Robust Object Classification Approach using Spherical Harmonics

09/02/2020
by   Ayman Mukhaimar, et al.
0

In this paper, we present a robust spherical harmonics approach for the classification of point cloud-based objects. Spherical harmonics have been used for classification over the years, with several frameworks existing in the literature. These approaches use variety of spherical harmonics based descriptors to classify objects. We first investigated these frameworks robustness against data augmentation, such as outliers and noise, as it has not been studied before. Then we propose a spherical convolution neural network framework for robust object classification. The proposed framework uses the voxel grid of concentric spheres to learn features over the unit ball. Our proposed model learn features that are less sensitive to data augmentation due to the selected sampling strategy and the designed convolution operation. We tested our proposed model against several types of data augmentation, such as noise and outliers. Our results show that the proposed model outperforms the state of art networks in terms of robustness to data augmentation.

READ FULL TEXT

page 2

page 8

research
12/11/2021

On Automatic Data Augmentation for 3D Point Cloud Classification

Data augmentation is an important technique to reduce overfitting and im...
research
07/27/2020

Part-Aware Data Augmentation for 3D Object Detection in Point Cloud

Data augmentation has greatly contributed to improving the performance i...
research
03/10/2021

Sim2Real 3D Object Classification using Spherical Kernel Point Convolution and a Deep Center Voting Scheme

While object semantic understanding is essential for most service roboti...
research
06/21/2021

Robust Pooling through the Data Mode

The task of learning from point cloud data is always challenging due to ...
research
06/26/2019

Mapped Convolutions

We present a versatile formulation of the convolution operation that we ...
research
02/08/2022

Equivariance versus Augmentation for Spherical Images

We analyze the role of rotational equivariance in convolutional neural n...
research
02/22/2018

Tensor Field Networks: Rotation- and Translation-Equivariant Neural Networks for 3D Point Clouds

We introduce tensor field networks, which are locally equivariant to 3D ...

Please sign up or login with your details

Forgot password? Click here to reset