基于两级信念函数模型的地雷探测传感器融合

N. Milisavljevic, I. Bloch
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引用次数: 82

摘要

在Dempster-Shafer框架下,提出了一种基于信念函数的两级反地雷探测传感器建模与融合方法。考虑了三种有前途的互补传感器:金属探测器、红外摄像机和探地雷达。由于金属探测器是最常用的地雷探测传感器,它提供的措施根据所观察物体的金属含量而具有不同的行为,因此第一级的目的是识别这种含量,并将其分为三类。根据金属含量,在第二层进一步分析物体,以确定最终的物体身份。这个过程可以应用于任何问题,其中一条信息根据其值引起不同的推理方案。提出了一种将各种因素对传感器的影响纳入模型的方法,并提出了并非所有传感器都指向同一对象的可能性。提出了一种适合于这类应用的原始决策规则,以及一种估计置信度的方法。更一般地说,此决策规则可用于不同类型的错误具有不同重要性的任何情况。在模拟现实和日益复杂的合成数据上给出了一些实例。最后,在实际数据上的应用显示了良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor fusion in anti-personnel mine detection using a two-level belief function model
A two-level approach for modeling and fusion of antipersonnel mine detection sensors in terms of belief functions within the Dempster-Shafer framework is presented. Three promising and complementary sensors are considered: a metal detector, an infrared camera, and a ground-penetrating radar. Since the metal detector, the most often used mine detection sensor, provides measures that have different behaviors depending on the metal content of the observed object, the first level aims at identifying this content and at providing a classification into three classes. Depending on the metal content, the object is further analyzed at the second level toward deciding the final object identity. This process can be applied to any problem where one piece of information induces different reasoning schemes depending on its value. A way to include influence of various factors on sensors in the model is also presented, as well as a possibility that not all sensors refer to the same object. An original decision rule adapted to this type of application is proposed, as well as a way for estimating confidence degrees. More generally, this decision rule can be used in any situation where the different types of errors do not have the same importance. Some examples of obtained results are shown on synthetic data mimicking reality and with increasing complexity. Finally, applications on real data show promising results.
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