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Improving Hyperspectral Image Classification Method for Fine Land Use Assessment Application Using Semisupervised Machine Learning

机译:基于半监督机器学习的高光谱图像分类方法在土地利用评估中的改进

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Study on land use/cover can reflect changing rules of population, economy, agricultural structure adjustment, policy, and traffic and provide better service for the regional economic development and urban evolution. The study on fine land use/cover assessment using hyperspectral image classification is a focal growing area in many fields. Semisupervised learning method which takes a large number of unlabeled samples and minority labeled samples, improving classification and predicting the accuracy effectively, has been a new research direction. In this paper, we proposed improving fine land use/cover assessment based on semisupervised hyperspectral classification method. The test analysis of study area showed that the advantages of semisupervised classification method could improve the high precision overall classification and objective assessment of land use/cover results.
机译:对土地利用/覆盖的研究可以反映人口,经济,农业结构调整,政策和交通等不断变化的规律,并为区域经济发展和城市发展提供更好的服务。使用高光谱图像分类的精细土地利用/覆盖率评估研究是许多领域的重点研究领域。一种采用大量未标记样本和少数标记样本的半监督学习方法,有效地提高分类效率和预测精度,已成为新的研究方向。在本文中,我们提出了基于半监督高光谱分类法的土地利用/覆盖率精细化评估方法。研究区域的测试分析表明,半监督分类法的优势可以提高土地利用/覆盖结果的高精度总体分类和客观评价。

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