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引用次数: 1
摘要
本研究的目的是研究不同的机器学习算法,通过上下文导向的方法,使用或不使用熵进行亚像素分类,利用Sentinel 2,多光谱数据提取不同土地覆盖类别的合理准确信息。为了研究机器学习应用于作物识别的能力,以及在机器学习算法中使用时间数据信息进行作物规划,该探索将有助于检查红边带在作物识别证明中巩固作物物候的能力。在本分析中,将应用工作知识分类方法,同时为多光谱遥感知识集(Sentinel-2/ land sat)准备土地利用和土地覆盖地图受害。本研究使用的数据集将是精细空间分辨率数据,以确保对空间数据集和分类的分类方法。
Analysis Machine Learning Approach and Model on Hyper Spectral (Sentinel-2) Images for Land Cover Classification: Using SVM
The goal of this research study will be to research different machine learning algorithm via context oriented methodology with or without entropy for sub-pixel categorization utilizing Sentinel 2, multi-Spectral data extract reasonably accurate information for different land cover classes. To study the capabilities of Machine Learning Applications for Crop Identification and Use of temporal data information for crop planning in Machine Learning Algorithm this exploration will supportive to check Capability of Red Edge band to consolidate Crop phenology in crop recognizable proof. In this analysis work knowledge classification approach are going to be applied whereas getting ready land use and land covered map victimization for multi-spectral remote sensing knowledge sets (Sentinel-2/ Land sat). The data sets to be used in this research work will be fine spatial resolution data, to ensure classify approaches towards spatial data set and classification.