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Clustering by inhomogeneous chaotic maps in landmine detection

机译:地雷探测中非均匀混沌图的聚类

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摘要

A method has been recently proposed that provides a higherachical solution to the clustering problem under very general assumptions, relying on the cooperative behavior of an inhomogeneous lattice of chaotic coupled maps. The physical system can be seen as a chaotic neural network where neurons update is performed by logistic maps. The mutual information between couples of map acts as a similarity index to get partitions of a data set, corresponding to different resolution levels. As a result a full hierarchy of clusters is generated. Esperiments on artificial and real-life problems show the effectiveness of the proposed algorithm. Here we report the results of an application to landmine detection by dynamic thermogrpahy. Dynamic thermography allows to discriminate among objects with different thermal properties by sequential IR imaging. Detection is then obtained through segmentation of temporal sequences of infrared images. An approach is propsoed that gives the correct classification by analysing very short image sequence, thus allowing a fast acquisition time. The algorithm has been successfully tested on image sequences of plastic anti-personnel mines taken from realistic inefields.
机译:最近已经提出了一种方法,该方法在非常笼统的假设下,依靠混沌耦合图的不均匀晶格的协同行为,为聚类问题提供了更高层次的解决方案。物理系统可以看作是混沌神经网络,其中神经元的更新是通过逻辑映射执行的。映射对之间的相互信息充当相似性索引,以获取数据集的分区,对应于不同的分辨率级别。结果,生成了完整的群集层次结构。人工和现实问题的实验表明了该算法的有效性。在这里,我们报告了通过动态热图检测地雷的应用结果。动态热成像可以通过顺序的红外成像来区分具有不同热特性的物体。然后通过分割红外图像的时间序列获得检测。提出了一种方法,该方法通过分析非常短的图像序列来给出正确的分类,从而允许快速的获取时间。该算法已在从现实野外获取的塑料杀伤人员地雷的图像序列上成功进行了测试。

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