DocumentCode :
78218
Title :
A Semiautomated Probabilistic Framework for Tree-Cover Delineation From 1-m NAIP Imagery Using a High-Performance Computing Architecture
Author :
Basu, Saikat ; Ganguly, Sangram ; Nemani, Ramakrishna R. ; Mukhopadhyay, Supratik ; Gong Zhang ; Milesi, Cristina ; Michaelis, Andrew ; Votava, Petr ; Dubayah, Ralph ; Duncanson, Laura ; Cook, Bruce ; Yifan Yu ; Saatchi, Sassan ; DiBiano, Robert ; Karki,
Author_Institution :
Dept. of Comput. Sci., Louisiana State Univ., Baton Rouge, LA, USA
Volume :
53
Issue :
10
fYear :
2015
fDate :
Oct. 2015
Firstpage :
5690
Lastpage :
5708
Abstract :
Accurate tree-cover estimates are useful in deriving above-ground biomass density estimates from very high resolution (VHR) satellite imagery data. Numerous algorithms have been designed to perform tree-cover delineation in high-to-coarse-resolution satellite imagery, but most of them do not scale to terabytes of data, typical in these VHR data sets. In this paper, we present an automated probabilistic framework for the segmentation and classification of 1-m VHR data as obtained from the National Agriculture Imagery Program (NAIP) for deriving tree-cover estimates for the whole of Continental United States, using a high-performance computing architecture. The results from the classification and segmentation algorithms are then consolidated into a structured prediction framework using a discriminative undirected probabilistic graphical model based on conditional random field, which helps in capturing the higher order contextual dependence relations between neighboring pixels. Once the final probability maps are generated, the framework is updated and retrained by incorporating expert knowledge through the relabeling of misclassified image patches. This leads to a significant improvement in the true positive rates and reduction in false positive rates (FPRs). The tree-cover maps were generated for the state of California, which covers a total of 11 095 NAIP tiles and spans a total geographical area of 163 696 sq. miles. Our framework produced correct detection rates of around 88% for fragmented forests and 74% for urban tree-cover areas, with FPRs lower than 2% for both regions. Comparative studies with the National Land-Cover Data algorithm and the LiDAR high-resolution canopy height model showed the effectiveness of our algorithm for generating accurate high-resolution tree-cover maps.
Keywords :
forestry; geophysical image processing; image classification; image segmentation; land cover; probability; remote sensing; vegetation; 1-m NAIP imagery; 1-m VHR data classification; 1-m VHR data segmentation; California; LiDAR high-resolution canopy height model; VHR dataset; aboveground biomass density; conditional random field; continental United States; discriminative undirected probabilistic graphical model; expert knowledge; fragmented forest; high-performance computing architecture; high-resolution tree-cover map; misclassified image patch; national agriculture imagery program; national land-cover data algorithm; neighboring pixel; probability map; semiautomated probabilistic framework; terabyte; tree-cover delineation; tree-cover estimation; urban tree-cover area; very high resolution satellite imagery data; Accuracy; Feature extraction; Image resolution; Image segmentation; Laser radar; NASA; Vegetation; Aerial imagery; National Agriculture Imagery Program (NAIP); conditional random field (CRF); high-performance computing (HPC); machine learning; neural network (NN); statistical region merging (SRM);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2015.2428197
Filename :
7112625
Link To Document :
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