Vegetation Identification in Hyperspectral Images Using Distance/Correlation Metrics

Author:

Chanchí Golondrino Gabriel E.1ORCID,Ospina Alarcón Manuel A.1ORCID,Saba Manuel1ORCID

Affiliation:

1. Faculty of Engineering, University of Cartagena, Cartagena de Indias 130015, Colombia

Abstract

Distance/correlation metrics have emerged as a robust and simplified tool for assessing the spectral characteristics of hyperspectral image pixels and effectively categorizing vegetation within a specific study area. Correlation methods provide a readily deployable and computationally efficient approach, rendering them particularly advantageous for applications in developing nations or regions with limited resources. This article presents a comparative investigation of correlation/distance metrics for the identification of vegetation pixels in hyperspectral imagery. The study facilitates a comprehensive evaluation of five distance and/or correlation metrics, namely, direct correlation, cosine similarity, normalized Euclidean distance, Bray–Curtis distance, and Pearson correlation. Direct correlation and Pearson correlation emerged as the two metrics that demonstrated the highest accuracy in vegetation pixel identification. Using the selected methodologies, a vegetation detection algorithm was implemented and validated using a hyperspectral image of the Manga neighborhood in Cartagena de Indias, Colombia. The spectral library facilitated image processing, while the mathematical calculation of correlations was performed using the numpy and scipy libraries in the Python programming language. Both the approach adopted in this study and the implemented algorithm aim to serve as a point of reference for conducting detection studies on diverse material types in hyperspectral imagery using open-access programming platforms.

Funder

General System of Royalties of Colombia

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

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