【24h】

Self-Training Algorithms for Ultra-wideband Radar Target Detection

机译:超宽带雷达目标检测的自训练算法

获取原文
获取原文并翻译 | 示例

摘要

An ultra-wideband (UWB) synthetic aperture radar (SAR) simulation technique that employs physical and statistical models is developed and presented. This joint physics/statistics based technique generates images that have many of the "blob-like" and "spiky" clutter characteristics of UWB radar data in forested regions while avoiding the intensive computations required for the implementation of low-frequency numerical electromagnetic simulation techniques. Approaches towards developing "self-training" algorithms for UWB radar target detection are investigated using the results of this simulation process. These adaptive approaches employ some form of modified singular value decomposition (SVD) algorithm where small blocks of data in the neighborhood of a sliding test window are processed in real-time in an effort to estimate localized clutter characteristics. These real-time local clutter models are then used to cancel clutter in the sliding test window. Comparative results from three SVD-based approaches to adaptive and "self-trained" target detection algorithms are reported. These approaches are denoted as "Energy-Normalized SVD", "Condition-Statistic SVD", and "Terrain-Filtered SVD". The results indicate that the "Terrain-Filtered SVD" approach, where a pre-filter is applied in an effort to eliminate severe clutter discretes that adversely effect performance, appears promising for the purposes of developing "self-training" algorithms for applications that may require localized "on-the-fly" training due to a lack of accurate off-line training data.
机译:开发并介绍了采用物理和统计模型的超宽带(UWB)合成孔径雷达(SAR)仿真技术。这种基于物理/统计的联合技术生成的图像在林区中具有许多UWB雷达数据的“斑点状”和“尖峰状”杂波特性,同时避免了实施低频数字电磁仿真技术所需的密集计算。利用该仿真过程的结果,研究了开发用于UWB雷达目标检测的“自训练”算法的方法。这些自适应方法采用某种形式的修改后的奇异值分解(SVD)算法,其中实时处理滑动测试窗口附近的小块数据,以估计局部杂波特性。这些实时本地杂波模型然后用于消除滑动测试窗口中的杂波。报告了三种基于SVD的自适应和“自训练”目标检测算法的比较结果。这些方法表示为“能量归一化SVD”,“状态统计SVD”和“地形过滤SVD”。结果表明,“地形滤波的SVD”方法(为了消除严重影响性能的杂波离散问题而应用了预滤波器)对于为可能需要开发应用程序的用户开发“自训练”算法显得很有希望。由于缺乏准确的离线训练数据,因此需要本地化的“即时”训练。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号