基于细胞神经网络的杀伤人员地雷被动红外偏振遥感

P. López, M. Balsi, D. L. Vilariño, D. Cabello
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引用次数: 0

摘要

只提供摘要形式。主动红外偏振传感已成功地应用于人造物体的遥感,特别是地埋地雷的遥感。然而,散射和功率/信噪比限制需要近头顶观察。相比之下,被动极化传感允许以更方便的操作安排进行探测,这在矿区工作时是非常理想的。提出了一种基于动态特性差异的埋地杀伤人员地雷探测方法。其基本思想是使用同一块土地在不同时间间隔的一系列图像作为可重构细胞神经网络(CNN)架构的输入。然后,应用一种学习算法来优化网络参数和最适合期望行为的网络拓扑。
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Passive IR polarimetric remote sensing of antipersonnel mines using cellular neural networks
Summary form only given. Active IR polarimetric sensing has been successfully applied for the remote sensing of man made objects and, particular, of buried mines. However, the scattering and power/SNR constraints require near overhead viewing. In contrast, passive polarimetric sensing allows detection with much more operationally convenient arrangements which is highly desirable when working in mined lands. In this work, an approach for detecting buried antipersonnel mines based on the dynamic behaviour difference is presented. The basic idea consists of using a sequence of images of the same piece of land at different time intervals which are applied as the input of a reconfigurable cellular neural network (CNN) architecture. Then, a learning algorithm is applied that optimizes both the network parameters and the network topology that best fit the desired behaviour.
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