Rule-Based Classification of Hyperspectral Imaging Data
This work addresses classification challenges in hyperspectral imaging for applications like remote sensing, but it is incremental as it builds on existing rule-based approaches.
The paper tackled hyperspectral image classification by developing a rule-based method using spectral signature shapes, including curvature points and behavior, and demonstrated its flexibility and efficiency on two datasets with good performance.
Due to its high spatial and spectral information content, hyperspectral imaging opens up new possibilities for a better understanding of data and scenes in a wide variety of applications. An essential part of this process of understanding is the classification part. In this article we present a general classification approach based on the shape of spectral signatures. In contrast to classical classification approaches (e.g. SVM, KNN), not only reflectance values are considered, but also parameters such as curvature points, curvature values, and the curvature behavior of spectral signatures are used to develop shape-describing rules in order to use them for classification by a rule-based procedure using IF-THEN queries. The flexibility and efficiency of the methodology is demonstrated using datasets from two different application fields and leads to convincing results with good performance.