The University of Southampton
University of Southampton Institutional Repository

Multimodal image and spectral feature learning for efficient analysis of water-suspended particles

Multimodal image and spectral feature learning for efficient analysis of water-suspended particles
Multimodal image and spectral feature learning for efficient analysis of water-suspended particles
We have developed a method to combine morphological and chemical information for the accurate identification of different particle types using optical measurement techniques that require no sample preparation. A combined holographic imaging and Raman spectroscopy setup is used to gather data from six different types of marine particles suspended in a large volume of seawater. Unsupervised feature learning is performed on the images and the spectral data using convolutional and single-layer autoencoders. The learned features are combined, where we demonstrate that non-linear dimensional reduction of the combined multimodal features can achieve a high clustering macro F1 score of 0.88, compared to a maximum of 0.61 when only image or spectral features are used. The method can be applied to long-term monitoring of particles in the ocean without the need for sample collection. In addition, it can be applied to data from different types of sensor measurements without significant modifications.
1094-4087
7492-7504
Takahashi, Tomoko
3f3f98c5-993c-4e11-b5ec-0fa4dbdbced9
Liu, Zonghua
76b789cb-cddf-49c2-89dd-ca8a56997486
Thevar, Thangeval
94339031-1bf3-4b2c-b149-a0694e9029e5
Burns, Nicholas
ec00597b-5a8b-4af1-8a42-252be6c61438
Lindsay, Dhugal
95b74b27-090f-4b4c-9b2d-892dbc8e6f54
Watson, John
5b87c996-09db-49f2-b114-404dcc418915
Mahajan, Sumeet
b131f40a-479e-4432-b662-19d60d4069e9
Yukioka, Satoru
f77deb3a-59fe-4cbb-8a55-89ee8f1e878a
Tanaka, Shuhei
2654e53c-56cf-45fe-862a-331b00a1897c
Nagai, Yukiko
a837897a-19f1-4ab8-8c26-13b079318d09
Thornton, Blair
8293beb5-c083-47e3-b5f0-d9c3cee14be9
Takahashi, Tomoko
3f3f98c5-993c-4e11-b5ec-0fa4dbdbced9
Liu, Zonghua
76b789cb-cddf-49c2-89dd-ca8a56997486
Thevar, Thangeval
94339031-1bf3-4b2c-b149-a0694e9029e5
Burns, Nicholas
ec00597b-5a8b-4af1-8a42-252be6c61438
Lindsay, Dhugal
95b74b27-090f-4b4c-9b2d-892dbc8e6f54
Watson, John
5b87c996-09db-49f2-b114-404dcc418915
Mahajan, Sumeet
b131f40a-479e-4432-b662-19d60d4069e9
Yukioka, Satoru
f77deb3a-59fe-4cbb-8a55-89ee8f1e878a
Tanaka, Shuhei
2654e53c-56cf-45fe-862a-331b00a1897c
Nagai, Yukiko
a837897a-19f1-4ab8-8c26-13b079318d09
Thornton, Blair
8293beb5-c083-47e3-b5f0-d9c3cee14be9

Takahashi, Tomoko, Liu, Zonghua, Thevar, Thangeval, Burns, Nicholas, Lindsay, Dhugal, Watson, John, Mahajan, Sumeet, Yukioka, Satoru, Tanaka, Shuhei, Nagai, Yukiko and Thornton, Blair (2023) Multimodal image and spectral feature learning for efficient analysis of water-suspended particles. Optics Express, 31 (5), 7492-7504. (doi:10.1364/OE.470878).

Record type: Article

Abstract

We have developed a method to combine morphological and chemical information for the accurate identification of different particle types using optical measurement techniques that require no sample preparation. A combined holographic imaging and Raman spectroscopy setup is used to gather data from six different types of marine particles suspended in a large volume of seawater. Unsupervised feature learning is performed on the images and the spectral data using convolutional and single-layer autoencoders. The learned features are combined, where we demonstrate that non-linear dimensional reduction of the combined multimodal features can achieve a high clustering macro F1 score of 0.88, compared to a maximum of 0.61 when only image or spectral features are used. The method can be applied to long-term monitoring of particles in the ocean without the need for sample collection. In addition, it can be applied to data from different types of sensor measurements without significant modifications.

Text
Optics_Ex_accepted_ver_20230115 - Accepted Manuscript
Available under License Creative Commons Attribution.
Download (966kB)
Text
Optics_Ex_accepted_ver_20230115 - Accepted Manuscript
Available under License Creative Commons Attribution.
Download (856kB)
Text
oe-31-5-7492 - Version of Record
Available under License Creative Commons Attribution.
Download (3MB)

More information

Accepted/In Press date: 11 January 2023
Published date: 27 February 2023
Additional Information: Funding Information: Strategic International Collaborative Research Program (JPMJSC1705); Natural Environment Research Council (NE/R01227X/1); Japan Society for the Promotion of Science (18H03810, 18K13934); Sumitomo Foundation (203122). The authors thank Dr. T. Fukuba for his support in building the experimental setup. The authors also thank Dr. H. Sawada for providing samples for this work. Publisher Copyright: © 2023 OSA - The Optical Society. All rights reserved.

Identifiers

Local EPrints ID: 474401
URI: http://eprints.soton.ac.uk/id/eprint/474401
ISSN: 1094-4087
PURE UUID: 3295ce89-9231-4e3a-933e-e0d217cebf2c
ORCID for Sumeet Mahajan: ORCID iD orcid.org/0000-0001-8923-6666

Catalogue record

Date deposited: 21 Feb 2023 17:49
Last modified: 17 Mar 2024 03:10

Export record

Altmetrics

Contributors

Author: Tomoko Takahashi
Author: Zonghua Liu
Author: Thangeval Thevar
Author: Nicholas Burns
Author: Dhugal Lindsay
Author: John Watson
Author: Sumeet Mahajan ORCID iD
Author: Satoru Yukioka
Author: Shuhei Tanaka
Author: Yukiko Nagai
Author: Blair Thornton

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×