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Journal of Applied Remote Sensing

Classification of large-sized hyperspectral imagery using fast machine learning algorithms
Author(s): Junshi Xia; Naoto Yokoya; Akira Iwasaki
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Paper Abstract

We present a framework of fast machine learning algorithms in the context of large-sized hyperspectral images classification from the theoretical to a practical viewpoint. In particular, we assess the performance of random forest (RF), rotation forest (RoF), and extreme learning machine (ELM) and the ensembles of RF and ELM. These classifiers are applied to two large-sized hyperspectral images and compared to the support vector machines. To give the quantitative analysis, we pay attention to comparing these methods when working with high input dimensions and a limited/sufficient training set. Moreover, other important issues such as the computational cost and robustness against the noise are also discussed.

Paper Details

Date Published: 18 July 2017
PDF: 15 pages
J. Appl. Rem. Sens. 11(3) 035005 doi: 10.1117/1.JRS.11.035005
Published in: Journal of Applied Remote Sensing Volume 11, Issue 3
Show Author Affiliations
Junshi Xia, RCAST, The Univ. of Tokyo (Japan)
Naoto Yokoya, The Univ. of Tokyo (Japan)
Akira Iwasaki, The Univ. of Tokyo (Japan)

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