Application of unmanned aerial vehicles and image processing techniques in monitoring underwater coastal protection measures

CC BY Logo DOI

A prerequisite for solving issues associated with surf zone variability, which affect human activity in coastal zones, is an accurate estimation of the effects of coastal protection methods. Therefore, performing frequent monitoring activities, especially when applying new nature-friendly coastal defense methods, is a major challenge. In this manuscript, we propose a pipeline for performing low-cost monitoring using RGB images, accessed by an unmanned aerial vehicle (UAV) and a four-level analysis architecture of an underwater object detection methodology. First, several color-based pre-processing activities were applied. Second, contrast-limited adaptive histogram equalization and the Hough transform methodology were used to automatically detect the underwater, circle-shaped elements of a hybrid coastal defense construction. An alternative pipeline was used to detect holes in the circle-shaped elements with an adaptive thresholding method; this pipeline was subsequently applied to the normalized images. Finally, the concatenation of the results from both the methods and the validation processes were performed. The results indicate that our automated monitoring tool works for RGB images captured by a low-cost consumer UAV. The experimental results showed that our pipeline achieved an average error of four pixels in the test set. 

Tytuł
Application of unmanned aerial vehicles and image processing techniques in monitoring underwater coastal protection measures
Twórca
Śledziowski Jakub
Słowa kluczowe
unmanned aerial vehicle (UAV); coastal monitoring; image processing; object detection; underwater reef; bezzałogowe statki powietrzne; monitoring wybrzeża; przetwarzanie obrazu; detekcja obiektów; rafy podwodne
Współtwórca
Terefenko Paweł ORCID 0000-0002-5081-8615
Giza Andrzej ORCID 0000-0002-5459-9261
Forczmański Paweł
Łysko Andrzej
Maćków Witold
Stępień Grzegorz
Tomczak Arkadiusz
Kurylczyk Apoloniusz ORCID 0000-0002-6378-0580
Data
2022
Typ zasobu
artykuł
Identyfikator zasobu
DOI 10.3390/rs14030458
Źródło
Remote Sensing, 2022, vol. 14 iss. 3, [br. s.], 458
Język
angielski
Prawa autorskie
CC BY CC BY
Kategorie
Publikacje pracowników US
Data udostępnienia23 mar 2022, 15:22:48
Data mod.23 mar 2022, 15:22:48
DostępPubliczny
Aktywnych wyświetleń0