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A Multiclass Deep Learning Approach for LULC Classification of Multispectral Satellite Images

机译:多级卫星卫星图像的LULC分类的多级深度学习方法

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In general, a visual interpretation technique is adopted for mapping of Land Use / Land Cover (LULC) using temporal satellite data. Although highly accurate, the process is tedious, time consuming and requires a significant amount of domain knowledge. This limitation introduces a scope for partial automation to reduce manual effort involved in interpretation, while maintaining baseline accuracy. The research explores a novel multi-class training approach using a Deep Learning (DL) model to generate major LULC classes. Five spectral bands, namely Blue, Green, Red, Near-Infrared (NIR) and Short wave Infrared (SWIR) from the Sentinel-2A satellite, covering Mandya, Karnataka, India was used to train the model. An existing LULC map of the region was used as an input for automatically generating labeled training samples and a modified SegNet was implemented for classification. Four major LULC classes of interest - water bodies, forest lands, croplands, built-up were classified with an average F1 score of 0.84. The trained model applied to other regions has shown encouraging results which makes this an effective method to explore the generation of LULC maps.
机译:通常,采用使用时间卫星数据来采用视觉解释技术来映射土地使用/陆地覆盖(LULC)。虽然高度准确,但过程繁琐,耗时,需要大量的域知识。这种限制介绍了部分自动化的范围,以减少解释所涉及的手动努力,同时保持基线精度。该研究探讨了一种新的多级培训方法,使用深度学习(DL)模型来产生主要的LULC课程。来自Sentinel-2a卫星的五个光谱带,即蓝色,绿色,红色,近红外(NIR)和短波红外(SUR),覆盖Mandya,Karnataka,印度,旨在训练模型。该区域的现有LULC映射用作自动生成标记的训练样本的输入,并为分类实施了修改的SEGNET。四大兴趣兴趣 - 水机构,林地,农田,建于课程分类,平均F1得分为0.84。应用于其他地区的训练型模型表明了令人鼓舞的结果,这使得这是探索Lulc地图的产生的有效方法。

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