Evaluation of the Species Composition and the Biological Productivity of Forests Based on Remote Sensing Data with High Spatial and Spectral Resolutionстатья
Информация о цитировании статьи получена из
Web of Science,
Scopus
Статья опубликована в журнале из списка Web of Science и/или Scopus
Дата последнего поиска статьи во внешних источниках: 10 апреля 2019 г.
Местоположение издательства:Road Town, United Kingdom
Первая страница:1415
Последняя страница:1421
Аннотация:The application of hyperspectral remote sensing of high spatial resolution is compared to conventional
ground-based forest surveys on sample plots and is considered as a possible alternative to these laborintensive
works. Pattern recognition methods have become the principal approach used to solve this type of
applied problems. Pattern recognition processing of hyperspectral images serves to identify different classes
of objects as well as to determine their parameters, such as the net primary productivity of forests with different
ages and species composition. The employed classifiers use the latest advances in forest pattern recognition
based on hyperspectral images. The classification accuracy is compared to the accuracy of ground-based
observations. The results indicate the promise of the proposed novel approach.