A Novel Approach for Dimensionality Reduction and Classification of Hyperspectral Images based on Normalized Synergy
Asma Elmaizi, Hasna Nhaila, Elkebir Sarhrouni, Ahmed Hammouch and, Nacir Chafik

TL;DR
This paper introduces a new filter method called normalized mutual synergy for selecting relevant hyperspectral image bands, improving classification accuracy by reducing redundancy and noise, and demonstrating superior performance over existing methods.
Contribution
The paper proposes a novel normalized synergy-based filter approach for hyperspectral band selection, enhancing discriminative power and classification accuracy compared to prior techniques.
Findings
The proposed NMS method outperforms existing band selection techniques.
Experimental results show improved classification accuracy on benchmark datasets.
The approach effectively reduces redundancy and noise in hyperspectral data.
Abstract
During the last decade, hyperspectral images have attracted increasing interest from researchers worldwide. They provide more detailed information about an observed area and allow an accurate target detection and precise discrimination of objects compared to classical RGB and multispectral images. Despite the great potentialities of hyperspectral technology, the analysis and exploitation of the large volume data remain a challenging task. The existence of irrelevant redundant and noisy images decreases the classification accuracy. As a result, dimensionality reduction is a mandatory step in order to select a minimal and effective images subset. In this paper, a new filter approach normalized mutual synergy (NMS) is proposed in order to detect relevant bands that are complementary in the class prediction better than the original hyperspectral cube data. The algorithm consists of two…
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