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Lifelong clustering for seafloor images interpretation in AUV surveys

Lifelong clustering for seafloor images interpretation in AUV surveys
Lifelong clustering for seafloor images interpretation in AUV surveys

Online image interpretation to show habitat distribution patterns is essential for enhancing the environmental perception of Autonomous Underwater Vehicles (AUVs). Classifi-cation methods are challenging to perform because the collected images may fall outside predefined classification boundaries. Clustering, however, offers an alternative approach without relying on predefined boundaries. To enable online image interpre-tation, we propose a LifeLong Clustering (LLC) method, which incrementally clusters streaming data. Specifically, a memory bank is employed to store a sparse subset of previously collected images to reduce the computational load. Cluster merging and splitting techniques are utilized to maintain the model components adaptively, ensuring it accommodates new data while pre-serving previously learned knowledge. The clustering results on a field survey dataset demonstrate that the proposed LLC method achieves an average Normalized Mutual Information (NMI) score of 0.65 when compared to the Non-LLC method, and 0.62 when compared to other LLC results obtained from different survey paths. It highlights the robustness and reliability of the proposed method, showcasing its ability to deliver consistent clustering results across varying conditions. This consistency underscores the potential of the method to enhance AUV decision-making in real-time, enabling more informed and efficient operations.

clustering, lifelong learning, unsupervised learning
IEEE
Liang, Cailei
f9a26dcf-539b-42c0-8b54-e266c89cf6ea
Bodenmann, Adrian
070a668f-cc2f-402a-844e-cdf207b24f50
Fenton, Sam
770c1178-9098-40cb-9309-c1ac1b446ff7
Simmons, Samuel
ba132e33-5022-4e27-a58e-20efce6ace7d
Turnock, Stephen
d6442f5c-d9af-4fdb-8406-7c79a92b26ce
Thornton, Blair
8293beb5-c083-47e3-b5f0-d9c3cee14be9
Liang, Cailei
f9a26dcf-539b-42c0-8b54-e266c89cf6ea
Bodenmann, Adrian
070a668f-cc2f-402a-844e-cdf207b24f50
Fenton, Sam
770c1178-9098-40cb-9309-c1ac1b446ff7
Simmons, Samuel
ba132e33-5022-4e27-a58e-20efce6ace7d
Turnock, Stephen
d6442f5c-d9af-4fdb-8406-7c79a92b26ce
Thornton, Blair
8293beb5-c083-47e3-b5f0-d9c3cee14be9

Liang, Cailei, Bodenmann, Adrian, Fenton, Sam, Simmons, Samuel, Turnock, Stephen and Thornton, Blair (2025) Lifelong clustering for seafloor images interpretation in AUV surveys. In 2025 IEEE Underwater Technology, UT 2025. IEEE. 7 pp . (doi:10.1109/UT61067.2025.10947458).

Record type: Conference or Workshop Item (Paper)

Abstract

Online image interpretation to show habitat distribution patterns is essential for enhancing the environmental perception of Autonomous Underwater Vehicles (AUVs). Classifi-cation methods are challenging to perform because the collected images may fall outside predefined classification boundaries. Clustering, however, offers an alternative approach without relying on predefined boundaries. To enable online image interpre-tation, we propose a LifeLong Clustering (LLC) method, which incrementally clusters streaming data. Specifically, a memory bank is employed to store a sparse subset of previously collected images to reduce the computational load. Cluster merging and splitting techniques are utilized to maintain the model components adaptively, ensuring it accommodates new data while pre-serving previously learned knowledge. The clustering results on a field survey dataset demonstrate that the proposed LLC method achieves an average Normalized Mutual Information (NMI) score of 0.65 when compared to the Non-LLC method, and 0.62 when compared to other LLC results obtained from different survey paths. It highlights the robustness and reliability of the proposed method, showcasing its ability to deliver consistent clustering results across varying conditions. This consistency underscores the potential of the method to enhance AUV decision-making in real-time, enabling more informed and efficient operations.

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More information

Published date: 8 April 2025
Venue - Dates: 2025 IEEE Underwater Technology, UT 2025, , Taipei, Taiwan, 2025-03-02 - 2025-03-05
Keywords: clustering, lifelong learning, unsupervised learning

Identifiers

Local EPrints ID: 501924
URI: http://eprints.soton.ac.uk/id/eprint/501924
PURE UUID: 93ef310f-0955-435e-9b08-543c1eac404d
ORCID for Cailei Liang: ORCID iD orcid.org/0000-0002-8691-836X
ORCID for Adrian Bodenmann: ORCID iD orcid.org/0000-0002-3195-0602
ORCID for Stephen Turnock: ORCID iD orcid.org/0000-0001-6288-0400

Catalogue record

Date deposited: 12 Jun 2025 16:33
Last modified: 04 Sep 2025 02:35

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Contributors

Author: Cailei Liang ORCID iD
Author: Sam Fenton
Author: Samuel Simmons
Author: Stephen Turnock ORCID iD
Author: Blair Thornton

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