Spectral analysis and mapping of blackgrass weed by leveraging machine learning and UAV multispectral imagery

2022 ◽  
Vol 192 ◽  
pp. 106621
Author(s):  
Jinya Su ◽  
Dewei Yi ◽  
Matthew Coombes ◽  
Cunjia Liu ◽  
Xiaojun Zhai ◽  
...  
2018 ◽  
Vol 1120 ◽  
pp. 012083 ◽  
Author(s):  
Kerista Tarigan ◽  
Marzuki Sinambela ◽  
Melda Panjaitan ◽  
Pandi Simangunsong ◽  
Henry Kristian Siburian

Author(s):  
I. Cortesi ◽  
A. Masiero ◽  
M. De Giglio ◽  
G. Tucci ◽  
M. Dubbini

Abstract. Plastic pollution has become one of the main global environmental emergencies. A considerable part of used plastics materials is dispersed or accumulated in the environment with a significant damaging impact on many terrestrial and aquatic ecosystems.Artificial Intelligence has proven a fundamental approach in last years for the detection of plastics waste in the aquatic habitats: several groups have recently tried to tackle such problem by developing some machine learning-based methods and multispectral or RGB imagery. This study compares the results obtained by two machine learning classifiers, namely Random Forests and Support Vector Machine, to detect macroplastic in the fluvial habitat through multispectral imagery. The acquisition of images has been made with a hand-held multispectral camera called MAIA-WV2. Despite the obtained results are quite good in terms of accuracy in a random validation dataset, some issues, mostly related to the presence of white rocks and glares on water have still to be properly solved.


Author(s):  
Igor L. Fufurin ◽  
Igor S. Golyak ◽  
Dmitriy R. Anfimov ◽  
Anastasiya S. Tabalina ◽  
Elizaveta R. Kareva ◽  
...  

2021 ◽  
pp. 104696
Author(s):  
Rajaa Charifi ◽  
Najia Es-sbai ◽  
Yahya Zennayi ◽  
Taha Hosni ◽  
François Bourzeix ◽  
...  

Author(s):  
Valéria M. M. Gimenez ◽  
Patrícia M. Pauletti ◽  
Ana Carolina Sousa Silva ◽  
Ernane José Xavier Costa

2021 ◽  
Vol 13 (17) ◽  
pp. 3479
Author(s):  
Maria Pia Del Rosso ◽  
Alessandro Sebastianelli ◽  
Dario Spiller ◽  
Pierre Philippe Mathieu ◽  
Silvia Liberata Ullo

In recent years, the growth of Machine Learning (ML) algorithms has raised the number of studies including their applicability in a variety of different scenarios. Among all, one of the hardest ones is the aerospace, due to its peculiar physical requirements. In this context, a feasibility study, with a prototype of an on board Artificial Intelligence (AI) model, and realistic testing equipment and scenario are presented in this work. As a case study, the detection of volcanic eruptions has been investigated with the objective to swiftly produce alerts and allow immediate interventions. Two Convolutional Neural Networks (CNNs) have been designed and realized from scratch, showing how to efficiently implement them for identifying the eruptions and at the same time adapting their complexity in order to fit on board requirements. The CNNs are then tested with experimental hardware, by means of a drone with a paylod composed of a generic processing unit (Raspberry PI), an AI processing unit (Movidius stick) and a camera. The hardware employed to build the prototype is low-cost, easy to found and to use. Moreover, the dataset has been published on GitHub, made available to everyone. The results are promising and encouraging toward the employment of the proposed system in future missions, given that ESA has already moved the first steps of AI on board with the Phisat-1 satellite, launched on September 2020.


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