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[1]ֿ .GPUٵĶԴں㷨о[J].ڿƼ,2023,25(12):11-14.
Research on Multi-Source Point Cloud Fusion Algorithm Based on GPU Acceleration[J].Popular Science & Technology,2023,25(12):11-14.

GPUٵĶԴں㷨о()

ڿƼ[ISSN:1008-1151/CN:45-1235/N]

:
25
:
202312
ҳ:
11-14
Ŀ:
Ϣͨ
:
2023-12-20

Ϣ/Info

Title:
Research on Multi-Source Point Cloud Fusion Algorithm Based on GPU Acceleration
:
ֿ
ѧ̻еѧԺ 710064
ؼ:
GPUںл
Keywords:
GPU acceleration point cloud fusion parallel computing
ױ־:
A
ժҪ:
ںһֽԴĵ׼ںΪһ׼ȷάģ͵Ҫ㷨ĿǰѾֵں㷨紮б̷ʽICPǸ׼ȣЩ㷨ͨҪļԴ»ͼδԪGPUм㼼һָЧĶԴں㷨ҪGPUĵ׼㷨͵ں㷨ͨԵGPUеĴ洢ʹŻԼƸЧGPU㷨ԴߵںϵļٶȺЧʣΪʵӦṩ֧֡
Abstract:
Point cloud fusion is an important algorithm in registering and fusing point cloud data from multiple sources into a more complete and accurate three-dimensional model. In the past few decades, many point cloud fusion algorithms have been proposed, such as ICP(In-circuit programmer) and non-rigid registration, etc. These algorithms typically require a large amount of computing resources. This article proposes an efficient multi-source point cloud fusion algorithm based on GPU(graphics processing unit) parallel computing technology, mainly including GPU based point cloud registration algorithm and point cloud fusion algorithm. By optimizing the storage and transmission of point cloud data in GPU and designing efficient GPU parallel algorithms, the computing speed and efficiency of point cloud fusion can be greatly improved, providing strong support for practical applications.

ο/References:

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ע/Memo

ע/Memo:
ոڡ2023-05-29߼顿ֿܣ1998Уˣѧ̻еѧԺ˶ʿооΪ
/Last Update: 2024-03-04
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