Skip to main content

An optimized convolutional neural network for the 3D point-cloud compression.

Luo, G., He, B., Xiong, Y., Wang, L., Wang, H., Zhu, Z. and Shi, X., 2023. An optimized convolutional neural network for the 3D point-cloud compression. Sensors, 23 (4), 2250.

Full text available as:

[img]
Preview
PDF
An Optimized Convolutional Neural Network for the 3D Point-Cloud Compression.pdf - Published Version
Available under License Creative Commons Attribution.

3MB

DOI: 10.3390/s23042250

Abstract

Due to the tremendous volume taken by the 3D point-cloud models, knowing how to achieve the balance between a high compression ratio, a low distortion rate, and computing cost in point-cloud compression is a significant issue in the field of virtual reality (VR). Convolutional neural networks have been used in numerous point-cloud compression research approaches during the past few years in an effort to progress the research state. In this work, we have evaluated the effects of different network parameters, including neural network depth, stride, and activation function on point-cloud compression, resulting in an optimized convolutional neural network for compression. We first have analyzed earlier research on point-cloud compression based on convolutional neural networks before designing our own convolutional neural network. Then, we have modified our model parameters using the experimental data to further enhance the effect of point-cloud compression. Based on the experimental results, we have found that the neural network with the 4 layers and 2 strides parameter configuration using the Sigmoid activation function outperforms the default configuration by 208% in terms of the compression-distortion rate. The experimental results show that our findings are effective and universal and make a great contribution to the research of point-cloud compression using convolutional neural networks.

Item Type:Article
ISSN:1424-8220
Uncontrolled Keywords:activation function; convolutional neural network; point-cloud compression
Group:Faculty of Media & Communication
ID Code:40405
Deposited By: Symplectic RT2
Deposited On:28 Oct 2024 16:50
Last Modified:28 Oct 2024 16:50

Downloads

Downloads per month over past year

More statistics for this item...
Repository Staff Only -