Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data

A current hindrance to the scientific use of available bathymetric lidar point clouds is the frequent lack of accurate and thorough segmentation of seafloor points. Furthermore, scientific end-users typically lack access to waveforms, trajectories, and other upstream data, and also do not have the t...

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Main Authors: Jaehoon Jung, Jaebin Lee, Christopher E. Parrish
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/18/3665
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spelling doaj-9db52f01ff344eac8db5d8ff5e2f8f682021-09-26T01:17:27ZengMDPI AGRemote Sensing2072-42922021-09-01133665366510.3390/rs13183665Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar DataJaehoon Jung0Jaebin Lee1Christopher E. Parrish2School of Civil and Construction Engineering, Oregon State University, 101 Kearney Hall, Corvallis, OR 97331, USADepartment of Civil Engineering, Mokpo National University, 1666 Youngsan-ro, Muan 58554, Jeonnam, KoreaSchool of Civil and Construction Engineering, Oregon State University, 101 Kearney Hall, Corvallis, OR 97331, USAA current hindrance to the scientific use of available bathymetric lidar point clouds is the frequent lack of accurate and thorough segmentation of seafloor points. Furthermore, scientific end-users typically lack access to waveforms, trajectories, and other upstream data, and also do not have the time or expertise to perform extensive manual point cloud editing. To address these needs, this study seeks to develop and test a novel clustering approach to seafloor segmentation that solely uses georeferenced point clouds. The proposed approach does not make any assumptions regarding the statistical distribution of points in the input point cloud. Instead, the approach organizes the point cloud into an inverse histogram and finds a gap that best separates the seafloor using the proposed peak-detection method. The proposed approach is evaluated with datasets acquired in Florida with a Riegl VQ-880-G bathymetric LiDAR system. The parameters are optimized through a sensitivity analysis with a point-wise comparison between the extracted seafloor and ground truth. With optimized parameters, the proposed approach achieved F1-scores of 98.14–98.77%, which outperforms three popular existing methods. Further, we compared seafloor points with Reson 8125 MBES hydrographic survey data. The results indicate that seafloor points were detected successfully with vertical errors of −0.190 ± 0.132 m and −0.185 ± 0.119 m (μ ± σ) for two test datasets.https://www.mdpi.com/2072-4292/13/18/3665bathymetric lidarseafloor segmentationclusteringinverse histogram
collection DOAJ
language English
format Article
sources DOAJ
author Jaehoon Jung
Jaebin Lee
Christopher E. Parrish
spellingShingle Jaehoon Jung
Jaebin Lee
Christopher E. Parrish
Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
Remote Sensing
bathymetric lidar
seafloor segmentation
clustering
inverse histogram
author_facet Jaehoon Jung
Jaebin Lee
Christopher E. Parrish
author_sort Jaehoon Jung
title Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
title_short Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
title_full Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
title_fullStr Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
title_full_unstemmed Inverse Histogram-Based Clustering Approach to Seafloor Segmentation from Bathymetric Lidar Data
title_sort inverse histogram-based clustering approach to seafloor segmentation from bathymetric lidar data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-09-01
description A current hindrance to the scientific use of available bathymetric lidar point clouds is the frequent lack of accurate and thorough segmentation of seafloor points. Furthermore, scientific end-users typically lack access to waveforms, trajectories, and other upstream data, and also do not have the time or expertise to perform extensive manual point cloud editing. To address these needs, this study seeks to develop and test a novel clustering approach to seafloor segmentation that solely uses georeferenced point clouds. The proposed approach does not make any assumptions regarding the statistical distribution of points in the input point cloud. Instead, the approach organizes the point cloud into an inverse histogram and finds a gap that best separates the seafloor using the proposed peak-detection method. The proposed approach is evaluated with datasets acquired in Florida with a Riegl VQ-880-G bathymetric LiDAR system. The parameters are optimized through a sensitivity analysis with a point-wise comparison between the extracted seafloor and ground truth. With optimized parameters, the proposed approach achieved F1-scores of 98.14–98.77%, which outperforms three popular existing methods. Further, we compared seafloor points with Reson 8125 MBES hydrographic survey data. The results indicate that seafloor points were detected successfully with vertical errors of −0.190 ± 0.132 m and −0.185 ± 0.119 m (μ ± σ) for two test datasets.
topic bathymetric lidar
seafloor segmentation
clustering
inverse histogram
url https://www.mdpi.com/2072-4292/13/18/3665
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AT jaebinlee inversehistogrambasedclusteringapproachtoseafloorsegmentationfrombathymetriclidardata
AT christophereparrish inversehistogrambasedclusteringapproachtoseafloorsegmentationfrombathymetriclidardata
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