首页> 外文会议>Conference on Signal and Data Processing of Small Targets >Discriminating small extended targets at sea from clutter and other classes of boats in infrared and visual light imagery
【24h】

Discriminating small extended targets at sea from clutter and other classes of boats in infrared and visual light imagery

机译:在红外和可见光图像中,将海上的小型扩展目标与杂物和其他类别的船只区分开

获取原文

摘要

Operating in a coastal environment, with a multitude of boats of different sizes, detection of small extended targets is only one problem. A further difficulty is in discriminating detections of possible threats from alarms due to sea and coastal clutter, and from boats that are neutral for a specific operational task. Adding target features to detections allows filtering out clutter before tracking. Features can also be used to add labels resulting from a classification step. Both will help tracking by facilitating association. Labeling and information from features can be an aid to an operator, or can reduce the number of false alarms for more automatic systems.In this paper we present work on clutter reduction and classification of small extended targets from infrared and visual light imagery. Several methods for discriminating between classes of objects were examined, with an emphasis on less complex techniques, such as rules and decision trees. Similar techniques can be used to discriminate between targets and clutter, and between different classes of boats. Different features are examined that possibly allow discrimination between several classes. Data recordings are used, in infrared and visual light, with a range of targets including rhibs, cabin boats and jet-skis.
机译:操作在沿海环境中,有许多不同大小的船,检测小型扩展目标只是一个问题。进一步的困难在于区分对可能的威胁的检测是由于海洋和沿海杂波引起的警报,还是对于特定操作任务中立的船只。在检测中添加目标特征可以在跟踪之前滤除杂波。要素也可以用于添加分类步骤中得到的标签。两者都将通过促进关联来帮助跟踪。特征的标签和信息可以帮助操作员,或者可以减少误报次数,从而实现更自动化的系统。在本文中,我们提出了从红外和可见光图像中减少杂波和对小型扩展目标进行分类的工作。研究了几种区分对象类别的方法,重点是不太复杂的技术,例如规则和决策树。可以使用类似的技术来区分目标和杂波,以及不同类别的船。检查了不同的功能,这些功能可能允许区分多个类别。红外和可见光下的数据记录可用于各种目标,包括三角帆,客舱船和摩托艇。

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