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Fusion of forward-looking infrared camera and down-looking ground penetrating radar for buried target detection

机译:融合前瞻性的红外摄像头和遮盖地面穿透雷达,用于埋藏目标检测

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In this paper, we propose a system to detect buried disk-shaped landmines from ground penetrating radar (GPR) and forward-looking long wave infrared (FL-LWIR) data. The data is collected from a test area of 500m~2, which was prepared at the IPA Defence, Ankara, Turkey. This test area was divided into four lanes, each of size 25m length by 4m width and lm depth. Each lane was first carefully cleaned of stones and clutter and then filled with different soil types, namely fine-medium sand, course sand, sandy silt loam and loam mix. In all lanes, various clutter objects and landmines were buried at different depths and at 1 meter intervals. In the proposed approach, IR data is used as a pre-screener. Then possible target regions are further analyzed using the GPR data. IR data processing is done in three steps such as preprocessing, target detection, and postprocessing. In the pre-processing stage, bilateral noise reduction filtering is performed. The target detection stage finds circular targets by a radial transformation algorithm. The proposed approach is compared with the RX algorithm used widely for anomaly detection. The suspicious regions are further analyzed using Histogram of Oriented Gradient (HOG) features that are extracted from GPR images and classified by SVM. The same approach can also be applied in a parallel way where the results are combined using decision level fusion. The results of the proposed approach are given on different scenarios including different weather temperature and depth of buried targets.
机译:在本文中,我们提出了一种系统来从地面穿透雷达(GPR)和前瞻性的长波红外(FL-LWIR)数据中检测掩埋盘形地区。这些数据从500m〜2的测试面积收集,该测试面积在土耳其Ankara的IPA防御中准备。该测试区域分为四个通道,每个尺寸为25米长度为4米宽和LM深度。每条车道首先仔细清洗石头和杂乱,然后充满了不同的土壤类型,即细微型沙,陆路,沙质淤泥壤土和壤土混合。在所有车道中,各种杂波物品和地雷被埋在不同的深度和1米间隔。在所提出的方法中,IR数据用作筛选器预筛选器。然后使用GPR数据进一步分析可能的目标区域。 IR数据处理是以三个步骤完成的,例如预处理,目标检测和后处理。在预处理阶段,执行双边降噪滤波。目标检测阶段通过径向转换算法找到圆形目标。将所提出的方法与广泛用于异常检测的RX算法进行比较。使用从GPR图像中提取的面向梯度(HOG)特征的直方图进一步分析可疑区域,并由SVM分类。也可以以并行方式应用相同的方法,其中使用判定水平融合组合结果。所提出的方法的结果在不同的场景上给出,包括不同的天气温度和埋地目标的深度。

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