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Multiple Instance Choquet Integral Classifier Fusion and Regression for Remote Sensing Applications

机译:用于遥感应用的多实例Choquet积分分类器融合和回归

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摘要

In classifier (or regression) fusion, the aim is to combine the outputs of several algorithms to boost overall performance. Standard supervised fusion algorithms often require accurate and precise training labels. However, accurate labels may be difficult to obtain in many remote sensing applications. This paper proposes novel classification and regression fusion models that can be trained given ambiguously and imprecisely labeled training data in which the training labels are associated with sets of data points (i.e., "bags") instead of individual data points (i.e., "instances") following a multiple-instance learning framework. Experiments were conducted based on the proposed algorithms on both synthetic data and applications such as target detection and crop yield prediction given remote sensing data. The proposed algorithms show effective classification and regression performance.
机译:在分类器(或回归)融合中,目标是组合几种算法的输出以提高整体性能。标准监督融合算法通常需要准确而精确的训练标签。但是,在许多遥感应用中可能很难获得准确的标签。本文提出了新颖的分类和回归融合模型,这些模型可以在给定含糊和不精确标记的训练数据的情况下进行训练,其中训练标签与数据点集(即“ bags ”)而不是单个数据点(即 “ instances ”)遵循多实例学习框架。基于提出的算法对合成数据和应用(如目标检测和给定遥感数据的农作物产量预测)进行了实验。所提出的算法显示出有效的分类和回归性能。

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