首页> 外文会议>Conference on detection and remediation technologies for mines and minelike targets >Adaptive Multi-Modality Processing for the Discrimination of Landmines
【24h】

Adaptive Multi-Modality Processing for the Discrimination of Landmines

机译:用于歧视地雷的自适应多模态处理

获取原文

摘要

As in many application areas, performance of landmine detection algorithms is judged in terms of detection and false alarm rates. It is widely accepted that single sensors cannot simultaneously achieve both high detection rates and low false alarm rates, since every sensor has its advantages and disadvantages when dealing with a large variety of landmines, from large metal-cased mines to small plastic-cased mines. The recent development of high quality sensors in conjunction with statistical signal processing algorithms has shown that there are sensors that can not only discriminate targets from clutter, but can also identify subsurface or obscured targets. Here, we utilize this identification capability in addition to contextual information in a multi-modal adaptive algorithm where the identification capabilities of multiple sensors are utilized to modify the prior probability density functions associated with statistical models being utilized by other sensors. In general, every sensor modality is associated with a specific physics-based feature set that is extracted from the sensor data. Often, the statistics describing these features are assumed to follow a Gaussian mixture density, where in many cases the individual Gaussian distributions that make up the mixture result from different target types or target classes. We utilize identification information from one sensor to modify the weights associated with the probability density functions being utilized by algorithms associated with other sensor modalities. Using both simulated and real data, this approach is shown to be improve sensor performance by reducing the overall false alarm rate.
机译:与许多应用领域一样,在检测和误报率方面判断地图检测算法的性能。众所周度地接受,单个传感器不能同时实现高检测率和低误报率,因为当每个传感器都有其在处理大量地雷时的优点和缺点,从大型金属外壳到小型塑料型矿井。最近与统计信号处理算法结合高质量传感器的开发表明,有传感器不仅可以区分杂波的目标,而且还可以识别地下或模糊的目标。这里,除了在多模态自适应算法中的上下文信息之外,我们还利用该识别能力,其中利用多个传感器的识别能力来修改与其他传感器使用的统计模型相关联的先前概率密度函数。通常,每个传感器模式与从传感器数据中提取的特定物理的特征集相关联。通常,假设描述这些特征的统计数据遵循高斯混合密度,在许多情况下,构成混合的单独高斯分布由不同的目标类型或目标类别结果。我们利用来自一个传感器的识别信息来修改与与其他传感器模式相关联的算法使用的概率密度函数相关联的权重。使用模拟和实际数据,通过降低整体误报率来显示这种方法可以提高传感器性能。

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