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A novel image change detection method based on enhanced growing self-organization feature map

机译:一种基于增强生长自组织特征图的新型图像改变检测方法

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摘要

Post-classification analysis is an important way for remotely sensed imagery change detection. In this paper, we propose a novel classification way for change detection using multispectral IKONOS imagery. The classification way is called after Enhanced Growing Self-Organization Map (EGSOM). The EGSOM is designed to solve two limitation of traditional Self Organization Feature Map (SOM). One is the training time of SOM is endless, the other is SOM's structure is fixed before train. EGSOM make use of Growing Self Organization Feature Map and the network's weights are initialized after hierachical clustering method. The method can save network-training time and make the network express input data correctly. Using EGSOM, we classify Multispectral IKONOS imagery and analyze the change detection result. The experiment shows the EGSOM can achieve better classification results than max likelihood method.
机译:分类后分析是远程感测图像变化检测的重要途径。在本文中,我们提出了一种使用MultiSpectral Ikonos Imager的改变检测的新型分类方式。在增强的生长自组织地图(EGSOM)之后调用分类方式。 EGSOM旨在解决传统自我组织特征图(SOM)的两个限制。一个是SOM的训练时间是无穷无尽的,另一个是SOM的结构在火车前修复。 EGSOM利用生长的自组织特征图,在定影群集方法后初始化网络权重。该方法可以节省网络训练时间并正确制作网络表达输入数据。使用EGSOM,我们分类MultiSpectral Ikonos Imagery并分析变更检测结果。实验表明,EGSOM可以实现比最大似然方法更好的分类结果。

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