Randomized ICA and LDA Dimensionality Reduction Methods for Hyperspectral Image Classification

04/19/2018
by   Chippy Jayaprakash, et al.
0

Dimensionality reduction is an important step in processing the hyperspectral images (HSI) to overcome the curse of dimensionality problem. Linear dimensionality reduction methods such as Independent component analysis (ICA) and Linear discriminant analysis (LDA) are commonly employed to reduce the dimensionality of HSI. These methods fail to capture non-linear dependency in the HSI data, as data lies in the nonlinear manifold. To handle this, nonlinear transformation techniques based on kernel methods were introduced for dimensionality reduction of HSI. However, the kernel methods involve cubic computational complexity while computing the kernel matrix, and thus its potential cannot be explored when the number of pixels (samples) are large. In literature a fewer number of pixels are randomly selected to partial to overcome this issue, however this sub-optimal strategy might neglect important information in the HSI. In this paper, we propose randomized solutions to the ICA and LDA dimensionality reduction methods using Random Fourier features, and we label them as RFFICA and RFFLDA. Our proposed method overcomes the scalability issue and to handle the non-linearities present in the data more efficiently. Experiments conducted with two real-world hyperspectral datasets demonstrates that our proposed randomized methods outperform the conventional kernel ICA and kernel LDA in terms overall, per-class accuracies and computational time.

READ FULL TEXT

page 5

page 6

page 8

research
10/26/2022

A novel information gain-based approach for classification and dimensionality reduction of hyperspectral images

Recently, the hyperspectral sensors have improved our ability to monitor...
research
07/07/2018

A Supervised Geometry-Aware Mapping Approach for Classification of Hyperspectral Images

The lack of proper class discrimination among the Hyperspectral (HS) dat...
research
06/25/2018

Partial least squares discriminant analysis: A dimensionality reduction method to classify hyperspectral data

The recent development of more sophisticated spectroscopic methods allow...
research
12/14/2020

Recovery of Linear Components: Reduced Complexity Autoencoder Designs

Reducing dimensionality is a key preprocessing step in many data analysi...
research
05/01/2013

Inverting Nonlinear Dimensionality Reduction with Scale-Free Radial Basis Function Interpolation

Nonlinear dimensionality reduction embeddings computed from datasets do ...
research
08/31/2018

Scalable Manifold Learning for Big Data with Apache Spark

Non-linear spectral dimensionality reduction methods, such as Isomap, re...
research
06/22/2020

Supervised dimensionality reduction by a Linear Discriminant Analysis on pre-trained CNN features

We explore the application of linear discriminant analysis (LDA) to the ...

Please sign up or login with your details

Forgot password? Click here to reset