Sage Sheldon
University of Oklahoma
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Publication
Featured researches published by Sage Sheldon.
PLOS ONE | 2014
Jinwei Dong; Xiangming Xiao; Sage Sheldon; Chandrashekhar M. Biradar; Geli Zhang; Nguyen Dinh Duong; Manzul Kumar Hazarika; Ketut Wikantika; Wataru Takeuhci; Berrien Moore
Southeast Asia experienced higher rates of deforestation than other continents in the 1990s and still was a hotspot of forest change in the 2000s. Biodiversity conservation planning and accurate estimation of forest carbon fluxes and pools need more accurate information about forest area, spatial distribution and fragmentation. However, the recent forest maps of Southeast Asia were generated from optical images at spatial resolutions of several hundreds of meters, and they do not capture well the exceptionally complex and dynamic environments in Southeast Asia. The forest area estimates from those maps vary substantially, ranging from 1.73×106 km2 (GlobCover) to 2.69×106 km2 (MCD12Q1) in 2009; and their uncertainty is constrained by frequent cloud cover and coarse spatial resolution. Recently, cloud-free imagery from the Phased Array Type L-band Synthetic Aperture Radar (PALSAR) onboard the Advanced Land Observing Satellite (ALOS) became available. We used the PALSAR 50-m orthorectified mosaic imagery in 2009 to generate a forest cover map of Southeast Asia at 50-m spatial resolution. The validation, using ground-reference data collected from the Geo-Referenced Field Photo Library and high-resolution images in Google Earth, showed that our forest map has a reasonably high accuracy (producers accuracy 86% and users accuracy 93%). The PALSAR-based forest area estimates in 2009 are significantly correlated with those from GlobCover and MCD12Q1 at national and subnational scales but differ in some regions at the pixel scale due to different spatial resolutions, forest definitions, and algorithms. The resultant 50-m forest map was used to quantify forest fragmentation and it revealed substantial details of forest fragmentation. This new 50-m map of tropical forests could serve as a baseline map for forest resource inventory, deforestation monitoring, reducing emissions from deforestation and forest degradation (REDD+) implementation, and biodiversity.
Frontiers of Earth Science in China | 2016
Peng Li; Luguang Jiang; Zhiming Feng; Sage Sheldon; Xiangming Xiao
Mapping rice cropping systems with optical imagery in multiple cropping regions is challenging due to cloud contamination and data availability; development of a phenology-based algorithm with a reduced data demand is essential. In this study, the Landsat-derived Renormalized Index of Normalized Difference Vegetation Index (RNDVI) was proposed based on two temporal windows in which the NDVI values of single and early (or late) rice display inverse changes, and then applied to discriminate rice cropping systems. The Poyang Lake Region (PLR), characterized by a typical cropping system of single cropping rice (SCR, or single rice) and double cropping rice (DCR, including early rice and late rice), was selected as a testing area. The results showed that NDVI data derived from Landsat time-series at eight to sixteen days captures the temporal development of paddy rice. There are two key phenological stages during the overlapping growth period in which the NDVI values of SCR and DCR change inversely, namely the ripening phase of early rice and the growing phase of single rice as well as the ripening stage of single rice and the growing stage of late rice. NDVI derived from scenes in two temporal windows, specifically early August and early October, was used to construct the RNDVI for discriminating rice cropping systems in the polder area of the PLR, China. Comparison with ground truth data indicates high classification accuracy. The RNDVI approach highlights the inverse variations of NDVI values due to the difference of rice growth between two temporal windows. This makes the discrimination of rice cropping systems straightforward as it only needs to distinguish whether the candidate rice type is in the period of growth (RNDVI<0) or senescence (RNDVI>0).
Ecological Engineering | 2012
Geli Zhang; Jinwei Dong; Xiangming Xiao; Zhongmin Hu; Sage Sheldon
Remote Sensing of Environment | 2012
Hao Tang; Ralph Dubayah; Anu Swatantran; Michelle A. Hofton; Sage Sheldon; David B. Clark; Bryan Blair
Remote Sensing of Environment | 2012
Jinwei Dong; Xiangming Xiao; Sage Sheldon; Chandrashekhar M. Biradar; Nguyen Dinh Duong; Manzul Kumar Hazarika
Isprs Journal of Photogrammetry and Remote Sensing | 2012
Jinwei Dong; Xiangming Xiao; Sage Sheldon; Chandrashekhar M. Biradar; Guishui Xie
Isprs Journal of Photogrammetry and Remote Sensing | 2012
Sage Sheldon; Xiangming Xiao; Chandrashekhar M. Biradar
Archive | 2012
Xiangming Xiao; Chandrashekhar M. Biradar; Audrey Wang; Sage Sheldon; Youmin Chen
Archive | 2008
Sage Sheldon; Ralph O. Dubayah; Douglas Burton Clark; Michelle A. Hofton; J. Bryan Blair
Archive | 2007
Sage Sheldon; Ralph O. Dubayah; Douglas Burton Clark; Michelle A. Hofton; J. Bryan Blair