Machine learning for aquatic plastic litter detection, classification and quantification (APLASTIC-Q)

被引:68
作者
Wolf, Mattis [1 ,2 ]
van den Berg, Katelijn [3 ]
Garaba, Shungudzemwoyo P. [1 ,2 ]
Gnann, Nina [1 ]
Sattler, Klaus [3 ]
Stahl, Frederic [1 ,4 ]
Zielinski, Oliver [1 ,2 ]
机构
[1] German Res Ctr Artificial Intelligence DFKI, Marine Percept Res Grp, Marie Curie Str 1, D-26129 Oldenburg, Germany
[2] Carl von Ossietzky Univ Oldenburg, Inst Chem & Biol Marine Environm, Marine Sensor Syst Grp, Schleusenstr 1, D-26382 Wilhelmshaven, Germany
[3] World Bank, Environm Nat Resources & Blue Econ, 1818 H St NW, Washington, DC 20433 USA
[4] Univ Reading, Dept Comp Sci, Reading, Berks, England
关键词
convolutional neural networks; plastic litter; remote sensing; detection; machine learning; river and beach ecosystems; Cambodia; SHADOW DETECTION; MARINE DEBRIS; BEACH LITTER; IMAGES;
D O I
10.1088/1748-9326/abbd01
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Large quantities of mismanaged plastic waste are polluting and threatening the health of the blue planet. As such, vast amounts of this plastic waste found in the oceans originates from land. It finds its way to the open ocean through rivers, waterways and estuarine systems. Here we present a novel machine learning algorithm based on convolutional neural networks (CNNs) that is capable of detecting and quantifying floating and washed ashore plastic litter. The aquatic plastic litter detection, classification and quantification system (APLASTIC-Q) was developed and trained using very high geo-spatial resolution imagery (similar to 5 pixels cm(-1) = 0.002 m pixel(-1)) captured from aerial surveys in Cambodia. APLASTIC-Q was made up of two machine learning components (i) plastic litter detector (PLD-CNN) and (ii) plastic litter quantifier (PLQ-CNN). PLD-CNN managed to categorize targets as water, sand, vegetation and plastic litter with an 83% accuracy. It also provided a qualitative count of litter as low or high based on a thresholding approach. PLQ-CNN further distinguished and enumerated the litter items in each of the classes defined as water bottles, Styrofoam, canisters, cartons, bowls, shoes, polystyrene packaging, cups, textile, carry bags small or large. The types and amounts of plastic litter provide benchmark information that is urgently needed for decision-making by policymakers, citizens and other public and private stakeholders. Quasi-quantification was based on automated counts of items present in the imagery with caveats of underlying object in case of aggregated litter. Our scientific evidence-based machine learning algorithm has the prospects of complementing net trawl surveys, field campaigns and clean-up activities for improved quantification of plastic litter. APLASTIC-Q is a smart algorithm that is easy to adapt for fast and automated detection as well as quantification of floating or washed ashore plastic litter from aerial, high-altitude pseudo satellites and space missions.
引用
收藏
页数:12
相关论文
共 50 条
[31]   Hemp Disease Detection and Classification Using Machine Learning and Deep Learning [J].
Bose, Bipasa ;
Priya, Jyotsna ;
Welekar, Sonam ;
Gao, Zeyu .
2020 IEEE INTL SYMP ON PARALLEL & DISTRIBUTED PROCESSING WITH APPLICATIONS, INTL CONF ON BIG DATA & CLOUD COMPUTING, INTL SYMP SOCIAL COMPUTING & NETWORKING, INTL CONF ON SUSTAINABLE COMPUTING & COMMUNICATIONS (ISPA/BDCLOUD/SOCIALCOM/SUSTAINCOM 2020), 2020, :762-769
[32]   Classification of causes for plastic product defects by machine learning and application for the training of workers [J].
Naganuma, Tsuneo ;
Hashimoto, Koichi .
MECHANICAL ENGINEERING JOURNAL, 2021, 8 (02)
[33]   RGB and RGNIR image dataset for machine learning in plastic waste detection [J].
Tamin, Owen ;
Moung, Ervin Gubin ;
Dargham, Jamal Ahmad ;
Karim, Samsul Ariffin Abdul ;
Ibrahim, Ashraf Osman ;
Adam, Nada ;
Osman, Hadia Abdelgader .
DATA IN BRIEF, 2025, 60
[34]   A machine-learning phase classification scheme for anomaly detection in signals with periodic characteristics [J].
Ahrens, Lia ;
Ahrens, Julian ;
Schotten, Hans D. .
EURASIP JOURNAL ON ADVANCES IN SIGNAL PROCESSING, 2019, 2019 (1)
[35]   A machine-learning phase classification scheme for anomaly detection in signals with periodic characteristics [J].
Lia Ahrens ;
Julian Ahrens ;
Hans D. Schotten .
EURASIP Journal on Advances in Signal Processing, 2019
[36]   Automatic Heart Disease Detection by Classification of Ventricular Arrhythmias on ECG Using Machine Learning [J].
Aamir, Khalid Mahmood ;
Ramzan, Muhammad ;
Skinadar, Saima ;
Khan, Hikmat Ullah ;
Tariq, Usman ;
Lee, Hyunsoo ;
Nam, Yunyoung ;
Khan, Muhammad Attique .
CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 71 (01) :17-33
[37]   Detection and classification of darknet traffic using machine learning methods [J].
Ugurlu, Mesut ;
Dogru, Ibrahim Alper ;
Arslan, Recep Sinan .
JOURNAL OF THE FACULTY OF ENGINEERING AND ARCHITECTURE OF GAZI UNIVERSITY, 2023, 38 (03) :1737-1746
[38]   Android Anomaly Detection System Using Machine Learning Classification [J].
Kurniawan, Harry ;
Rosmansyah, Yusep ;
Dabarsyah, Budiman .
5TH INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING AND INFORMATICS 2015, 2015, :288-293
[39]   Framework For Image Forgery Detection And Classification Using Machine Learning [J].
Ranjan, Shruti ;
Garhwal, Prayati ;
Bhan, Anupama ;
Arora, Monika ;
Mehra, Anu .
PROCEEDINGS OF THE 2018 SECOND INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTING AND CONTROL SYSTEMS (ICICCS), 2018, :1872-1877
[40]   Damage detection and classification for sandwich composites using machine learning [J].
Manujesh, B. J. ;
Prajna, M. R. .
MATERIALS TODAY-PROCEEDINGS, 2022, 52 :702-709