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Multiple kernel based feature and decision level fusion of iECO individuals for explosive hazard detection in FLIR imagery

机译:iECO个人的基于多核的特征和决策级融合,用于FLIR图像中的爆炸危险检测

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摘要

A serious threat to civilians and soldiers is buried and above ground explosive hazards. The automatic detection of such threats is highly desired. Many methods exist for explosive hazard detection, e.g., hand-held based sensors, downward and forward looking vehicle mounted platforms, etc. In addition, multiple sensors are used to tackle this extreme problem, such as radar and infrared (IR) imagery. In this article, we explore the utility of feature and decision level fusion of learned features for forward looking explosive hazard detection in IR imagery. Specifically, we investigate different ways to fuse learned iECO features pre and post multiple kernel (MK) support vector machine (SVM) based classification. Three MK strategies are explored; fixed rule, heuristics and optimization-based. Performance is assessed in the context of receiver operating characteristic (ROC) curves on data from a U.S. Army test site that contains multiple target and clutter types, burial depths and times of day. Specifically, the results reveal two interesting things. First, the different MK strategies appear to indicate that the different iECO individuals are all more-or-less important and there is not a dominant feature. This is reinforcing as our hypothesis was that iECO provides different ways to approach target detection. Last, we observe that while optimization-based MK is mathematically appealing, i.e., it connects the learning of the fusion to the underlying classification problem we are trying to solve, it appears to be highly susceptible to over fitting and simpler, e.g., fixed rule and heuristics approaches help us realize more generalizable iECO solutions.
机译:对平民和士兵的严重威胁被埋在地下并具有爆炸危险。高度期望自动检测这种威胁。存在许多用于爆炸危险检测的方法,例如,基于手持式的传感器,向下和向前看的车载平台等。此外,使用多个传感器来解决这一极端问题,例如雷达和红外(IR)图像。在本文中,我们探索了特征和学习特征的决策水平融合在红外图像中前瞻性爆炸危险检测中的实用性。具体而言,我们研究了在基于多核(MK)支持向量机(SVM)的分类前后融合已学习的iECO功能的不同方法。探索了三种MK策略;固定规则,启发式和基于优化的。在接收器工作特性(ROC)曲线的背景下评估性能,该曲线来自美国陆军测试地点的数据,其中包含多种目标和杂物类型,埋葬深度和一天中的时间。具体而言,结果揭示了两个有趣的事情。首先,不同的MK策略似乎表明不同的iECO个人都或多或少重要,并且没有主导特征。由于我们的假设是iECO提供了不同的方法来进行目标检测,因此这一点得到了加强。最后,我们观察到,尽管基于优化的MK在数学上很吸引人,即它将融合的学习与我们正试图解决的基础分类问题联系在一起,但它似乎极易出现过度拟合和更简单(例如固定规则)的情况启发式方法有助于我们实现更通用的iECO解决方案。

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