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LADAR data generation fused with virtual targets and visualization for small drone detection system

机译:结合虚拟目标和可视化的LADAR数据生成,用于小型无人机检测系统

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摘要

For detection of a small target using electro-optical systems, multi-band 2D image sensors are used such as visible, NIR, MWIR, and LWIR. However, 2D imaging systems are not capable to detect a very small target and they are also not capable of calculating target 3D position coordinates to develop the strategic counter method. 3D sensors (e.g. Lidar, RGBD and stereo camera) are utilized to control unmanned vehicles for detecting threats and response for specific situations. Conventional Lidar systems are unable to detect small drone threat at distances higher than their maximum detecting range of 100 ~ 120 meters. To overcome this limitation, laser radar (LADAR) systems are being developed, which allow the detection at distances up to 2 kilometers. In the development of LADAR, it is difficult to acquire datasets that contain cases of long distant targets. In this study, a fusion data generation with virtual targets technique based on minimum real LADAR initial map dataset is proposed, and precise small target detection method using voxol-based clustering and classification are studied. We present the process of data fusion generation and the experimental results for a small target detection. The presented approach also includes effective visualization of high-resolution 3D data and the results of small target detection in real time. This study is expected to contribute to the optimization of a drone threat detection system for various environments and characteristics.
机译:为了使用电光系统检测小的目标,使用了多波段2D图像传感器,例如可见光,NIR,MWIR和LWIR。但是,2D成像系统不能够检测到非常小的目标,并且也不能计算目标3D位置坐标来开发战略对策方法。 3D传感器(例如激光雷达,RGBD和立体摄像机)用于控制无人驾驶车辆,以检测威胁并针对特定情况做出响应。传统的激光雷达系统无法在比其最大探测距离100〜120米高的距离上探测小型无人机威胁。为了克服这一限制,正在开发激光雷达(LADAR)系统,该系统可以在2公里的距离内进行探测。在LADAR的发展中,很难获取包含远距离目标案例的数据集。本文提出了一种基于最小真实LADAR初始地图数据集的虚拟目标技术融合数据生成方法,并研究了基于voxol聚类和分类的精确小目标检测方法。我们介绍了数据融合生成的过程和小目标检测的实验结果。提出的方法还包括有效地可视化高分辨率3D数据以及实时实时进行小目标检测。预期这项研究将有助于针对各种环境和特征优化无人机威胁检测系统。

著录项

  • 来源
    《Technologies for optical countermeasures XV》|2018年|1079701.1-1079701.10|共10页
  • 会议地点 Berlin(DE)
  • 作者单位

    Hanwha Systems Co., IGongdan-ro, Gumi, Republic of Korea,Kyungpook National University, Daehakro 80, Daegu, Republic of Korea;

    Kyungpook National University, Daehakro 80, Daegu, Republic of Korea;

    University of Ljubljana, Vecna pot 113, Ljubljana, Slovenia;

    Hanwha Systems Co., IGongdan-ro, Gumi, Republic of Korea,Kyungpook National University, Daehakro 80, Daegu, Republic of Korea;

    Hanwha Systems Co., IGongdan-ro, Gumi, Republic of Korea;

    Agency for Defense Development, Yuseong, Daejeon, Republic of Korea;

    Kyungpook National University, Daehakro 80, Daegu, Republic of Korea;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Laser Radar; target detection; classification; data fusion; visualization;

    机译:激光雷达目标检测;分类;数据融合;可视化;

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