Karya
Judul/Title Random Forest Classification and Regression for Seagrass Mapping using PlanetScope Image in Labuan Bajo, East Nusa Tenggara
Penulis/Author ANA ARIASARI (1) ; Prof. Dr. Hartono, DEA., DESS. (2); Prof. Dr. Pramaditya Wicaksono, S.Si., M.Sc. (3)
Tanggal/Date 24 2019
Kata Kunci/Keyword
Abstrak/Abstract Random forest is a machine learning algorithm that can be used to improve the classification accuracy of mapping using remote sensing, especially for seagrass mapping in a complex optically water shallow. This research is aimed to map seagrass species composition and percent cover using random forest classification and regression using PlanetScope image. Optically shallow water around Labuan Bajo was selected as the study area. Sunglint and water column corrections were applied to the surface reflectance image. Principle Component Analysis (PCA¬) transformation was applied on surface reflectance bands, deglint bands, and depth-invariant index bands. These bands were used as the input band for random forest classification and regression algorithm, using field data to train the algorithm. Benthic field data was collected by the photo transect and seagrass field data was collected by the photo quadrat transect technique. Benthic habitat classification scheme was constructed based on the variation of benthic habitat insitu, which consisted of coral reefs, seagrass, macroalgae, and bare substratum. Seagrass species composition classification scheme was constructed following the variation of seagrass species insitu, which consisted Enhalus acoroides (Ea), Enhalus acoroides mixed Syringodium isoetifolium (EaSi), Enhalus acoroides mixed Thalassia hemprichii (EaTh), Halodule uninervis (Hu), mixed-species class, Thalassodendron ciliatum (Tc), Thalassodendron ciliatum mixed Enhalus acoroides (TcEa), Thalassia hemprichii (Th), Thalassia hemprichii mixed Cymodocea rotundata (ThCr), and Thalassia hemprichii mixed Syringodium isoetifolium (ThSi) class. Accuracy assessment using independent field data showed that random forest algorithm produced 63.57%-72.09% overall accuracy for benthic habitat and 83.52%-85.71% overall accuracy for seagrass species composition. Random forest regression for seagrass percent cover produced R2 between 0.76-0.82 with the error of prediction between 14.92%-15.58%.
Level Nasional
Status
Dokumen Karya
No Judul Tipe Dokumen Aksi
1Acceptance_Ana_RTa.pdfBukti Accepted
21137201.pdf[PAK] Informasi Dewan Redaksi/Editor/Steering Committee
31137201.pdf[PAK] Dokumen Susunan Panitia
4prosiding_2059021_423808b84edd38eb36afefd876a6f4d4.pdf[PAK] Bukti Korespondensi Penulis
5Full Dokumen SPIE Ana Prama 2019.pdf[PAK] Full Dokumen
6Random forest classification.pdf[PAK] Full Dokumen