首页> 外文会议>Signal Processing, Sensor/Information Fusion, and Target Recognition XXV >Learning Patterns of Life from Intelligence Analyst Chat
【24h】

Learning Patterns of Life from Intelligence Analyst Chat

机译:从情报分析师聊天中学习生活模式

获取原文
获取原文并翻译 | 示例

摘要

Our Multi-INT Data Association Tool (MIDAT) learns patterns of life (POL) of a geographical area from video analyst observations called out in textual reporting. Typical approaches to learning POLs from video make use of computer vision algorithms to extract locations in space and time of various activities. Such approaches are subject to the detection and tracking performance of the video processing algorithms. Numerous examples of human analysts monitoring live video streams annotating or "calling out" relevant entities and activities exist, such as security analysis, crime-scene forensics, news reports, and sports commentary. This user description typically corresponds with textual capture, such as chat. Although the purpose of these text products is primarily to describe events as they happen, organizations typically archive the reports for extended periods. This archive provides a basis to build POLs. Such POLs are useful for diagnosis to assess activities in an area based on historical context, and for consumers of products, who gain an understanding of historical patterns. MIDAT combines natural language processing, multi-hypothesis tracking, and Multi-INT Activity Pattern Learning and Exploitation (MAPLE) technologies in an end-to-end lab prototype that processes textual products produced by video analysts, infers POLs, and highlights anomalies relative to those POLs with links to "tracks" of related activities performed by the same entity. MIDAT technologies perform well, achieving, for example, a 90% Fl-value on extracting activities from the textual reports.
机译:我们的Multi-INT数据关联工具(MIDAT)可从文本报告中要求的视频分析人员观察中了解地理区域的生活模式(POL)。从视频中学习POL的典型方法是利用计算机视觉算法提取各种活动的时空位置。这些方法受视频处理算法的检测和跟踪性能的影响。存在许多人类分析师监视实时视频流以注释或“调出”相关实体和活动的示例,例如安全分析,犯罪现场取证,新闻报道和体育评论。该用户描述通常对应于文本捕获,例如聊天。尽管这些文本产品的目的主要是描述事件的发生,但组织通常会将报告存档较长的时间。该档案库为构建POL提供了基础。此类POL对于诊断以基于历史背景评估某个区域的活动以及对了解历史模式的产品消费者很有用。 MIDAT在端到端实验室原型中结合了自然语言处理,多假设跟踪和Multi-INT活动模式学习与利用(MAPLE)技术,该原型处理视频分析人员生成的文本产品,推断POL,并突出显示与链接到同一实体执行的相关活动的“轨迹”的那些POL。 MIDAT技术表现出色,例如,从文本报告中提取活动时可达到90%的Fl值。

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