Real-Time Instance Segmentation for Detection of Underwater Litter as a Plastic Source

Author:

Corrigan Brendan Chongzhi1,Tay Zhi Yung1ORCID,Konovessis Dimitrios2

Affiliation:

1. Engineering Cluster, Singapore Institute of Technology, 10 Dover Drive, Singapore 138683, Singapore

2. Department of Naval Architecture, Ocean and Marine Engineering, University of Strathclyde, 100 Montrose St., Glasgow G4 0LZ, UK

Abstract

Thousands of tonnes of litter enter the ocean every day, posing a significant threat to marine life and ecosystems. While floating and beach litter are often in the spotlight, about 70% of marine litter eventually sinks to the seafloor, making underwater litter the largest accumulation of marine litter that often goes undetected. Plastic debris makes up the majority of ocean litter and is a known source of microplastics in the ocean. This paper focuses on the detection of ocean plastic using neural network models. Two neural network models will be trained, i.e., YOLACT and the Mask R-CNN, for the instance segmentation of underwater litter in images. The models are trained on the TrashCAN dataset, using pre-trained model weights trained using COCO. The trained neural network could achieve a mean average precision (mAP) of 0.377 and 0.365 for the Mask R-CNN and YOLACT, respectively. The lightweight nature of YOLACT allows it to detect images at up to six times the speed of the Mask R-CNN, while only making a comparatively smaller trade-off in terms of performance. This allows for two separate applications: YOLACT for the collection of litter using autonomous underwater vehicles (AUVs) and the Mask R-CNN for surveying litter distribution.

Funder

MOE

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference31 articles.

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2. National Geographic Society (2023, June 09). Ocean Trash: 5.25 Trillion Pieces and Counting, but Big Questions Remain. Available online: https://education.nationalgeographic.org/resource/ocean-trash-525-trillion-pieces-and-counting-big-questions-remain/.

3. United Nations Statistics Division (2023, June 09). Conserve and Sustainably Use the Oceans, Sea and Marine Resources for Sustainable Development. Available online: https://unstats.un.org/sdgs/report/2022/Goal-14/.

4. Microplastics in the Mediterranean Sea: Sources, Pollution Intensity, Sea Health, and Regulatory Policies;Sharma;Front. Mar. Sci.,2021

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