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CLASSIFICATION OF PIXEL-LEVEL FUSED HYPERSPECTRAL AND LIDAR DATA USING DEEP CONVOLUTIONAL NEURAL NETWORKS

机译:利用深卷积神经网络分类像素级融合高光谱和LIDAR数据的分类

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We investigate classification from pixel-level fusion of Hyperspectral (HSI) and Light Detection and Ranging (LiDAR) data using convolutional neural networks (CNN). HSI and LiDAR imaging are complementary modalities increasingly used together for geospatial data collection in remote sensing. HSI data is used to glean information about material composition and LiDAR data provides information about the geometry of objects in the scene. Two key questions relative to classification performance are addressed: the effect of merging multi-modal data and the effect of uncertainty in the CNN training data. Two recent co-registered HSI and LiDAR datasets are used here to characterize performance. One was collected, over Houston TX, by the University of Houston National Center for Airborne Laser Mapping with NSF spon-sorship, and the other was collected, over Gulfport MS, by Universities of Florida and Missouri with NGA sponsorship.
机译:我们使用卷积神经网络(CNN)调查高光谱(HSI)和光检测和测距(LIDAR)数据的像素级融合的分类。 HSI和LIDAR成像是互补的方式,越来越多地用于遥感中的地理空间数据收集。 HSI数据用于收集有关材料组成和LIDAR数据的信息,提供有关场景中对象的几何形状的信息。解决了相对于分类性能的两个关键问题:合并多模态数据的效果以及不确定性在CNN训练数据中的影响。此处使用两个最近的共同注册的HSI和LIDAR数据集来表征性能。由休斯顿TX收集,由休斯顿国家大学航空公司的航空激光测绘中心与NSF Spon-坐招聘,另一个由Gulfport MS收集,由佛罗里达州和密苏里州的高校和诺基赞助。

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