Automated classification of schools of the silver cyprinid Rastrineobola argentea in Lake Victoria acoustic survey data using random forests

Author:

Proud Roland1ORCID,Mangeni-Sande Richard12,Kayanda Robert J3,Cox Martin J14,Nyamweya Chrisphine5,Ongore Collins15,Natugonza Vianny2,Everson Inigo16,Elison Mboni7,Hobbs Laura89,Kashindye Benedicto Boniphace7,Mlaponi Enock W7,Taabu-Munyaho Anthony23,Mwainge Venny M5,Kagoya Esther2,Pegado Antonio10,Nduwayesu Evarist2,Brierley Andrew S1

Affiliation:

1. Pelagic Ecology Research Group, School of Biology, Scottish Oceans Institute, Gatty Marine Laboratory, University of St Andrews, St Andrews KY16 8LB, UK

2. National Fisheries Resources Research Institute (NaFiRRI), PO Box 343, Jinja, Uganda

3. Lake Victoria Fisheries Organization (LVFO), PO Box 1625, Jinja, Uganda

4. Australian Antarctic Division, 203 Channel Highway, Kingston, Tasmania 7050, Australia

5. Kenya Marine and Fisheries Research Institute (KMFRI), Mombasa, Kenya

6. School of Environmental Sciences, University of East Anglia, Norwich Research Park, Norwich NR4 7TJ, UK

7. Tanzania Fisheries Research Institute (TaFiRI), PO Box 475, Mwanza, Tanzania

8. Scottish Association for Marine Science, Oban, Argyll PA37 1QA, UK

9. Department of Mathematics and Statistics, University of Strathclyde, Glasgow G1 1XH, UK

10. Instituto de Investigacao Pesqueira (IIP), Maputo, Mozambique

Abstract

Abstract Biomass of the schooling fish Rastrineobola argentea (dagaa) is presently estimated in Lake Victoria by acoustic survey following the simple “rule” that dagaa is the source of most echo energy returned from the top third of the water column. Dagaa have, however, been caught in the bottom two-thirds, and other species occur towards the surface: a more robust discrimination technique is required. We explored the utility of a school-based random forest (RF) classifier applied to 120 kHz data from a lake-wide survey. Dagaa schools were first identified manually using expert opinion informed by fishing. These schools contained a lake-wide biomass of 0.68 million tonnes (MT). Only 43.4% of identified dagaa schools occurred in the top third of the water column, and 37.3% of all schools in the bottom two-thirds were classified as dagaa. School metrics (e.g. length, echo energy) for 49 081 manually classified dagaa and non-dagaa schools were used to build an RF school classifier. The best RF model had a classification test accuracy of 85.4%, driven largely by school length, and yielded a biomass of 0.71 MT, only c. 4% different from the manual estimate. The RF classifier offers an efficient method to generate a consistent dagaa biomass time series.

Funder

Scottish Funding Council Global Challenge Research Fund

GCRF

University of St Andrews

University of Strathclyde

GCRF Networking Grant

UK Academy of Medical Sciences

Royal Society International Collaboration Award

Rhoda Tumwebaze

Publisher

Oxford University Press (OUP)

Subject

Ecology,Aquatic Science,Ecology, Evolution, Behavior and Systematics,Oceanography

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