Comparison on Upscaling and Upsampling Methods of Underwater Sonar Point Clouds

Title
Comparison on Upscaling and Upsampling Methods of Underwater Sonar Point Clouds
Author(s)
Choi, yoonsil; Seo, Jungmin; Kim, Soo Mee
KIOST Author(s)
Seo, Jungmin(서정민)Kim, Soo Mee(김수미)
Alternative Author(s)
최윤실; 서정민; 김수미
Publication Year
2022-11-18
Abstract
We are developing a remotely controlled unmanned system for harbor infrastructure construction. In order to construct underwater sonar point cloud dataset for automatic tetrapod detection, we measured point clouds of 30 and 120 kg tetrapods in this study. First, the measured sonar point clouds of 30 kg tetrapod were upscaled by 1.58 times after subtracting them from the centroid of the tetrapod point clouds. And then we applied two upsampling methods, adversarial residual graph convolution network (AR-GCN) and point cloud library (PCL) to increase the density of the upscaled sonar data of 30 kg tetrapod. The performance of the upscaled and upsampled results were evaluated by Chamfer distance and earth mover’s distance. The new ARGCN trained with TTP dataset showed better qualitative and quantitative performances than PCL and AR-GCN trained with conventional dataset.
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/43512
Bibliographic Citation
한국인공지능학회&NAVER 추계공동학술대회, 2022
Publisher
한국인공지능학회, NAVER
Type
Conference
Language
Korean
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