Detecting stranded macro-litter categories on drone orthophoto by a multi-class Neural Network

Autor(es)

Pinto, Luis
Andriolo, Umberto
Goncalves, Gil

Data de publicação

agosto, 2021

Sinopse

The use of Unmanned Aerial Systems (UAS, aka drones) images for mapping macro-litter in the environment have been exponentially increasing in the recent years. In this work, we developed a multi-class Neural Network (NN) to automatically identify stranded plastic litter categories on an UAS-derived orthophoto. The best results were assessed for items that did not have substantial intra-class colour variability, such as octopus pots and fishing ropes (F-score = 61%, on average). Instead, performance was poor (37%) for plastic bottles and fragments, due to their changing intra-class colours. On average, the performance improved 24% when the binary detection (litter/non-litter, F-Score = 73%) was considered, however this approach did not discriminate the litter categories. This work gives a new perspective for the automated litter detection on drone images, suggesting that colourbased approach can be used to improve the categorization of stranded litter on UAS orthophoto.

Detalhes
Tipo de publicação: Artigo
Publicação: MARINE POLLUTION BULLETIN
Volume: 169
Número: 112594
DOI: 10.1016/j.marpolbul.2021.112594