期刊名称:ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
印刷版ISSN:2194-9042
电子版ISSN:2194-9050
出版年度:2000
卷号:XXXIII Part B7(/1-4)
页码:575-579
出版社:Copernicus Publications
摘要:To consistently and repeatedly monitor forests over large areas, it is desirable to use remote sensing data and automated image analysis techniques. Several types of remote sensing data, including Aerial photography, Optical Multispectral Scanner, Radar, Lidar (Laser) and Videographic data have been used by forest research and operational agencies to detect, identify, classify, evaluate and measure various forest cover types and their changes. Over the past decades tremendous progress has been made in demonstrating the potentials and limitations of the applications of remote sensing in forestry. Remote sensing can detect, identify, classify, evaluate and measure various forest characteristics in two ways: qualitatively and quantitatively. In a qualitative way remote sensing can classify forest cover types to: coniferous and deciduous forest, mangrove forest, swamp forest, forest plantations, etc. While the quantitative analysis can measure or estimate forest parameters (e.g., dbh, height, basal area, number of trees per unite area, timber volume and wood y biomass), floristic compositio n, life forms, and structure. For several types of applications of remote sensing in forestry in specific regions of the world such as tropical areas, users o f forest information are demanding new establishment of sensors and platforms. In order to see what kind of information we can extract from the current remote sensing sensors and platforms and how accurate is that, an inventory of all remote sensing applications in forestry is needed. This paper presents a state of the art inventory o f all remote sensing applications in forestry