Circular Convolutional Network
Seunghwan Jung, Yeong-Gil Shin, and Minyoung Chung

TL;DR
This paper introduces a rotation, density, and scale-invariant local feature descriptor for 3D point clouds, utilizing circular convolutional kernels and global aggregation to enhance registration, classification, and segmentation accuracy.
Contribution
The paper proposes a novel kernel-based local feature descriptor with a symmetric kernel point distribution and a global aggregation method for robust 3D point cloud analysis.
Findings
Reduced 70% rotation and translation errors in registration
Achieved superior performance on benchmark datasets
Performed comparably in classification and segmentation tasks
Abstract
Feature descriptors of point clouds are used in several applications, such as registration and part segmentation of 3D point clouds. Learning discriminative representations of local geometric features is unquestionably the most important task for accurate point cloud analyses. However, it is challenging to develop rotation or scale-invariant descriptors. Most previous studies have either ignored rotations or empirically studied optimal scale parameters, which hinders the applicability of the methods for real-world datasets. In this paper, we present a new local feature description method that is robust to rotation, density, and scale variations. Moreover, to improve representations of the local descriptors, we propose a global aggregation method. First, we place kernels aligned around each point in the normal direction. To avoid the sign problem of the normal vector, we use a symmetric…
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Taxonomy
Topics3D Shape Modeling and Analysis · 3D Surveying and Cultural Heritage · Image Processing and 3D Reconstruction
MethodsConvolution
