2023 IEEE International Workshop on Metrology for Agriculture and Forestry (MetroAgriFor) 2023
DOI: 10.1109/metroagrifor58484.2023.10424205
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Remote Sensing and Machine Learning for Riparian Vegetation Detection and Classification

Nicholas Fiorentini,
Manlio Bacco,
Alessio Ferrari
et al.

Abstract: Precise and reliable identification of riparian vegetation along rivers is of paramount importance for managing bodies, enabling them to accurately plan key duties, such as the design of river maintenance interventions. Nonetheless, manual mapping is significantly expensive in terms of time and human costs, especially when authorities have to manage extensive river networks. Accordingly, in the present paper, we propose a methodology for detecting and automatically classifying the riparian vegetation of urban … Show more

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