5 December 2016 High- and low-level hierarchical classification algorithm based on source separation process
Mohamed Anis Loghmari, Emna Karray, Mohamed Saber Naceur
Author Affiliations +
Abstract
High-dimensional data applications have earned great attention in recent years. We focus on remote sensing data analysis on high-dimensional space like hyperspectral data. From a methodological viewpoint, remote sensing data analysis is not a trivial task. Its complexity is caused by many factors, such as large spectral or spatial variability as well as the curse of dimensionality. The latter describes the problem of data sparseness. In this particular ill-posed problem, a reliable classification approach requires appropriate modeling of the classification process. The proposed approach is based on a hierarchical clustering algorithm in order to deal with remote sensing data in high-dimensional space. Indeed, one obvious method to perform dimensionality reduction is to use the independent component analysis process as a preprocessing step. The first particularity of our method is the special structure of its cluster tree. Most of the hierarchical algorithms associate leaves to individual clusters, and start from a large number of individual classes equal to the number of pixels; however, in our approach, leaves are associated with the most relevant sources which are represented according to mutually independent axes to specifically represent some land covers associated with a limited number of clusters. These sources contribute to the refinement of the clustering by providing complementary rather than redundant information. The second particularity of our approach is that at each level of the cluster tree, we combine both a high-level divisive clustering and a low-level agglomerative clustering. This approach reduces the computational cost since the high-level divisive clustering is controlled by a simple Boolean operator, and optimizes the clustering results since the low-level agglomerative clustering is guided by the most relevant independent sources. Then at each new step we obtain a new finer partition that will participate in the clustering process to enhance semantic capabilities and give good identification rates.
© 2016 Society of Photo-Optical Instrumentation Engineers (SPIE) 1931-3195/2016/$25.00 © 2016 SPIE
Mohamed Anis Loghmari, Emna Karray, and Mohamed Saber Naceur "High- and low-level hierarchical classification algorithm based on source separation process," Journal of Applied Remote Sensing 10(4), 046022 (5 December 2016). https://doi.org/10.1117/1.JRS.10.046022
Published: 5 December 2016
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Independent component analysis

Data modeling

Image processing

Algorithm development

Principal component analysis

Classification systems

Expectation maximization algorithms

RELATED CONTENT

A fast image matching algorithm based on key points
Proceedings of SPIE (May 14 2014)
A comparison of PCA ICA for data preprocessing in remote...
Proceedings of SPIE (November 03 2005)
Multisensor image processing
Proceedings of SPIE (May 01 1991)
Triplet Markov chains in hidden signal restoration
Proceedings of SPIE (March 13 2003)
Blind hyperspectral unmixing
Proceedings of SPIE (October 26 2007)

Back to Top