
High‐resolution hyperspectral imagery from pushbroom scanners on unmanned aerial systems
Author(s) -
Kim JaeIn,
Chi Junhwa,
Masjedi Ali,
Flatt John Evan,
Crawford Melba M.,
Habib Ayman F.,
Lee Joohan,
Kim HyunCheol
Publication year - 2022
Publication title -
geoscience data journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.125
H-Index - 11
ISSN - 2049-6060
DOI - 10.1002/gdj3.133
Subject(s) - hyperspectral imaging , remote sensing , computer science , multispectral image , full spectral imaging , data processing , spectral signature , image resolution , drone , computer vision , artificial intelligence , geography , database , biology , genetics
Hyperspectral data are gaining popularity in remote sensing and signal processing communities because of the increased spectral information relative to multispectral data. Several airborne and spaceborne hyperspectral datasets are publicly available, facilitating the development of various applications and algorithms. However, hyperspectral data are usually limited by their narrow, highly correlated and contiguous spectral bands in both processing and analysis. Moreover, the resolution of available hyperspectral datasets is not sufficiently high for the identification of small objects. Nevertheless, with the rapidly advancing technology, hyperspectral imaging systems can now be mounted on small aerial vehicles for detecting small objects at low altitude. To properly handle these high spectral and spatial resolution data, new or redesigned data processing or analysis pipelines must be developed, but such datasets are limited. In this study, we describe two hyperspectral datasets acquired by a drone and evaluate their radiometric and geometric quality. Based on appropriate data acquisition and processing approaches, our datasets are expected to be useful as testbeds for new algorithms and applications.