Abstract
This study investigates the use of advanced machine learning (ML) algorithms to enhance classification accuracy in hyperspectral image analysis, addressing complexities across various datasets. Beginning with an exploration of hyperspectral imaging technology and its applications, the study preprocesses datasets to extract crucial features. State-of-the-art ML algorithms are then employed for training and evaluating classification models, allowing for comparative analysis of their strengths and weaknesses. Performance metrics, and confusion matrix are utilised to quantitatively assess algorithmic efficacy. The findings not only inform specific datasets but also highlight broader implications for hyperspectral image analysis. This research underscores ML algorithms’ potential in extracting meaningful information from hyperspectral datasets, advancing understanding and offering practical implications for real-world applications, thus contributing to the field’s ongoing advancement and enabling informed decision-making in diverse domains.