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Attribute-driven Transfer Learning for Detecting Novel Buried Threats with Ground-Penetrating Radar

机译:基于属性的传递学习,用于探地雷达检测新型隐匿威胁

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Ground-penetrating radar (GPR) technology is an effective method of detecting buried explosive threats. The system uses a binary classifier to distinguish "targets", or buried threats, from "nontargets" arising from system prescreener false alarms; this classifier is trained on a dataset of previously-observed buried threat types. However, the threat environment is not static, and new threat types that appear must be effectively detected even if they are not highly similar to every previously-observed type. Gathering a new dataset that includes a new threat type is expensive and time-consuming; minimizing the amount of new data required to effectively detect the new type is therefore valuable. This research aims to reduce the number of training examples needed to effectively detect new types using transfer learning, which leverages previous learning tasks to accelerate and improve new ones. Further, new types have attribute data, such as composition, components, construction, and size, which can be observed without GPR and typically are not explicitly included in the learning process. Since attribute tags for buried threats determine many aspects of their GPR representation, a new threat type's attributes can be highly relevant to the transfer-learning process. In this work, attribute data is used to drive transfer learning, both by using attributes to select relevant dataset examples for classifier fusion, and by extending a relevance vector machine (RVM) model to perform intelligent attribute clustering and selection. Classification performance results for both the attribute-only case and the low-data case are presented, using a dataset containing a variety of threat types.
机译:探地雷达(GPR)技术是检测掩埋爆炸威胁的有效方法。系统使用二进制分类器将“目标”或掩埋的威胁与系统预筛选器错误警报引起的“非目标”区分开;该分类器是在先前观察到的掩埋威胁类型的数据集上训练的。但是,威胁环境并非一成不变,即使出现的新威胁类型与以前观察到的每种类型都不高度相似,也必须对其进行有效检测。收集包含新威胁类型的新数据集既昂贵又费时;因此,最大限度地减少有效检测新类型所需的新数据量非常有价值。这项研究旨在减少使用转移学习有效地检测新类型所需的训练示例的数量,该学习利用以前的学习任务来加速和改进新的学习任务。此外,新类型具有属性数据,例如成分,成分,构造和大小,可以在没有GPR的情况下进行观察,并且通常不会明确包含在学习过程中。由于掩埋威胁的属性标签决定了其GPR表示的许多方面,因此新威胁类型的属性可能与迁移学习过程高度相关。在这项工作中,通过使用属性选择用于分类器融合的相关数据集示例,以及通过扩展关联向量机(RVM)模型以执行智能属性聚类和选择,属性数据可用于驱动转移学习。使用包含各种威胁类型的数据集,显示了仅属性案例和低数据案例的分类性能结果。

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