Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments

Topographic processes, such as sediment erosion, accumulation, and transport are crucial for understanding the evolution of natural landscapes. Current developments in permanent laser scanning (PLS) technology and 4D change detection methods have made it possible to extract spatiotemporal change obj...

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Main Authors: J. Wang, K. Anders
Format: Article
Language:English
Published: Copernicus Publications 2025-07-01
Series:ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://isprs-annals.copernicus.org/articles/X-G-2025/929/2025/isprs-annals-X-G-2025-929-2025.pdf
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author J. Wang
K. Anders
author_facet J. Wang
K. Anders
author_sort J. Wang
collection DOAJ
description Topographic processes, such as sediment erosion, accumulation, and transport are crucial for understanding the evolution of natural landscapes. Current developments in permanent laser scanning (PLS) technology and 4D change detection methods have made it possible to extract spatiotemporal change objects from near-continuous 3D observations, e.g., 4D objects-by-change. However, the automatic characterization and identification of these processes remain challenging due to the complex spatiotemporal data and unpredictable types of topographic processes in natural environments. In this paper, we present a time series-based unsupervised deep clustering framework for identifying topographic processes without manual feature engineering and annotations. By leveraging the representation learning capability of autoencoders, especially using convolutional neural networks (CNNs) as feature extractors, our approach implements the dimensionality reduction of the original inputs to uniform low-dimensional vectors in latent space. Subsequently, after jointly optimizing the reconstruction and clustering loss, our model generates unique clusters with high intra-cluster similarity and inter-cluster variability. We validated the proposed method on a six-month 4D dataset, acquired at Kijkduin sandy beach (The Netherlands), yielding distinctive clusters that correspond to sediment change phenomena. Our results demonstrate that the deep learning-based method successfully identifies topographic processes, providing an efficient and scalable alternative to traditional feature engineering-based approaches. This work highlights the potential for automating topographic process identification and supporting long-term environmental monitoring.
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spelling doaj-art-8d263eead6e94ea9b0880db098ec1b172025-08-20T03:27:25ZengCopernicus PublicationsISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences2194-90422194-90502025-07-01X-G-202592993610.5194/isprs-annals-X-G-2025-929-2025Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural EnvironmentsJ. Wang0K. Anders1Professorship of Remote Sensing Applications, TUM School of Engineering and Design, Technical University of Munich, GermanyProfessorship of Remote Sensing Applications, TUM School of Engineering and Design, Technical University of Munich, GermanyTopographic processes, such as sediment erosion, accumulation, and transport are crucial for understanding the evolution of natural landscapes. Current developments in permanent laser scanning (PLS) technology and 4D change detection methods have made it possible to extract spatiotemporal change objects from near-continuous 3D observations, e.g., 4D objects-by-change. However, the automatic characterization and identification of these processes remain challenging due to the complex spatiotemporal data and unpredictable types of topographic processes in natural environments. In this paper, we present a time series-based unsupervised deep clustering framework for identifying topographic processes without manual feature engineering and annotations. By leveraging the representation learning capability of autoencoders, especially using convolutional neural networks (CNNs) as feature extractors, our approach implements the dimensionality reduction of the original inputs to uniform low-dimensional vectors in latent space. Subsequently, after jointly optimizing the reconstruction and clustering loss, our model generates unique clusters with high intra-cluster similarity and inter-cluster variability. We validated the proposed method on a six-month 4D dataset, acquired at Kijkduin sandy beach (The Netherlands), yielding distinctive clusters that correspond to sediment change phenomena. Our results demonstrate that the deep learning-based method successfully identifies topographic processes, providing an efficient and scalable alternative to traditional feature engineering-based approaches. This work highlights the potential for automating topographic process identification and supporting long-term environmental monitoring.https://isprs-annals.copernicus.org/articles/X-G-2025/929/2025/isprs-annals-X-G-2025-929-2025.pdf
spellingShingle J. Wang
K. Anders
Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
title Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
title_full Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
title_fullStr Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
title_full_unstemmed Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
title_short Unsupervised Deep Clustering on Spatiotemporal Objects Extracted from 4D Point Clouds for Automatic Identification of Topographic Processes in Natural Environments
title_sort unsupervised deep clustering on spatiotemporal objects extracted from 4d point clouds for automatic identification of topographic processes in natural environments
url https://isprs-annals.copernicus.org/articles/X-G-2025/929/2025/isprs-annals-X-G-2025-929-2025.pdf
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AT kanders unsuperviseddeepclusteringonspatiotemporalobjectsextractedfrom4dpointcloudsforautomaticidentificationoftopographicprocessesinnaturalenvironments