Publication | Open Access
Semi-Automated Data Processing and Semi-Supervised Machine Learning for the Detection and Classification of Water-Column Fish Schools and Gas Seeps with a Multibeam Echosounder
21
Citations
37
References
2021
Year
EngineeringMachine LearningAdriatic SeaMachine Learning ToolMarine EngineeringGas SeepsUnderwater ImagingImage AnalysisData ScienceTarget DetectionPattern RecognitionSemi-supervised Machine LearningSonar Signal ProcessingSemi-automated Data ProcessingMachine VisionAutomatic Target RecognitionSynthetic Aperture RadarFishery ScienceComputer ScienceMultibeam EchosoundersDeep LearningComputer VisionOcean EngineeringRemote SensingClassifier System
Multibeam echosounders are widely used for 3D bathymetric mapping, and increasingly for water column studies. However, they rapidly collect huge volumes of data, which poses a challenge for water column data processing that is often still manual and time-consuming, or affected by low efficiency and high false detection rates if automated. This research describes a comprehensive and reproducible workflow that improves efficiency and reliability of target detection and classification, by calculating metrics for target cross-sections using a commercial software before feeding into a feature-based semi-supervised machine learning framework. The method is tested with data collected from an uncalibrated multibeam echosounder around an offshore gas platform in the Adriatic Sea. It resulted in more-efficient target detection, and, although uncertainties regarding user labelled training data need to be underlined, an accuracy of 98% in target classification was reached by using a final pre-trained stacking ensemble model.
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