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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Logistic Regression for Feature Selection and Soft Classification of Remote Sensing Data
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Logistic Regression for Feature Selection and Soft Classification of Remote Sensing Data

机译:Logistic回归用于遥感数据特征选择和软分类

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Feature selection is a key task in remote sensing data processing, particularly in case of classification from hyperspectral images. A logistic regression (LR) model may be used to predict the probabilities of the classes on the basis of the input features, after ranking them according to their relative importance. In this letter, the LR model is applied for both the feature selection and the classification of remotely sensed images, where more informative soft classifications are produced naturally. The results indicate that, with fewer restrictive assumptions, the LR model is able to reduce the features substantially without any significant decrease in the classification accuracy of both the soft and hard classifications
机译:特征选择是遥感数据处理中的关键任务,特别是在根据高光谱图像进行分类的情况下。在根据输入特征对它们的相对重要性进行排名之后,可以使用逻辑回归(LR)模型基于输入特征来预测这些类的概率。在这封信中,LR模型既用于特征选择又用于遥感图像的分类,其中自然会产生更多有用的软分类。结果表明,在较少的限制性假设的前提下,LR模型能够在不显着降低软分类和硬分类的分类准确性的情况下,减少特征。

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