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Greenhouse Extraction from High-Resolution Remote Sensing Imagery with Improved Random Forest

机译:高分辨率遥感图像的温室提取与改进的随机森林

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摘要

The timely and accurate acquisition of greenhouses and their distribution from remote sensing imagery is valuable for Chinese authorities seeking to optimize regional agricultural management and mitigate environmental pollution. However, greenhouses are uncommon background objects in such imagery, making them a minority class that traditional random forest (RF) methods struggle to classify accurately in unbalanced data sets. Herein, we propose and test an improved RF sample selection method. Equal sample numbers were randomly selected from minority and majority classes to build an original training set for RF modeling. High-quality samples were then automatically added to the training set according to the voting entropy and generalized Euclidean distance, which are based on sample characteristic parameters. The results demonstrate that our improved RF yields better results in identifying greenhouses than the traditional RF. In addition, our method can be utilized to identify other minority-class objects from remote sensing imagery.
机译:及时准确地收购温室及其从遥感图像的分销对中国当局寻求优化区域农业管理和减轻环境污染的价值。然而,温室在这样的图像中是罕见的背景对象,使它们成为传统的随机森林(RF)方法在不平衡数据集中准确分类的少数级别。在此,我们提出并测试改进的RF样品选择方法。等于样本号是从少数群体和多数类别中选择的,以构建RF建模的原始训练。然后根据投票的熵和广义欧几里德距离自动将高质量样本自动添加到训练集上,距离基于样本特征参数。结果表明,我们改进的RF产生了比传统RF识别温室的更好结果。此外,我们的方法可用于识别来自遥感图像的其他少数级对象。

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