Chimera: A Multi-Task Recurrent Convolutional Neural Network for Forest Classification and Structural Estimation

被引:26
|
作者
Chang, Tony [1 ]
Rasmussen, Brandon P. [1 ]
Dickson, Brett G. [1 ,2 ]
Zachmann, Luke J. [1 ,2 ]
机构
[1] Conservat Sci Partners Inc, 11050 Pioneer Trail,Suite 202, Truckee, CA 96161 USA
[2] No Arizona Univ, Lab Landscape Ecol & Conservat Biol, Landscape Conservat Initiat, Box 5694, Flagstaff, AZ 86011 USA
关键词
remote sensing; recurrent convolutional neural networks; forest structure; forest classification; high resolution imagery; NAIP; multi-task learning; NEAREST-NEIGHBOR IMPUTATION; ABOVEGROUND BIOMASS; UNITED-STATES; LAND-COVER; TEXTURE; MANAGEMENT; LANDSCAPE; IMAGERY; LIDAR; SCALE;
D O I
10.3390/rs11070768
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
More consistent and current estimates of forest land cover type and forest structural metrics are needed to guide national policies on forest management, carbon sequestration, and ecosystem health. In recent years, the increased availability of high-resolution (<30 m) imagery and advancements in machine learning algorithms have opened up a new opportunity to fuse multiple datasets of varying spatial, spectral, and temporal resolutions. Here, we present a new model, based on a deep learning architecture, that performs both classification and regression concurrently, thereby consolidating what was previously several independent tasks and models into one stream. The model, a multi-task recurrent convolutional neural network that we call the Chimera, integrates varying resolution, freely available aerial and satellite imagery, as well as relevant environmental factors (e.g., climate, terrain) to simultaneously classify five forest cover types (conifer', deciduous', mixed', dead', none' (non-forest)) and to estimate four continuous forest structure metrics (above ground biomass, quadratic mean diameter, basal area, canopy cover). We demonstrate the performance of our approach by training an ensemble of Chimera models on 9967 georeferenced (true locations) Forest Inventory and Analysis field plots from the USDA Forest Service within California and Nevada. Classification diagnostics for the Chimera ensemble on an independent test set produces an overall average precision, recall, and F1-score of 0.92, 0.92, and 0.92. Class-wise F1-scores were high for none' (0.99) and conifer' (0.85) cover classes, and moderate for the mixed' (0.74) class samples. This demonstrates a strong ability to discriminate locations with and without trees. Regression diagnostics on the test set indicate very high accuracy for ensembled estimates of above ground biomass (R-2=0.84, RMSE =37.28 Mg/ha), quadratic mean diameter (R-2=0.81, RMSE =3.74 inches), basal area (R-2=0.87, RMSE =25.88 ft2/ac), and canopy cover (R-2=0.89, RMSE =8.01 percent). Comparative analysis of the Chimera ensemble versus support vector machine and random forest approaches demonstrates increased performance over both methods. Future implementations of the Chimera ensemble on a distributed computing platform could provide continuous, annual estimates of forest structure for other forested landscapes at regional or national scales.
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页数:29
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