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Detection of Microplastics in Coastal Environments Based on Semantic Segmentation

Preprints.org 2025 Score: 48 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Alicia Herrera Alicia Herrera Alicia Herrera May Gómez, May Gómez, Javier Lorenzo-Navarro, Javier Lorenzo-Navarro, Javier Lorenzo-Navarro, Javier Lorenzo-Navarro, Javier Lorenzo-Navarro, Alicia Herrera Alicia Herrera May Gómez, Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera Modesto Castrillón-Santana, Modesto Castrillón-Santana, Modesto Castrillón-Santana, José Salas-Cáceres, Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera May Gómez, May Gómez, Alicia Herrera Alicia Herrera Javier Lorenzo-Navarro, Modesto Castrillón-Santana, May Gómez, May Gómez, May Gómez, Modesto Castrillón-Santana, Alicia Herrera May Gómez, May Gómez, Modesto Castrillón-Santana, May Gómez, May Gómez, Alicia Herrera Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera May Gómez, Alicia Herrera May Gómez, Alicia Herrera Alicia Herrera May Gómez, Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera May Gómez, May Gómez, May Gómez, Alicia Herrera May Gómez, May Gómez, Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera Alicia Herrera May Gómez, May Gómez, May Gómez, Alicia Herrera Alicia Herrera May Gómez, Alicia Herrera May Gómez, May Gómez, May Gómez, May Gómez, Alicia Herrera Alicia Herrera May Gómez, May Gómez, May Gómez, Alicia Herrera

Summary

Researchers developed a deep learning semantic segmentation approach for detecting microplastics on sandy beaches at the pixel level, evaluating 12 models including U-Net variants and transformer architectures under real-world conditions.

Polymers
Study Type Environmental

Microplastics represent an emerging threat to marine ecosystems, human health, and coastal aesthetics, with increasing concern about their accumulation on beaches due to ocean currents, wave action, and accidental spills. Despite their environmental impact, current methods for detecting and quantifying microplastics remain largely manual, time-consuming, and spatially limited. In this study, we propose a deep learning-based approach for the semantic segmentation of microplastics on sandy beaches, enabling pixel-level localization of small particles under real-world conditions. Twelve segmentation models were evaluated, including U-Net and its variants (Attention U-Net, ResUNet), as well as state-of-the-art architectures such as LinkNet, PAN, PSPNet, and YOLOv11 with segmentation heads. Models were trained and tested on augmented data patches, and their performance was assessed using Intersection over Union (IoU) and Dice coefficient metrics. LinkNet achieved the best performance with a Dice coefficient of 80% and an IoU of 72.6% on the test set, showing superior capability in segmenting microplastics even in the presence of visual clutter such as debris or sand variation. Qualitative results support the quantitative findings, highlighting the robustness of the model in complex scenes.

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