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A novel remote sensing image change detection algorithm based on self-organizing feature map neural network model

机译:一种基于自组织特征图神经网络模型的新型遥感图像改变检测算法

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Image change detection is based on the analysis in different time from the same area of two or more images, detect the feature in the region information changes over time. A self-organizing map integrated with a two layer neural network is implemented in this paper where the two input SAR images obtained at two different time instants are subjected to differencing and thresholding and weights are updated to converge the neural learning process to a minimum error value. Observed results from experimentations conducted on two sets of SAR images report a good accuracy in event detection with satisfactory image visual quality. The input images utilized in this paper and the event change recorded in this work could be applied to urban and vegetated land registration to indicate the change of terrain over a period of time. This might be utilized in urban planning applications. The work has been compared with fuzzy based techniques and a reduced computation time is also reported in this paper.
机译:图像改变检测基于来自两个或多个图像的不同时间的不同时间的分析,检测区域信息中的特征随时间变化。在本文中实现了与两个层神经网络集成的自组织地图,其中在两个不同时间瞬间获得的两个输入SAR图像经受差异和阈值和权重,以将神经学习过程收敛到最小误差值。从两组SAR图像进行的实验中观察到的结果报告了事件检测的良好精度,具有令人满意的图像视觉质量。本文中使用的输入图像和本工作中记录的事件变更可以应用于城市和植被的土地登记,以指示在一段时间内的地形变化。这可能在城市规划应用中使用。在本文中还报告了基于模糊的技术和基于模糊的技术的工作和减少的计算时间。

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