@InProceedings{FreitasAvilPapa:2007:SeSuVe,
author = "Freitas, Greice Martins de and Avila, Ana Maria Heuminski de and
Papa, Joao Paulo",
affiliation = "CEPAGRI/UNICAMP and CEPAGRI/UNICAMP and IC/UNICAMP",
title = "Semi-Supervised Support Vector Rainfall Estimation Using Satellite
Images",
booktitle = "Proceedings...",
year = "2007",
editor = "Gon{\c{c}}alves, Luiz and Wu, Shin Ting",
organization = "Brazilian Symposium on Computer Graphics and Image Processing, 20.
(SIBGRAPI)",
publisher = "Sociedade Brasileira de Computa{\c{c}}{\~a}o",
address = "Porto Alegre",
keywords = "rainfall estimation, semi-supervised support vector machines.",
abstract = "In this paper we introduce the use of semi-supervised support
vector machines for rainfall estimation using images obtained from
visible and infrared NOAA satellite channels. Two experiments were
performed, one involving traditional SVM and other using
semi-supervised SVM (S3VM). The S3VM approach outperforms SVM in
our experiments, with can be seen as a good methodology for
rainfall satellite estimation, due to the large amount of
unlabeled data. .",
conference-location = "Belo Horizonte, MG, Brazil",
conference-year = "7-10 Oct. 2007",
language = "en",
url = "http://sibgrapi.sid.inpe.br/ibi/6qtX3pFwXQZG2LgkFdY/Rv2tk",
targetfile = "freitas.pdf",
urlaccessdate = "2025, Apr. 25"
}