Machine learning based hyperspectral image analysis: A survey
Utsav B. Gewali, Sildomar T. Monteiro, and Eli Saber

TL;DR
This survey comprehensively reviews machine learning techniques applied to hyperspectral image analysis, covering various tasks and algorithms, and discusses open challenges and future research directions in the field.
Contribution
It provides a detailed organization and comparison of recent machine learning methods for hyperspectral image analysis, linking algorithms to specific analysis tasks.
Findings
Extensive coverage of machine learning algorithms for hyperspectral analysis
Mapping of algorithms to specific image analysis tasks
Discussion of open challenges and future directions
Abstract
Hyperspectral sensors enable the study of the chemical properties of scene materials remotely for the purpose of identification, detection, and chemical composition analysis of objects in the environment. Hence, hyperspectral images captured from earth observing satellites and aircraft have been increasingly important in agriculture, environmental monitoring, urban planning, mining, and defense. Machine learning algorithms due to their outstanding predictive power have become a key tool for modern hyperspectral image analysis. Therefore, a solid understanding of machine learning techniques have become essential for remote sensing researchers and practitioners. This paper reviews and compares recent machine learning-based hyperspectral image analysis methods published in literature. We organize the methods by the image analysis task and by the type of machine learning algorithm, and…
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Taxonomy
TopicsRemote-Sensing Image Classification · Spectroscopy and Chemometric Analyses · Remote Sensing and Land Use
