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

机译:嵌合体:一种用于森林分类和结构估计的多任务复发卷积神经网络

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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 ft 2 /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.
机译:需要更加一致,最新估计森林覆盖类型和森林结构指标,以指导国家森林管理,碳封存和生态系统健康的国家政策。近年来,高分辨率(<30米)图像的可用性增加(机器学习算法的进步已经开辟了一个新的机会,使多个不同的空间,光谱和时间分辨率的多个数据集。在这里,我们介绍了一个基于深度学习架构的新模型,它同时执行分类和回归,从而将先前几个独立的任务和模型巩固到一个流中的内容。该模型,我们称之为嵌合体的多任务经常性卷积神经网络,整合了不同的分辨率,自由可用的空中和卫星图像,以及相关的环境因素(例如,气候,地形),同时分类五种森林覆盖类型('针叶树','落叶','混合','死','无'(非森林))和估计四个连续的森林结构度量(地上生物质,二次平均直径,基底面积,冠层覆盖)。我们展示了我们的方法通过培训了9967年地理学(真正的地点)森林库存和分析了来自加利福尼亚州和内华达州的美国农业部森林服务的森林库存和分析场地块的培训。独立测试组上的Chimera集合的分类诊断产生了整体平均精度,召回和F1分数为0.92,0.92和0.92。 “无”(0.99)和“针叶树”(0.85)覆盖类别为高级F1分数,适用于“混合”(0.74)类样品。这证明了强有力的能力区分有和没有树木的位置。测试集上的回归诊断表示上述原生物质的合奏估计的高精度(R 2 = 0.84,RMSE = 37.28 mg / ha),二次平均直径(R 2 = 0.81,RMSE = 3.74英寸),基础区域(R 2 = 0.87,RMSE = 25.88英尺2 / AC),遮盖盖(R 2 = 0.89,RMSE = 8.01%)。嵌合体系列对比分析与支持向量机和随机森林方法表现出对两种方法的增加。在分布式计算平台上的Chimera集合的未来实现可以为区域或国家规模的其他森林景观的森林结构持续,年度估计。

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