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Context-Dependent Feature Selection using Unsupervised Contexts Applied to GPR-Based Landmine Detection

机译:使用无监督上下文的上下文相关特征选择应用于基于GPR的地雷检测

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Context-dependent classification techniques applied to landmine detection with ground-penetrating radar (GPR) have demonstrated substantial performance improvements over conventional classification algorithms. Context-dependent algorithms compute a decision statistic by integrating over uncertainty in the unknown, but probabilistically inferable, context of the observation. When applied to GPR, contexts may be defined by differences in electromagnetic properties of the subsurface environment, which are due to discrepancies in soil composition, moisture levels, and surface texture. Context-dependent Feature Selection (CDFS) is a technique developed for selecting a unique subset of features for classifying landmines from clutter in different environmental contexts. In past work, context definitions were assumed to be soil moisture conditions which were known during training. However, knowledge of environmental conditions could be difficult to obtain in the field. In this paper, we utilize an unsupervised learning algorithm for defining contexts which are unknown a priori. Our method performs unsupervised context identification based on similarities in physics-based and statistical features that characterize the subsurface environment of the raw GPR data. Results indicate that utilizing this contextual information improves classification performance, and provides performance improvements over non-context-dependent approaches. Implications for on-line context identification will be suggested as a possible avenue for future work.
机译:上下文相关分类技术应用于探地雷达(GPR)探测地雷,已证明与常规分类算法相比,性能得到了显着提高。依赖于上下文的算法通过对未知但概率可推断的观察上下文中的不确定性进行积分来计算决策统计量。当应用于GPR时,环境可以通过地下环境的电磁特性差异来定义,这是由于土壤成分,水分含量和表面质地的差异所致。上下文相关特征选择(CDFS)是一种用于选择特征的唯一子集以从不同环境上下文中的混乱中对地雷进行分类的技术。在过去的工作中,上下文定义被假定为训练期间已知的土壤湿度条件。但是,在现场可能很难获得环境条件的知识。在本文中,我们利用无监督学习算法来定义先验未知的上下文。我们的方法基于基于物理和统计特征的相似性执行无监督的上下文识别,这些相似性表征了原始GPR数据的地下环境。结果表明,利用此上下文信息可提高分类性能,并提供优于非上下文相关方法的性能改进。对于在线上下文识别的暗示将被建议作为未来工作的可能途径。

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