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. Environmental Sources Marine & Wildlife Policy & Risk Sign in to save

Quantifying Marine Macro Litter Abundance on a Sandy Beach Using Unmanned Aerial Systems and Object-Oriented Machine Learning Methods

Remote Sensing 2020 82 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.
Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Paula Sobral, Gil Gonçalves Paula Sobral, Filipa Bessa, Paula Sobral, Filipa Bessa, Filipa Bessa, Filipa Bessa, Umberto Andriolo, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Luísa Gonçalves, Paula Sobral, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Paula Sobral, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Paula Sobral, Paula Sobral, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Filipa Bessa, Filipa Bessa, Filipa Bessa, Filipa Bessa, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Paula Sobral, Gil Gonçalves Paula Sobral, Gil Gonçalves

Summary

Researchers developed an object-oriented machine learning classification strategy using unmanned aerial system imagery to automatically identify and quantify marine macro litter on sandy beaches, comparing three automated methods against manual counts. The UAS-based approach demonstrated capacity for scalable, cost-effective beach litter monitoring to support coastal pollution surveillance programs.

Study Type Environmental

Unmanned aerial systems (UASs) have recently been proven to be valuable remote sensing tools for detecting marine macro litter (MML), with the potential of supporting pollution monitoring programs on coasts. Very low altitude images, acquired with a low-cost RGB camera onboard a UAS on a sandy beach, were used to characterize the abundance of stranded macro litter. We developed an object-oriented classification strategy for automatically identifying the marine macro litter items on a UAS-based orthomosaic. A comparison is presented among three automated object-oriented machine learning (OOML) techniques, namely random forest (RF), support vector machine (SVM), and k-nearest neighbor (KNN). Overall, the detection was satisfactory for the three techniques, with mean F-scores of 65% for KNN, 68% for SVM, and 72% for RF. A comparison with manual detection showed that the RF technique was the most accurate OOML macro litter detector, as it returned the best overall detection quality (F-score) with the lowest number of false positives. Because the number of tuning parameters varied among the three automated machine learning techniques and considering that the three generated abundance maps correlated similarly with the abundance map produced manually, the simplest KNN classifier was preferred to the more complex RF. This work contributes to advances in remote sensing marine litter surveys on coasts, optimizing the automated detection on UAS-derived orthomosaics. MML abundance maps, produced by UAS surveys, assist coastal managers and authorities through environmental pollution monitoring programs. In addition, they contribute to search and evaluation of the mitigation measures and improve clean-up operations on coastal environments.

Sign in to start a discussion.

Share this paper