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Paper Abstract and Keywords
Presentation 2023-01-19 17:25
[Short Paper] An Empirical Study of Data Reduction Method for Point Cloud-based Millimeter-wave Link Quality Prediction
Shoki Ohta, Takayuki Nishio (Tokyo Tech), Riichi Kudo, Kahoko Takahashi, Hisashi Nagata (NTT) SeMI2022-93
Abstract (in Japanese) (See Japanese page) 
(in English) This study experimentally evaluates a tradeoff between prediction accuracy and the number of points on a millimeter-wave (mmWave) link quality prediction method using point clouds and machine learning. In high-frequency radio communications such as mmWave communications, link quality is greatly attenuated when the line-of-sight (LOS) communication path is blocked by a human body or a vehicle. A method using point clouds, which represent a set of points in a three-dimensional space, and machine learning has been proposed as a technique for predicting LOS blockage. While point clouds can accurately capture the 3D space with fewer privacy concerns, they require a large amount of data and computation. In this study, we applied random downsampling, a primitive but effective method for reducing the number of points, to point clouds acquired by LiDAR to reduce the data volume of point clouds, and evaluated the relationship between the reduction ratio and prediction accuracy. Experimental evaluation in an indoor environment showed that even when the number of points in the point cloud is reduced to about 1%, a large attenuation in mmWave throughput induced by human blockage can be predicted.
Keyword (in Japanese) (See Japanese page) 
(in English) link quality prediction / millimeter-wave communication / point cloud / machine learning / data reduction / / /  
Reference Info. IEICE Tech. Rep., vol. 122, no. 341, SeMI2022-93, pp. 96-100, Jan. 2023.
Paper # SeMI2022-93 
Date of Issue 2023-01-12 (SeMI) 
ISSN Online edition: ISSN 2432-6380
Copyright
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reproduction
All rights are reserved and no part of this publication may be reproduced or transmitted in any form or by any means, electronic or mechanical, including photocopy, recording, or any information storage and retrieval system, without permission in writing from the publisher. Notwithstanding, instructors are permitted to photocopy isolated articles for noncommercial classroom use without fee. (License No.: 10GA0019/12GB0052/13GB0056/17GB0034/18GB0034)
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Conference Information
Committee SeMI SeMI  
Conference Date 2023-01-19 - 2023-01-20 
Place (in Japanese) (See Japanese page) 
Place (in English) Naruto grand hotel 
Topics (in Japanese) (See Japanese page) 
Topics (in English)  
Paper Information
Registration To SeMI 
Conference Code 2023-01-SeMI-SeMI 
Language Japanese 
Title (in Japanese) (See Japanese page) 
Sub Title (in Japanese) (See Japanese page) 
Title (in English) An Empirical Study of Data Reduction Method for Point Cloud-based Millimeter-wave Link Quality Prediction 
Sub Title (in English)  
Keyword(1) link quality prediction  
Keyword(2) millimeter-wave communication  
Keyword(3) point cloud  
Keyword(4) machine learning  
Keyword(5) data reduction  
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1st Author's Name Shoki Ohta  
1st Author's Affiliation Tokyo Institute of Technology (Tokyo Tech)
2nd Author's Name Takayuki Nishio  
2nd Author's Affiliation Tokyo Institute of Technology (Tokyo Tech)
3rd Author's Name Riichi Kudo  
3rd Author's Affiliation NTT (NTT)
4th Author's Name Kahoko Takahashi  
4th Author's Affiliation NTT (NTT)
5th Author's Name Hisashi Nagata  
5th Author's Affiliation NTT (NTT)
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Speaker Author-1 
Date Time 2023-01-19 17:25:00 
Presentation Time 10 minutes 
Registration for SeMI 
Paper # SeMI2022-93 
Volume (vol) vol.122 
Number (no) no.341 
Page pp.96-100 
#Pages
Date of Issue 2023-01-12 (SeMI) 


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