A new dimensionality analysis algorithm for hyperspectral imagery
Citations Over TimeTop 18% of 2011 papers
Abstract
In the procedure of hyperspectral data dimensionality reduction (DR), intrinsic dimensionality (ID) of high-dimensional hyperspectral data is normally obtained through the linear dimensionality analysis methods. This article applies a kind of unsupervised learning method, manifold learning method, to the dimensionality analysis for hyperspectral data and gives a manifold-learning-based algorithm for dimensionality analysis of hyperspectral data. The experiments use ISOMAP, LLE, LE and LTSA algorithms to estimate the intrinsic dimensionality of hyperspectral simulated data and real data, get the two-dimension manifold figures of high-dimensional data and discuss the advantages and disadvantages of these algorithms in hyperspectral dimensionality analysis.
Related Papers
- → Stochastic simulation of patterns using ISOMAP for dimensionality reduction of training images(2015)13 cited
- → The Connections between Principal Component Analysis and Dimensionality Reduction Methods of Manifolds(2012)1 cited
- → Multi-view Data Visualisation via Manifold Learning(2021)2 cited
- Dimensionality Reduction Algorithm Based on Manifold Learning(2010)