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Neural Image Fusion of Remotely Sensed Electro-Optical and Synthetic Aperture Radar Data for Forest Classification

机译:用于森林分类的远程感测电光和合成孔径雷达数据的神经图像融合

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Although the processing of electro-optical imagery from Earth observation satellites has been effectively used for classification of many types of land cover, forest classification has been generally limited to broad categories such as deciduous or coniferous. Recent studies suggest that the combination of imagery from satellites with different spectral, spatial, and temporal information may improve classification performance. This paper discusses the results of new fusion research aimed at extracting additional information from the combination of multi-sensor imageiy to improve forest classification performance. For this investigation multi-season LANDSAT and RADARSAT imagery was combined using a new biologically-based opponent-color image fusion and data mining technique, in conjunction with visual texture enhancement, and the Fuzzy ARTMAP neural classifier [1]. This approach is shown to quickly learn individual forest classes from a small number of training examples and enable added-value assessment of different sensor modalities.
机译:尽管从地球观测卫星的电光图像的加工已经有效地用于许多类型的陆地覆盖的分类,但森林分类一般都限于落叶或针叶树等广泛类别。最近的研究表明,具有不同光谱,空间和时间信息的卫星图像的组合可以改善分类性能。本文讨论了新的融合研究的结果,旨在从多传感器图像的结合提取附加信息以改善森林分类性能。对于这次调查,使用新的基于生物学的对手彩色图像融合和数据挖掘技术结合了多赛季Landsat和Radarsat图像,与视觉纹理增强以及模糊艺术神经分类器[1]。该方法显示从少量训练示例中快速学习各种林类,并使不同传感器方式的增加值评估。

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