[Paper] Hybrid Spatial and Deep Learning-based Point Cloud Compression with Layered Representation on 3D Shape

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Hideaki Kimata
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引用次数: 0

Abstract

It is expected that the shapes of real-world objects such as buildings and people can be sensed, stored as point clouds, and utilized. For efficiently storing and transmitting a huge amount of point cloud data, point cloud compression methods based on deep learning have been studied. In order to grasp an overview or details of a desired building or person on a display, it is an important function to extract whole or a desired part of the point cloud from the compressed data and represent the characteristic shape of the object. In this paper, a hybrid point cloud encoding method is proposed, which consists of a layered structuring that presents the main features of the point cloud with various number of points and an efficient block-wise encoding by combining deep learning.
[论文]基于混合空间和深度学习的三维形状分层表示点云压缩
预计,建筑物、人等现实世界物体的形状可以被感知,并以点云的形式存储并加以利用。为了高效存储和传输海量的点云数据,人们研究了基于深度学习的点云压缩方法。为了在显示器上掌握想要的建筑物或人的概貌或细节,从压缩数据中提取整体或部分点云并表示物体的特征形状是一项重要功能。本文提出了一种混合点云编码方法,该方法由一种分层结构和一种结合深度学习的高效分块编码组成。
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来源期刊
ITE Transactions on Media Technology and Applications
ITE Transactions on Media Technology and Applications ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.70
自引率
0.00%
发文量
9
期刊介绍: ・Multimedia systems and applications ・Multimedia analysis and processing ・Universal services ・Advanced broadcasting media ・Broadcasting network technology ・Contents production ・CG and multimedia representation ・Consumer Electronics ・3D imaging technology ・Human Information ・Image sensing ・Information display ・Multimedia Storage ・Others.
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