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首页> 外文期刊>EURASIP journal on applied signal processing >Neural network combination by fuzzy integral for robust change detection in remotely sensed imagery
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Neural network combination by fuzzy integral for robust change detection in remotely sensed imagery

机译:基于模糊积分的神经网络组合在遥感影像中的鲁棒变化检测

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摘要

Combining multiple neural networks has been used to improve the decision accuracy in many application fields including pattern recognition and classification. In this paper, we investigate the potential of this approach for land cover change detection. In a first step, we perform many experiments in order to find the optimal individual networks in terms of architecture and training rule. In the second step, different neural network change detectors are combined using a method based on the notion of fuzzy integral. This method combines objective evidences in the form of network outputs, with subjective measures of their performances. Various forms of the fuzzy integral, which are, namely, Choquet integral, Sugeno integral, and two extensions of Sugeno integral with ordered weighted averaging operators, are implemented. Experimental analysis using error matrices and Kappa analysis showed that the fuzzy integral outperforms individual networks and constitutes an appropriate strategy to increase the accuracy of change detection.
机译:结合多个神经网络已用于提高许多应用领域(包括模式识别和分类)的决策准确性。在本文中,我们研究了这种方法在土地覆被变化检测中的潜力。第一步,我们进行了许多实验,以便根据架构和训练规则找到最佳的个体网络。第二步,使用基于模糊积分概念的方法组合不同的神经网络变化检测器。该方法将网络输出形式的客观证据与对其性能的主观度量相结合。实现了各种形式的模糊积分,即Choquet积分,Sugeno积分和Sugeno积分的两个扩展,并带有有序加权平均算子。使用误差矩阵和Kappa分析进行的实验分析表明,模糊积分的性能优于单个网络,并且是提高变化检测精度的合适策略。

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