A New Remote Hyperspectral Imaging System Embedded on an Unmanned Aquatic Drone for the Detection and Identification of Floating Plastic Litter Using Machine Learning

被引:4
|
作者
Alboody, Ahed [1 ]
Vandenbroucke, Nicolas [1 ]
Porebski, Alice [1 ]
Sawan, Rosa [2 ]
Viudes, Florence [2 ]
Doyen, Perine [3 ]
Amara, Rachid [2 ]
机构
[1] Univ Littoral Cote dOpale, Lab Informat Signal & Image Cote Opale, UR 4491, LISIC, F-62100 Calais, France
[2] Univ Lille, Univ Littoral Cote Opale, CNRS, Lab Oceanol & Geosci,UMR 8187,LOG,IRD, F-62930 Wimereux, France
[3] Univ Liege, Univ Artois, Univ Lille,Univ Littoral Cote Opale, Univ Picardie Jules Verne,UMRt 1158,BioEcoAgro,USC, F-62200 Boulogne Sur Mer, France
关键词
plastic pollution; hyperspectral imaging; plastic litter identification; unmanned aquatic drone; remote sensing; spectral reflectance; machine learning; IMAGES; HYPER;
D O I
10.3390/rs15143455
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This paper presents a new Remote Hyperspectral Imaging System (RHIS) embedded on an Unmanned Aquatic Drone (UAD) for plastic detection and identification in coastal and freshwater environments. This original system, namely the Remotely Operated Vehicle of the University of Littoral Cote d'Opale (ROV-ULCO), works in a near-field of view, where the distance between the hyperspectral camera and the water surface is about 45 cm. In this paper, the new ROV-ULCO system with all its components is firstly presented. Then, a hyperspectral image database of plastic litter acquired with this system is described. This database contains hyperspectral data cubes of different plastic types and polymers corresponding to the most-common plastic litter items found in aquatic environments. An in situ spectral analysis was conducted from this benchmark database to characterize the hyperspectral reflectance of these items in order to identify the absorption feature wavelengths for each type of plastic. Finally, the ability of our original system RHIS to automatically recognize different types of plastic litter was assessed by applying different supervised machine learning methods on a set of representative image patches of marine litter. The obtained results highlighted the plastic litter classification capability with an overall accuracy close to 90%. This paper showed that the newly presented RHIS coupled with the UAD is a promising approach to identify plastic waste in aquatic environments.
引用
收藏
页数:23
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