论文标题
使用光谱MPT签名识别金属对象:对象表征和不变式
Identification of Metallic Objects using Spectral MPT Signatures: Object Characterisation and Invariants
论文作者
论文摘要
通过改进的金属检测,对恐怖威胁的早期发现有可能减少攻击次数并改善公共安全和保障。为了实现这一目标,使用金属探测器应用和测量的场有很大的潜力来区分不同的形状和不同的金属,因为隐藏在磁场扰动中的是对象表征信息。磁性极化张量(MPT)提供了金属物体的经济特征,可以针对不同的威胁和非威胁对象进行计算,并具有既定的理论背景,这表明诱导的电压是隐藏对象MPT系数的函数。在本文中,我们描述了与单个频率测量相比,在一系列频率要约中测量诱导电压的其他表征信息。我们将这种对象特征称为其MPT光谱签名。然后,我们提出一系列替代旋转不变性,以便使用MPT光谱签名对隐藏对象进行分类。最后,我们包括计算出的MPT光谱签名特征的示例,这些特征是现实的威胁和非威胁对象的示例,这些特征可用于训练机器学习算法用于分类。
The early detection of terrorist threats, such as guns and knives, through improved metal detection, has the potential to reduce the number of attacks and improve public safety and security. To achieve this, there is considerable potential to use the fields applied and measured by a metal detector to discriminate between different shapes and different metals since, hidden within the field perturbation, is object characterisation information. The magnetic polarizability tensor (MPT) offers an economical characterisation of metallic objects that can be computed for different threat and non-threat objects and has an established theoretical background, which shows that the induced voltage is a function of the hidden object's MPT coefficients. In this paper, we describe the additional characterisation information that measurements of the induced voltage over a range of frequencies offer compared to measurements at a single frequency. We call such object characterisations its MPT spectral signature. Then, we present a series of alternative rotational invariants for the purpose of classifying hidden objects using MPT spectral signatures. Finally, we include examples of computed MPT spectral signature characterisations of realistic threat and non-threat objects that can be used to train machine learning algorithms for classification purposes.