0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Marine & Wildlife Policy & Risk Sign in to save

Designing Unmanned Aerial Survey Monitoring Program to Assess Floating Litter Contamination

Remote Sensing 2022 20 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Tomoya Kataoka, Tomoya Kataoka, João Canning‐Clode, Tomoya Kataoka, Tomoya Kataoka, Sílvia Almeida, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, Marko Radeta, Tomoya Kataoka, Tomoya Kataoka, João Canning‐Clode, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, João Canning‐Clode, Marko Radeta, Sílvia Almeida, Tomoya Kataoka, Tomoya Kataoka, João Gama Monteiro João Canning‐Clode, Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, João Gama Monteiro Tomoya Kataoka, Tomoya Kataoka, Tomoya Kataoka, João Canning‐Clode, João Gama Monteiro João Canning‐Clode, João Canning‐Clode, Miguel Pessanha Pais, Tomoya Kataoka, João Canning‐Clode, Miguel Pessanha Pais, Rúben Freitas, Tomoya Kataoka, João Canning‐Clode, João Canning‐Clode, João Gama Monteiro João Canning‐Clode, João Canning‐Clode, João Canning‐Clode, João Gama Monteiro

Summary

Researchers tested drone-based aerial surveys with high-resolution cameras as a cost-effective method for monitoring floating litter contamination in coastal waters, comparing manual counting, automated detection, and modeling approaches to optimize survey design.

Body Systems

Monitoring marine contamination by floating litter can be particularly challenging since debris are continuously moving over a large spatial extent pushed by currents, waves, and winds. Floating litter contamination have mostly relied on opportunistic surveys from vessels, modeling and, more recently, remote sensing with spectral analysis. This study explores how a low-cost commercial unmanned aircraft system equipped with a high-resolution RGB camera can be used as an alternative to conduct floating litter surveys in coastal waters or from vessels. The study compares different processing and analytical strategies and discusses operational constraints. Collected UAS images were analyzed using three different approaches: (i) manual counting (MC), using visual inspection and image annotation with object counts as a baseline; (ii) pixel-based detection, an automated color analysis process to assess overall contamination; and (iii) machine learning (ML), automated object detection and identification using state-of-the-art convolutional neural network (CNNs). Our findings illustrate that MC still remains the most precise method for classifying different floating objects. ML still has a heterogeneous performance in correctly identifying different classes of floating litter; however, it demonstrates promising results in detecting floating items, which can be leveraged to scale up monitoring efforts and be used in automated analysis of large sets of imagery to assess relative floating litter contamination.

Sign in to start a discussion.

Share this paper