【24h】

A results-based process for evaluation of diverse visual analytics tools

机译:基于结果的过程,用于评估各种视觉分析工具

获取原文
获取原文并翻译 | 示例

摘要

With the pervasiveness of still and full-motion imagery in commercial and military applications, the need to ingest and analyze these media has grown rapidly in recent years. Additionally, video hosting and live camera websites provide a near real-time view of our changing world with unprecedented spatial coverage. To take advantage of these controlled and crowd-sourced opportunities, sophisticated visual analytics (VA) tools are required to accurately and efficiently convert raw imagery into usable information. Whether investing in VA products or evaluating algorithms for potential development, it is important for stakeholders to understand the capabilities and limitations of visual analytics tools. Visual analytics algorithms are being applied to problems related to Intelligence, Surveillance, and Reconnaissance (ISR), facility security, and public safety monitoring, to name a few. The diversity of requirements means that a one-size-fits-all approach to performance assessment will not work. We present a process for evaluating the efficacy of algorithms in real-world conditions, thereby allowing users and developers of video analytics software to understand software capabilities and identify potential shortcomings. The results-based approach described in this paper uses an analysis of end-user requirements and Concept of Operations (CONOPS) to define Measures of Effectiveness (MOEs), test data requirements, and evaluation strategies. We define metrics that individually do not fully characterize a system, but when used together, are a powerful way to reveal both strengths and weaknesses. We provide examples of data products, such as heatmaps, performance maps, detection timelines, and rank-based probability-of-detection curves.
机译:随着静止和全动态图像在商业和军事应用中的普遍应用,近年来摄取和分析这些媒体的需求迅速增长。此外,视频托管和实时摄像头网站以空前的空间覆盖范围提供了我们瞬息万变的世界的近实时视图。为了利用这些受控的和众包的机会,需要使用复杂的视觉分析(VA)工具来准确有效地将原始图像转换为可用信息。无论是投资于VA产品还是评估潜在开发的算法,对于利益相关者来说,了解可视化分析工具的功能和局限性都非常重要。视觉分析算法已应用于与情报,监视和侦察(ISR),设施安全和公共安全监控有关的问题,仅举几例。需求的多样性意味着绩效评估无法一刀切。我们提出了一种在实际条件下评估算法效率的过程,从而使视频分析软件的用户和开发人员能够了解软件功能并找出潜在的缺点。本文所述的基于结果的方法使用了对最终用户需求和运营概念(CONOPS)的分析,以定义有效性度量(MOE),测试数据需求和评估策略。我们定义的度量标准不能单独完整地描述系统的特征,但是将它们一起使用时,它们是揭示优点和缺点的有效方法。我们提供了数据产品的示例,例如热图,性能图,检测时间表和基于等级的检测概率曲线。

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