Hyperspectral aerial images . A valuable tool for submerged vegetation recognition in the Orbetello Lagoons , Italy
نویسندگان
چکیده
Results obtained in mapping algal belts in the Orbetello Lagoons are described using Daedalus/ MIVIS hyperspectral scanner aerial images. MIVIS has a spectral coverage in the Visible, Near-IR, Mid-IR and Thermal-IR regions, with 102 channels. The objective of the work is a procedure for the algal species recognition, using methods of spectral data analysis. The 1± 2 m deep brackish, shallow water basin areas of the Orbetello Lagoons have poor water circulation and considerable eutrophication phenomena. sp. and Ulva sp.) were collected from a boat equipped with a ® eld portable multi-spectral radiometer operating between 380 and 780 nm. In situ collected spectra and MIVIS spectra, in the visible and the near infrared region for prototype area, were compared to select the representative spectra of submerged vegetation. The Spectral Angle Mapper (SAM) has been the method adopted for the spectral classi® cation.
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